Robotic
Process Automation (RPA) is a ground-breaking technological paradigm that has
just evolved and is revolutionizing how businesses approach process automation
and optimization. RPA uses software "bots" to automate repetitive and
rule-based processes that were previously completed by human operators
[1], [2].
With the use of this
technology, operational effectiveness could be increased, human error could be
decreased, and human resources could be freed up for more innovative and
strategic projects
[3].
A thorough analysis
of the research contribution in the area of RPA integration in business is
essential in identifying the major trends, developments, and difficulties in
this emerging area which is considered as one of the most disruptive technologies
of the present era.
Application
of RPA in the Business process is becoming more common, which has increased in
research publications aimed at thoroughly examining its many facets of this
technology
[4].
Researchers in various
fields, including computer science, engineering, business management, and
economics, have been adding to the body of knowledge that is developing around
RPA
[5].
As a result, this
enormous and expanding body of knowledge needs to be analyzed and synthesized to
give academics, professionals, and decision-makers new perspectives on how to
conduct research, execute strategies, and make policy decisions
[6].
A
systematic and numerical method for analyzing the academic output in a given
field of study is bibliometric analysis
[7]–[11].
Bibliometric methods
allow for the extraction of significant insights from a sizable body of
literature by scrutinizing publishing patterns, author relationships, citation
networks, and subject clusters. Such a study can show significant authors, organizations,
and nations as well as the trajectories of research themes across time
[12]–[14].
This study can also
reveal the theoretical foundations of robotic process automation by pointing
out key texts and their influence on later research.
Bibliometric
analysis is the study and investigation of trends, structures, and patterns in
literature and scientific publications using quantitative methods
[15], [16].
It involves performing
statistical analysis on books, papers, and other publications to understand the
development, characteristics, and historical trajectory of a specific field or
body of literature
[10]–[13],
[15], [17].
Bibliometric techniques are frequently used in the fields of library and
information science, as well as in the evaluation of research in a specific
area and the creation of policy
[18]–[20].
The
R-package Bibliometrix is used to carry out bibliometric analysis and visualize
scientific articles through a graphical user interface (GUI) called
Biblioshiny.
[21]
The bibliometrix
package in R provides a set of tools for conducting quantitative bibliometric
and scientometric research, and biblioshiny makes these methods accessible to
users who may not be experts in the R programming language
[22].
Nees
Jan van Eck and Ludo Waltman of the Centre for Science and Technology Studies
(CWTS) at Leiden University in the Netherlands created the software program
known as VOSviewer
[23].
Its objective is to
build and display bibliometric networks
[24].
A variety of data
formats, including information on publications, authors, journals, and terms
directly extracted from publication titles and abstracts can be used to generate
these networks
[25], [26].
VOSviewer is
frequently used in bibliometric and scientometric research to analyze and visualize
the structure and growth of scientific fields, to identify key contributors,
and to understand the connections between various components of the scientific
landscape
[11].
Identifying
core journals and articles, analyzing collaboration patterns, keyword and topic
analysis, citation analysis, geographical distribution of research
contributions, and understanding interdisciplinary connections are the major
investigations performed in the bibliometric analysis.
The
goal of this research article is to give a thorough bibliometric analysis of
the robotic process automation literature. We want to reveal the complex web of
academic relationships, identify major research issues, highlight developing
trends, and trace the evolution of RPA research in the business area from its
beginnings to the present day using advanced bibliometric methodologies where
the first research paper about the RPA applications in business was published
in 2016. Insights from this analysis will not only give a comprehensive picture
of the RPA landscape but will also be an invaluable tool for researchers
attempting to navigate the field, practitioners hoping to use RPA to improve organizations,
and policymakers hoping to foster an environment encouraging technological
innovation. The technique employed in data collecting and analysis, the main
findings drawn from the bibliometric analysis, and the consequences of these
findings for the course of RPA research in the business environment and its
practical applications will be covered in more detail in the following sections
of this study.
Robotic
Process Automation (RPA) offers distinct advantages to businesses by automating
repetitive tasks, enhancing operational efficiency, and reducing errors. This
technology accelerates processes, enabling quicker response times to customer
needs, while also ensuring data accuracy and compliance through standardized
workflows[5]. RPA's scalability supports business growth, and its ability to
work 24/7 contributes to continuous operations. By freeing up employees from
routine activities, RPA fosters innovation and engagement, while cost savings
and improved customer satisfaction further solidify its role as a
transformative tool for businesses seeking to optimize processes and gain a
competitive edge.
Applying
RPA in business processes has advantages in terms of production, costs, speed,
and mistake reduction. The majority of these applications were executed on back-office
business processes, which don't directly involve customers. A study on the
effectiveness of RPA adoption in a BPO environment was done by Aguirre and
Rodriguez to confirm the advantages and outcomes in the business process with
front and back office operations. The findings indicate that the main advantage
of RPA is increased productivity and time reduction
[27].
Robotic
Process Automation (RPA) is revolutionizing the field of marketing by
streamlining repetitive tasks and optimizing operational efficiency. In the
realm of marketing, RPA involves the use of software bots to automate routine
activities such as targeted marketing, product recommendations, report
generation, social media posting, email marketing, and customer segmentation.
By taking over these manual and time-consuming processes, RPA allows marketing
teams to allocate more resources toward strategic initiatives, data analysis,
and creative endeavors, ultimately enhancing campaign targeting, customer
engagement, and overall marketing performance
[28].
Gotthardt, Max, et al
identified that Robotic Process
Automation (RPA) has emerged as a transformative tool within the accounting
domain, profoundly altering traditional financial processes. By automating
repetitive tasks like data entry, invoice processing, reconciliation, and
financial reporting, RPA enables accounting professionals to redirect their
focus toward higher-value activities such as financial analysis, strategic
decision-making, and compliance management. This technology not only
accelerates workflow efficiency and reduces error rates but also ensures
greater accuracy in financial data handling, thereby enhancing the overall
precision and reliability of accounting operations
[29].
Robotic
Process Automation (RPA) is transforming Human Resource management by
automating a variety of repetitive tasks and administrative processes. This enables
HR professionals to focus on strategic policies and better employee engagement.
RPA restructures routine clerical activities such as shortlisting applications,
RPA-based automated interviews, employee data management, payment processing,
leave management, and recruitment documentation. RPA integration leads to
increased accuracy and efficiency
[30],
this technology also
plays a vital role in enhancing the employee experience by ensuring better
responses to inquiries and unbiased policy enforcement. By utilizing the power
of RPA, HR teams can focus on more policy-related activities like talent
development, diversity and inclusion initiatives, and nurturing a progressive
company culture
[31].
Robotic
Process Automation (RPA) has prominent applications in business operations
management. This increases the effectiveness across various operational
processes
[32]
through RPA. Robotic Process
Automation can automate data collection, evaluate equipment performance, and
quality control checks, reducing human error and enhancing production output
[33]
in manufacturing. In
logistics, RPA can monitor order processing, shipment tracking, and inventory
management. This results in faster and more accurate deliveries
[34]
resulting in better
customer satisfaction. Within supply chain management, RPA optimizes demand
forecasting, vendor management, and procurement processes, leading to cost
savings and improved inventory control. RPA can also be employed for monitoring
and maintaining IT infrastructure, automating routine maintenance tasks, and
minimizing downtime. Overall, RPA in operations management contributes to
streamlined processes, reduced operational costs, and increased overall
productivity
[35].
With
less expense and time involved, RPA technology has increased a business
process's efficiency and capability in the area of customer support. To improve
tourism, the importance of automation in customer service request desks in the
travel and tourism industry is proposed by
Goyal, Nitin, and Harpreet Singh
[36].
Additionally, a study
on the work done in the field of travel and tourism for customer service
request desks has been conducted. It has been suggested that automating the
customer care request desk process can increase customer relationships,
customer happiness, and customer loyalty in the travel and tourist industry.
Bibliometric
analysis is a valuable research methodology for studying the scholarly
literature within a specific field or topic. In the context of "RPA in
Business," which stands for Robotic Process Automation in Business,
bibliometric analysis can help to identify trends, key contributors,
influential journals, and the overall structure of the research landscape in
this domain. The methods used in the study were to collect the research
materials and analyze the information using bibliometric tools as given in
figure1.
Figure 1.
Stages of the analysis
The
objective of this research is to conduct a comprehensive bibliometric analysis
of research publications in the field of RPA in Business, aiming to identify
key trends, influential authors, most cited papers, and emerging research
themes over a specified period. This analysis will provide insights into the
intellectual landscape of the field, helping researchers, policymakers, and
practitioners to better understand the evolution of knowledge, research
collaboration patterns, and the impact of research output, ultimately
contributing to informed decision-making and the advancement of application of
Robotic Process Automation in Business.
This
bibliometric analysis includes research papers indexed in the Scopus database.
Only the research papers indexed in the Scopus database through research
journals and conference proceedings are included in the study. The research
papers from Scopus in the area of Robotic Process Automation in Business are
selected for the analysis. The query for filtering the research papers is given
in Table 1.
Table 1.
The query used for document
retrieval
(TITLE-ABS-KEY
("robotic process automation") AND TITLE-ABS-KEY
("business") OR TITLE-ABS-KEY ("management"))
|
A
total of 575 documents were retrieved based on the query given and only the
research papers published through indexed journals and conference proceedings
were retained. duplicates, irrelevant records, and non-academic content are
excluded. The retrieved documents were cleaned by removing duplicates,
irrelevant records, and non-academic research content, 551 research papers were
finally selected for further analysis after this cleaning process.
Popular
bibliometric analysis tools like VOSviewer, and Bibliometrix are used for the
analysis and to generate visualizations, calculate metrics, and derive insights
for the collected research articles. The most prolific and influential authors
in the field of "RPA in Business" are analyzed as a part of this
study. Their publication output, collaboration patterns, and the impact of
their work are also considered for analysis. The publication trends over time to
identify periods of increased research activity in the area of Robotic Process
Automation are also analyzed and visualized. To identify the journals that
publish the most relevant articles on "RPA in Business", the quality
and impact of the journals based on their citation counts, and relevance to the
field are also analyzed. The citation patterns to identify influential articles
and the most cited papers in the field to understand key foundational works and
their impact on subsequent research are also performed in this analysis.
The
research articles for this bibliometric research were retrieved from the main
collection of the Scopus database on September 20, 2023. The search for
documents was carried out using a specific keywords such as “Robotic Process
Automation”, “Business” and “Management”. This search included all languages
and was limited to only journal articles and conference papers. In total, we
collected 551 articles from 289 different sources, covering the period from
2016 to August 2023. The duplicate entries in the selected research papers are
removed to ensure accuracy, after thorough reviews. The results were saved in a
'CSV' file, and we performed a bibliometric analysis on the data using
VOSviewer version 1.6.19 and Biblioshiny software. Figure 1 provides a visual
depiction of the methodology. The detailed information regarding the sources
of research articles, number of documents selected for analysis, average age of
documents, total number of citations etc. are provided in Table2.
Table 2.
Detailed
information about the articles selected for the investigation.
Description
|
Results
|
Search
Query
|
((TITLE-ABS-KEY("Robotics
process automation") AND TITLE-ABS-KEY("Management") OR
TITLE-ABS-KEY(business)))
|
Main Information
about Data
|
Timespan
|
2016 : 2023 August
|
Sources (Journals, Books, etc)
|
289
|
Documents
|
551
|
Annual Growth Rate %
|
77.49
|
Document Average Age
|
1.87
|
Average citations per doc
|
7.105
|
References
|
14835
|
DOCUMENT CONTENTS
|
Keywords Plus (ID)
|
1934
|
Author's Keywords (DE)
|
1235
|
AUTHORS
|
|
Authors
|
1346
|
Authors of single-authored docs
|
56
|
AUTHORS COLLABORATION
|
Single-authored docs
|
61
|
Co-Authors per Doc
|
2.92
|
International co-authorships %
|
13.79
|
DOCUMENT TYPES
|
Article
|
162
|
Book
|
14
|
book chapter
|
59
|
conference paper
|
259
|
conference review
|
46
|
Review
|
11
|
The results of the
bibliometric analysis are presented here. Systematic analysis is performed
using
VOSviewer
and Biblioshiny. Various factors like document collection in the application
areas of RPA, authors with their associations, citations, and sources with
keywords are analysed to showcase the progress and research trends in this area.
In
the beginning of the analysis we gathered the research documents in the
applications areas of RPA in various domains. This collection provides a
comprehensive snapshot of the distribution of research across various
disciplines. In this distribution, Computer Science leads with 386 documents,
followed by Engineering with 203. Business, Management, and Accounting have 179
documents, while Decision Sciences and Mathematics have 146 and 120 documents
respectively. Economics, Econometrics, and Finance have contributed 64
documents, and Social Sciences have 51. Energy-related research has 30
documents, Physics and Astronomy have 20, and Medicine has 17. Materials
Science, Environmental Science, and Chemical Engineering have 14, 13, and 9
documents respectively. Other fields such as Multidisciplinary, Psychology,
Earth and Planetary Sciences, Arts and Humanities, Chemistry, Health Professions,
Agricultural and Biological Sciences, Biochemistry, Genetics and Molecular
Biology, and Pharmacology, Toxicology, and Pharmaceutics have contributions
ranging from 1 to 5 documents. This distribution highlights the diverse
applications of RPA in various domain areas and the range of research areas
represented in the dataset as shown in figure 2. The application of RPA in
business spreads over the domain areas of business management, accounting, economics,
and Computer Science. 551 research articles addressing the RPA applications in
business were collected from these domain areas and considered for further
analysis.
Figure
2.
Documents by areas of applications of RPA
Table
3 presents a list of the ten most frequently cited papers in the field of
robotic process automation. Leading the list is the article “Automation of a Business
Process using Robotic Process Automation (RPA): A Case Study” authored by
Aguirre S. and Rodriguez A. in 2017, which has garnered a remarkable 170
citations. The paper “Turning robotic process automation into commercial
success - Case Opus Capita” written by Asatiani A. and Penttinen E. in 2016,
has received 139 citations. These papers highlight how the contributions made
by the authors in the domain of business applications of RPA paved the way for
further research contributions and advancements in the area.
Table 3.
Top cited papers
Authors
|
Title
|
Year
|
Cited by
|
Aguirre S.; Rodriguez A.
|
Automation of a business process using robotic process
automation (RPA): A case study
|
2017
|
170
|
Asatiani A.; Penttinen E.
|
Turning robotic process automation into commercial success -
Case OpusCapita
|
2016
|
139
|
Hofmann P.; Samp C.; Urbach N.
|
Robotic process automation
|
2020
|
112
|
Mendling J.; Decker G.; Reijers H.A.; Hull R.; Weber I.
|
How do machine learning, robotic process automation, and
blockchains affect the human factor in business process management?
|
2018
|
99
|
Kokina J.; Blanchette S.
|
Early evidence of digital labor in accounting: Innovation with
Robotic Process Automation
|
2019
|
93
|
Benbya H.; Nan N.; Tanriverdi H.; Yoo Y.
|
Complexity and information systems research in the emerging
digital world
|
2020
|
88
|
Ribeiro J.; Lima R.; Eckhardt T.; Paiva S.
|
Robotic Process Automation and Artificial Intelligence in
Industry 4.0 - A Literature Review
|
2021
|
87
|
Hartley J.L.; Sawaya W.J.
|
Tortoise, not the hare: Digital transformation of supply chain
business processes
|
2019
|
84
|
Willcocks L.; Lacity M.; Craig A.
|
Robotic process automation: Strategic transformation lever for
global business services?
|
2017
|
75
|
Ivančić L.; Suša Vugec D.; Bosilj
Vukšić V.
|
Robotic Process Automation: Systematic Literature Review
|
2019
|
68
|
In
recent years, the field of robotic process automation (RPA) has witnessed a
remarkable surge in research and development, as depicted in Figure 3. This
graph illustrates the yearly scientific output of articles dedicated to RPA
from 2016 to 2023. A clear upward trend is observable, underscoring the growing
interest and advancements in this domain. Notably, the years 2021 and 2022
stand out as landmark periods, each recording a peak production of 137
articles. This data emphasizes the significance and attention RPA in business as
a research area in the scientific community.
Figure 3.
Annual scientific
production
Figure
4 highlights the primary sources that have made significant contributions to
the field of robotic process automation in business through their publications.
Topping the list is the journal titled "Lecture Notes in Business
Information Processing," which has notably published 42 articles on the
subject. Not far behind is the "Lecture Notes in Computer Science,"
which also encompasses its subseries "Lecture Notes in Artificial
Intelligence" and "Lecture Notes in Bioinformatics." This
journal has contributed a commendable 27 articles to the domain.
Figure 4.
Most relevant sources
of research papers
A
visual representation of the leading authors in the field of robotic process
automation in business is give in Figure 5. Topping the list is CZARNECKI C
with 8 publications, closely followed by JANIESCH C and WEWERKA J, each with 7
publications. PLATTFAUT R and REICHERT M are also notable contributors, having
authored 6 publications each. This data underscores the significant
contributions these individuals have made to the number of research articles
published in the area of robotic process automation applications in business.
Figure 5.
Most relevant authors
A
graphical depiction of the leading affiliations in the realm of robotic process
automation in business is illustrated in Figure 6. At the forefront of this domain
is IBM RESEARCH AI with a notable 19 affiliations. Following closely are
SAPIENZA UNIVERSITÁ DI ROMA and UNIVERSITY OF SEVILLE, each with 11
affiliations. BANNARI AMMAN INSTITUTE OF TECHNOLOGY, QUEENSLAND UNIVERSITY OF
TECHNOLOGY, and UNIVERSITY OF SÃO PAULO are also significant
contributors, each boasting 10 affiliations. This data underscores the
prominent institutions driving advancements in this innovative field. There are
13 publications where authors have not reported their affiliations.
Figure 6.
Most relevant
affiliations
Figure 7 presents a diagram exploring the
connections between keywords (on the left), authors (in the middle), and
publications (on the right) in the robotic process automation field. The
research aimed to identify terms frequently used by authors in their articles.
An analysis of the main keywords, authors, and journals revealed phrases like
"robotic process automation", "rpa," and "artificial
intelligence." “robotic process automaton” and “rpa” were used as two separate
terms because these terms were appearing as different keywords in research
articles. Notably, authors such as Mamede HS, Plattfaut R and more, often
incorporated these terms in their work, which appeared in publications like
Lecture Notes in Business Information Processing,
Lecture Notes in
Computer Science (Including Subseries Lecture Notes in Artificial Intelligence
and Lecture Notes in Bioinformatics), among others.
Figure 7.
Three Filed Plot of
Keywords, Authors and Publications
In
the three-field plot, colours are used to differentiate and categorize the
elements within each column. Different colour schemes used in the graph are
explained in detail.
Different
shades of red, orange, and pink represent various topics within digital
transformation. The colour Dark red is used for the key word "digital
transformation" and Maroon is for "robotic process automation".
Orange is used for "business process automation" and Light orange is
for "artificial intelligence". Finally, the Pink colour represents
"machine learning"
The
shades of Yellow and Orange distinguish different authors. Each unique colour
represents a distinct author. Few examples are: Yellow is for
"Mamede" and Light Orange is for "Plattfaut". Darker shades
of Orange are used for other authors like "Janiesch,"
"Reiher," and "Fette" etc.
A
range of shades in Green and Blue represent various publication sources. Each
unique colour signifies a different journal, conference, or publication series.
The Light green is for "Lecture notes in business information
processing". Dark green indicates "Robotic process automation -
management, technology, applications". The colour code Light blue is for
"Journal of Information Technology Teaching Cases". Darker shades of Blue
represent other sources like "Proceedings of the annual Hawaii
International Conference on System Sciences" and "Lecture notes in Informatics
(LNI), Proceedings"
In the field of robotic process automation for
business and management studies, a country-based co-authorship analysis
visually showcases the collaboration and influence levels of different nations.
Figure 8 illustrates this with interconnected nodes and links, shedding light
on the extent of global collaborations. The graph represents the likely size of
every country's respective node, indicating the volume of research or number of
publications the said country is contributing to the mentioned topic. Bigger
nodes indicate more work volume. The links show cross-border institutional
collaborations, with their closeness and intensity indicating the
collaboration's strength. The colors indicate that all the grouped countries
belong to some type of cluster. Those countries doing collaboration very
frequently and sharing similar patterns in their research are grouped in to
clusters of the same colour. Different clusters formed through the
associations in research in the area of RPA in business . Red cluster contains
close peers such as India, China, and Malaysia. There would be a lot of
research output in such clusters for the topic under consideration and they
indicate strong collaboration. Green Cluster is clustering with countries such
as Germany, Australia, and the Netherlands, indicating again strong research
activity or collaboration among them. Blue cluster includes countries like
Finland, Switzerland, and Japan. Yellow contains the United States, United
Kingdom, and Canada and others. India leads in publication numbers with 101,
followed by Germany with 84, and the U.S. with 41. In terms of citations,
Germany is at the forefront with 780, followed closely by the U.S. with 734,
and India with 396, showcasing their significant contributions. Additionally,
the U.S., the U.K., and India have the strongest overall link strength,
emphasizing their central roles in this international co-authorship web.
Figure
8.
The network visualization of country
co-authorship analysis
To graphically display groups of commonly used terms connected to robotic
process automation, the VOSviewer program was utilized. 146 of the 2770 keywords
were chosen for study out of the total since they appeared at least 5 times.
Both author kewords and Scopus keywords are used in the analysis. The data and
results are visualized in Figure 9. Each node’s size and font correspond to the
frequency of the term. More common terms are indicated by larger circles and
typefaces.
This
illustration with the inclusion of "robotic process automation,"
"process automation," and "artificial intelligence" as
central nodes, points out those keywords to be at the centre and that there are
strong relations among them. They are the most frequently occurring or studied
keywords within the set of documents analysed. In the same way, all the
adjacent terms to the central nodes of "machine learning" and
"AI," which include "finance," "human resource
management," "bots," and "supply chain management,"
would indicate sub-themes or specializations that emanate from the center.
The intensity of the association between the keywords is shown by
the thickness of the lines connecting the circles. The keywords may be paired
often if the lines are thicker. Notably, the keyword "robotic process
automation" was the most frequent, showing up 284 times, followed by
"process automation" (271 times), and "process control"
(206 times).
The
colour coding represents different clusters or groups of keywords, which have
much closer ties with their neighboring keywords, among themselves compared to
other clusters. The visualization captures a complex network of interconnected
themes within automation and AI. The Robotic Process Automation (RPA) cluster,
marked in blue, is a hub for terms such as "bots," "automation
technology," and "user interfaces," reflecting the technological
underpinnings of RPA where software robots streamline repetitive tasks.
Adjacent to this is the green-colored Process Automation cluster, where
"workflows," "productivity," and "supply chain
management" denote the use of automation to enhance business efficiency.
The
red Artificial Intelligence cluster delves into the realms of "machine
learning" and "intelligent robotics," illustrating AI's role in
equipping machines with decision-making capabilities. Meanwhile, the orange
Technology and Innovation cluster gathers terms like "blockchain" and
"innovation," signifying the cutting-edge technological advances
across RPA and AI sectors. The light blue Business and Management cluster
focuses on how RPA and AI intersect with "finance" and "human
resource management," pointing to automation's transformative impact on
business operations. Lastly, the yellow cluster underscores the importance of
"data processing" and "user interfaces," emphasizing the
user-centric aspect of automation technology in facilitating human-computer
interaction. Collectively, these clusters represent the multifaceted landscape
of RPA and AI as they converge on the modernization of business, technology,
and data management practices.
It
was also pointed out by visualization that a strong interdisciplinary
relationship holds between fields such as artificial intelligence, business
processes, optimization, and technology implementation
Figure 9.
The network visualization of keyword co-occurrence
This bibliometric research utilized a
comprehensive and meticulous methodology to gather and analyze data from the
Scopus database, focusing on the intersection of "Robotic Process
Automation," "Business," and "Management" within the
timeframe of 2016 to 2023.
The study outlines a distribution of research
documents across various academic disciplines, revealing a notable emphasis on
Computer Science, which leads to 386 documents. This is followed by other
technical and applied sciences like Engineering, and Business-related fields.
While there is a substantial representation from these areas, the distribution
also underscores a considerable diversity in research areas, including but not
limited to Economics, Social Sciences, and Energy-related research. However,
there is a significant disparity in the volume of documents across the
disciplines, with some areas like Medicine, Physics, and various sciences
having notably fewer documents. Moreover, several fields, encompassing Arts,
Chemistry, and various biological and health sciences, have minimal
contributions, ranging from 1 to 5 documents. This distribution may reflect a
predominant focus on technological and applied sciences in the dataset, while
also maintaining a broad, albeit less substantial, representation across a
myriad of other research areas.
The papers mentioned, particularly
"Automation of a Business Process using Robotic Process Automation (RPA):
A Case Study" by Aguirre S. and Rodriguez A. and "Turning Robotic
Process Automation into commercial success - Case OpusCapita" by Asatiani
A. and Penttinen E., are likely to be pioneering works in the field given their
high citation counts, suggesting that they have been widely recognized and
referenced in subsequent research and studies. Since the top-cited papers are
case studies, it implies that practical applications and real-world examples of
RPA are highly valued by researchers and professionals in the field, possibly
because they provide tangible insights and applicable knowledge. The frequent
citations and focus on these papers underscore the significant contributions
and advancements they have brought to the domain of RPA, potentially shaping
the trajectory of research and application in the field. The papers from 2016
and 2017 leading the citation list indicate that the field has been active and
evolving for several years. It also indicates that the research foundations
layed by these papers paved the way for further researcin this area. The fact
that these papers discuss both the automation of a business process and turning
RPA into commercial success suggests that the field has a diverse range of
applications and is relevant both in terms of technological development and
business application.
The field of Robotic Process Automation (RPA)
has experienced a significant increase in research and development activities
in recent years, as evidenced by the upward trend in the number of scientific
articles published from 2016 to 2023. Particularly, the years 2021 and 2022
have been pivotal, each witnessing a peak in production with 137 articles,
highlighting that RPA has gained substantial attention and is considered an
area of increasing significance within the scientific community. This suggests
that RPA is likely to continue being a focal point of research and
technological advancements in the foreseeable future.
From the provided information, it can be
concluded that "Lecture Notes in Business Information Processing" and
"Lecture Notes in Computer Science" (along with its subseries
"Lecture Notes in Artificial Intelligence" and "Lecture Notes in
Bioinformatics") are significant contributors to the field of robotic
process automation through their scholarly publications. The former leads with
a substantial number of 42 articles, while the latter has also made a
commendable contribution with 27 articles. This suggests that these journals
are pivotal in disseminating knowledge and advancements in the domain of
robotic process automation.
From the provided information and considering
the early stages of research in this promising area, we can conclude that
CZARNECKI C is the most prolific author in the field of robotic process
automation, with a total of 8 publications. JANIESCH C and WEWERKA J are also
substantial contributors, each having authored 7 publications, making them the
second most prolific authors in this field. PLATTFAUT R and REICHERT M have
also made notable contributions, each authoring 6 publications. This data
highlights that these individuals have significantly influenced and advanced
the field of robotic process automation research through their scholarly
contributions.
From the provided information, it can be
concluded that IBM Research AI is the leading institution in the realm of
robotic process automation, with the highest number of affiliations, which is
19. Sapienza Università di Roma and the University of Seville also
emerge as significant players in this domain, each having 11 affiliations.
Furthermore, Bannari Amman Institute of Technology, Queensland University of
Technology, and the University of São Paulo are notable contributors,
each with 10 affiliations. This indicates that these institutions are pivotal
in driving advancements and innovations in the field of robotic process
automation, showcasing a blend of contributions from both corporate research (IBM
Research AI) and academic institutions.
The three-field plot explores the interplay
between keywords, authors, and publications within the field of RPA. Notable
keywords such as "robotic process automation," "RPA," and
"artificial intelligence" are frequently by authors in their
articles, indicating a strong focus on these topics in the domain. Authors like
Mamede HS and Plattfaut R have notably incorporated these key terms into their
work, which has been published in various journals and publications, including
"Lecture Notes in Business Information Processing" and "Lecture
Notes in Computer Science (Including Subseries Lecture Notes in Artificial
Intelligence and Lecture Notes in Bioinformatics)." This highlights that
there is a substantial emphasis on the incorporation and analysis of RPA and
artificial intelligence within the academic and research scenario.
In this emerging area of technology, India has the
highest number of publications with 101 papers, then Germany with 84 and the
U.S. with 41. When citations are considered, which can be an indicator of the quality
of the research, Germany is on the top with 780 citations. The U.S. is very
near to this with 734 citations, India also has 396 citations. This leads to the
conclusion that though India has the highest publication count, Germany and the
U.S. have made more significant contributions in terms of citations.
Furthermore, the U.S., the U.K., and India are central figures in this
international collaboration network, as evidenced by their strong link strength
in the cluster. This underscores their pivotal roles in fostering international
collaborations in the field of robotic process automation for business and
management studies.
The study utilized the VOSviewer program to
visually represent key terms Among all the keywords, "robotic process
automation" was the most prevalent, appearing 284 times, followed closely
by "process automation" and "process control". This
suggests a significant focus on automation processes in the context of robotic
process automation.
The wide and dynamic research landscape
surrounding the business applications of robotic process automation (RPA) in
business has been highlighted by this bibliometric analysis. We have discovered
current trends, significant authors, and important research themes within the
business applications of of RPA. The findings suggest that RPA is an area of
interest that is fast developing in both academia and business, with a rising
corpus of research reflecting its growing importance in streamlining corporate
processes, promoting efficiency, and spurring innovation. There is a growing
research interest in the multifaceted nature of this domain, encompassing areas
like automation, artificial intelligence, and business transformation. This
bibliometric analysis serves as a valuable resource for researchers,
practitioners, and policymakers seeking to navigate the vast landscape of RPA
research. It provides a solid foundation for future studies and offers a
roadmap for further exploration of emerging trends and untapped opportunities
in the business applications of Robotic Process Automation.
1. T.-D. Nguyen, H.-S. Le, H.-T. Lam, T.-A. Tran, Q.-T. Tran, and others, “A survey of AI-based robotic process automation for businesses and organizations,” VNUHCM Journal of Science and Technology Development, vol. 26, no. 3, p. press-press, 2023.
2. E. L. Crisan, D. M. Chis, E. E. Bodea, and R. Buchmann, “Mechanisms for robotic process automation implementation in organizations: a systematic literature review,” Journal of Advances in Management Research, 2023.
3. P. Priyanto, E. Murwaningsari, and Y. Augustine, “Exploring the Relationship between Robotic Process Automation, Digital Business Strategy and Competitive Advantage in Banking Industry,” Journal of System and Management Sciences, vol. 13, no. 3, pp. 290–305, 2023.
4. G. Dan et al., “Multi-Channel Chatbot and Robotic Process Automation,” in 2022 IEEE International Conference on Automation, Quality and Testing, Robotics (AQTR), May 2022, pp. 1–6. doi: 10.1109/AQTR55203.2022.9801960.
5. A. Uklanska, “Robotic Process Automation (RPA)–Bibliometric Analysis and Literature Review,” Foundations of Management, vol. 15, no. 1, pp. 129–140, 2023.
6. G. Shidaganti, S. Salil, P. Anand, and V. Jadhav, “Robotic Process Automation with AI and OCR to Improve Business Process: Review,” in 2021 Second International Conference on Electronics and Sustainable Communication Systems (ICESC), Aug. 2021, pp. 1612–1618. doi: 10.1109/ICESC51422.2021.9532902.
7. B. Godin, “On the origins of bibliometrics,” Scientometrics, vol. 68, no. 1, pp. 109–133, Jul. 2006, doi: 10.1007/s11192-006-0086-0.
8. W. W. Hood and C. S. Wilson, “The Literature of Bibliometrics, Scientometrics, and Informetrics,” 2001.
9. C. Chen, R. Dubin, and M. C. Kim, “Emerging trends and new developments in regenerative medicine: a scientometric update (2000 – 2014),” Expert Opinion on Biological Therapy, vol. 14, no. 9, pp. 1295–1317, Sep. 2014, doi: 10.1517/14712598.2014.920813.
10. W. Wang, Y. Zhao, Y. J. Wu, and M. Goh, “Factors of dropout from MOOCs: a bibliometric review,” Library Hi Tech, vol. 41, no. 2, pp. 432–453, Jan. 2023, doi: 10.1108/LHT-06-2022-0306.
11. Y. Yu et al., “A bibliometric analysis using VOSviewer of publications on COVID-19,” Ann Transl Med, vol. 8, no. 13, pp. 816–816, Jul. 2020, doi: 10.21037/atm-20-4235.
12. O. Ellegaard and J. A. Wallin, “The bibliometric analysis of scholarly production: How great is the impact?,” Scientometrics, vol. 105, no. 3, pp. 1809–1831, Dec. 2015, doi: 10.1007/s11192-015-1645-z.
13. L. T. Dao, T. Tran, H. Van Le, G. N. Nguyen, and T. P. T. Trinh, “A bibliometric analysis of Research on Education 4.0 during the 2017–2021 period,” Educ Inf Technol, vol. 28, no. 3, pp. 2437–2453, Mar. 2023, doi: 10.1007/s10639-022-11211-4.
14. A. Kh. Khakimova, O. V. Zolotarev, and M. A. Berberova, “Coronavirus infection study: bibliometric analysis of publications on COVID-19 using PubMed and Dimensions databases,” SV, vol. 12, no. 5, 2020, doi: 10.26583/sv.12.5.10.
15. A. H. Alsharif, N. Z. Salleh, and R. Baharun, “Research Trends of Neuromarketing: A Bibliometric Analysis,” Journal of Theoretical and Applied Information Technology, vol. 98, no. 15, pp. 2948–2962, 2005.
16. E. Archambault, D. Campbell, Y. Gingras, and V. Lariviere, “Comparing bibliometric statistics obtained from the Web of Science and Scopus,” Journal of the American society for information science and technology, vol. 60, no. 7, pp. 1320–1326, 2009.
17. J. Calof, K. S. Soilen, R. Klavans, B. Abdulkader, and I. E. Moudni, “Understanding the structure, characteristics, and future of collective intelligence using local and global bibliometric analyses,” Technological Forecasting and Social Change, vol. 178, p. 121561, May 2022, doi: 10.1016/j.techfore.2022.121561.
18. S. K. Banshal, M. K. Verma, and M. Yuvaraj, “Quantifying global digital journalism research: a bibliometric landscape,” Library Hi Tech, vol. 40, no. 5, pp. 1337–1358, Jan. 2022, doi: 10.1108/LHT-01-2022-0083.
19. I. Ali, M. Balta, and T. Papadopoulos, “Social media platforms and social enterprise: Bibliometric analysis and systematic review,” International Journal of Information Management, 2022, doi: 10.1016/j.ijinfomgt.2022.102510.
20. M. K. Dash, R. Sahu, G. Panda, D. Jain, G. Singh, and C. Singh, “Social media role in public health development: a bibliometric approach,” K, Aug. 2022, doi: 10.1108/K-02-2022-0294.
21. M. Aria and C. Cuccurullo, “bibliometrix: An R-tool for comprehensive science mapping analysis,” Journal of Informetrics, vol. 11, no. 4, pp. 959–975, Nov. 2017, doi: 10.1016/j.joi.2017.08.007.
22. F. J. Agbo, S. S. Oyelere, J. Suhonen, and M. Tukiainen, “Scientific production and thematic breakthroughs in smart learning environments: a bibliometric analysis,” Smart Learn. Environ., vol. 8, no. 1, p. 1, Dec. 2021, doi: 10.1186/s40561-020-00145-4.
23. N. J. Van Eck and L. Waltman, “Software survey: VOSviewer, a computer program for bibliometric mapping,” Scientometrics, vol. 84, no. 2, pp. 523–538, Aug. 2010, doi: 10.1007/s11192-009-0146-3.
24. N. J. van Eck and L. Waltman, “Visualizing Bibliometric Networks,” in Measuring Scholarly Impact: Methods and Practice, Y. Ding, R. Rousseau, and D. Wolfram, Eds., Cham: Springer International Publishing, 2014, pp. 285–320. doi: 10.1007/978-3-319-10377-8_13.
25. D. Guleria and G. Kaur, “Bibliometric analysis of ecopreneurship using VOSviewer and RStudio Bibliometrix, 1989–2019,” Library Hi Tech, vol. 39, no. 4, pp. 1001–1024, Jan. 2021, doi: 10.1108/LHT-09-2020-0218.
26. A. F. Abbas, A. Jusoh, A. Masod, and J. Ali, “A Bibliometric Analysis of Publications on Social Media Influencers Using Vosviewer,” Journal of Theoretical and Applied Information Technology, vol. 99, no. 23, pp. 5662–5676, 2021.
27. S. Aguirre and A. Rodriguez, “Automation of a Business Process Using Robotic Process Automation (RPA): A Case Study,” in Applied Computer Sciences in Engineering, J. C. Figueroa-Garcia, E. R. Lopez-Santana, J. L. Villa-Ramirez, and R. Ferro-Escobar, Eds., Cham: Springer International Publishing, 2017, pp. 65–71.
28. L. Xie, G. Zhao, J. Lu, and B. Jiang, “Research on marketing intelligence inspection based on RPA technology,” in Third International Seminar on Artificial Intelligence, Networking, and Information Technology (AINIT 2022), SPIE, 2023, pp. 170–177.
29. M. Gotthardt et al., “Current state and challenges in the implementation of smart robotic process automation in accounting and auditing,” ACRN Journal of Finance and Risk Perspectives, 2020.
30. S. Balasundaram and S. Venkatagiri, “A structured approach to implementing Robotic Process Automation in HR,” in Journal of Physics: Conference Series, IOP Publishing, 2020, p. 012008.
31. D. Papageorgiou, “Transforming the HR function through robotic process automation,” Benefits Quarterly, vol. 34, no. 2, pp. 27–30, 2018.
32. A. Leshob, A. Bourgouin, and L. Renard, “Towards a process analysis approach to adopt robotic process automation,” in 2018 IEEE 15th international conference on e-business engineering (ICEBE), IEEE, 2018, pp. 46–53.
33. M. Konig, L. Bein, A. Nikaj, and M. Weske, “Integrating Robotic Process Automation into Business Process Management,” in Business Process Management: Blockchain and Robotic Process Automation Forum, A. Asatiani, J. M. Garcia, N. Helander, A. Jimenez-Ramirez, A. Koschmider, J. Mendling, G. Meroni, and H. A. Reijers, Eds., Cham: Springer International Publishing, 2020, pp. 132–146.
34. M. Sullivan, W. Simpson, and W. Li, “The Role of Robotic Process Automation (RPA) in Logistics,” The Digital Transformation of Logistics: Demystifying Impacts of the Fourth Industrial Revolution, pp. 61–78, 2021.
35. J. Schuler and F. Gehring, “Implementing robust and low-maintenance Robotic Process Automation (RPA) solutions in large organisations,” Available at SSRN 3298036, 2018.
36. N. Goyal and H. Singh, “A design of customer service request desk to improve the efficiency using robotics process automation,” in 2021 6th International Conference on Signal Processing, Computing and Control (ISPCC), IEEE, 2021, pp. 21–24.