Preface
Page: i-ii (2)
Author: Sumi K. V. and R. Vasanthagopal
DOI: 10.2174/9789815238365124010001
PDF Price: $15
Introduction to Business Analytics for Effective Decision Making
Page: 1-11 (11)
Author: Sumi K. V.* and R. Vasanthagopal*
DOI: 10.2174/9789815238365124010003
PDF Price: $15
ARIMA Model on GST – A Predictive Analysis
Page: 12-22 (11)
Author: S. Jayadev, Veena M.* and Siju Sebastian*
DOI: 10.2174/9789815238365124010004
PDF Price: $15
Abstract
The COVID-19 pandemic has inflicted a multi-sectoral impact on omic
activities around the globe and is considered as the worst economic fallout since the
Great Depression. Demand and supply disruptions have acutely affected trade and
commerce. A downfall of global trade has been pointed out by WTO. Indirect taxes
constitute an important source of development funds for developing economies. The
implementation of GST has brought landmark gains in consolidating indirect taxes and
thereby reducing the cascading effect of taxes. GST revenues have fluctuated during
the pandemic period. Considering the significance of the revenue to the economy, an
attempt has been made to predict GST revenue using ARIMA analysis. The prediction
results indicate an optimistic growth in GST revenues which along with the efforts of
the Government towards liberalization of GST norms and revision of tax slabs is
expected to provide the economy with the essential boost to revive and revitalize the
Indian economy.
Data Mining in Banks: A Bibliometric Analysis
Page: 23-36 (14)
Author: Kavya Shabu and R. Vasanthagopal*
DOI: 10.2174/9789815238365124010005
PDF Price: $15
Abstract
Overview: Banking is the core influencing unit of the economy and over the
years, the banking system has evolved from digitalization to the management
information system, enabling complex blockchain technology and fintech to take the
lead. Data mining is a process within the management information system that enables
the banks in decision-making. Data warehousing and data mining are now common
processes in every industry to efficiently implement customer relationship
management.
Purpose: The purpose of the study is to analyse the trend, author origin, keywords(DE)
and relevant sources to this field. This is done through the identification of best sources
of journals based on Bradford’s Law and source citation index, relevant keywords
according to thematic mapping, thematic evolution and also analyzing clusters through
network and overlay visualization.
Approach of the Study: The study is conducted by accumulating data from the
database SCOPUS and 366 records were found for further analysis after the application
of required filters. The extracted file was further run in Biblioshiny and Vosviewer for
analysis.
Paper Type: Analytical Paper.
Value at Risk and Conditional Value at Risk in the Risk Management of Indian Stock Portfolios
Page: 37-49 (13)
Author: Syamraj KP.* and Regina Sibi Cleetus
DOI: 10.2174/9789815238365124010006
PDF Price: $15
Abstract
Successful investment involves maximizing rewards while minimizing risk.
Investors and traders consider risk while making investment decisions, which is often
the deciding element in accepting or rejecting an asset or security. The study focuses on
risk management in Indian stock portfolios and VaR and CVaR models for risk
valuation. The study compares VaR and CvaR valuations on different stock portfolios.
This work provides more details on stock portfolio risk blended with different
industries. The VaR model framework helps determine the entity's loss potential and
the likelihood of the defined loss. The financial sector is the leading sector in stock
portfolio returns, and Value at Risk and Conditional Value at Risk values for the
financial sector stock portfolio indicate a high level of risk.
Relevance of Big Data Analytics in the Banking Sector
Page: 50-58 (9)
Author: Sumi K. V.*
DOI: 10.2174/9789815238365124010007
PDF Price: $15
Abstract
As the need for real-time data availability and reporting capabilities grew
over the following several decades, increasingly sophisticated database standards and
applications were created. These developments have recently started to accelerate due
to the rising use of advanced analytics and data visualisation in recent years. The
process of extracting hidden insights from vast amounts of organised and unstructured
data known as data science now makes use of highly developed technology such as
data mining, machine learning, and advanced analytics. Big data is no exception to the
banking industry's history of being an early user of new technologies. Big Data is a
term used to describe an expanding body of data that is both structured and
unstructured and is present in a variety of formats. Volume, velocity, variety, value,
and truthfulness are this technology's key characteristics.
Performance Appraisal and Organizational Outcome via the Mediating Effect of Relationship with Peer Group and Subordinates-A Tool for HR Analytic
Page: 59-69 (11)
Author: S. Jayadev and R. Sumitha*
DOI: 10.2174/9789815238365124010008
PDF Price: $15
Abstract
The human resources industry has undergone significant transformation as a
result of the advent of HR analytics. Managers are now able to make accurate databased decisions leading to better performance. Organizations utilize HR analytics to
examine employee turnover, utilize talents effectively, gather information for decisionmaking, etc. HR analytics can also boost performance, productivity, and profitability
when they are linked with corporate strategy. Performance Appraisal is a continuous
system of evaluating employees based on their set goals. HR analytics is very useful
during the performance evaluation cycle as it assists employers in identifying
performance gaps and closing them using the data available. Equally important in the
appraisal process are the peer group and subordinates, whose inputs in the form of data
help assess and improve performance. These variables may be tracked and shared with
management and staff to help everyone perform better and be more productive. In this
context, the study aims to explore the mediating effect of peer groups and subordinates
in the performance appraisal process and how it contributes to the organizational
outcome of selected IT Companies in Kerala.
Stress Management Among Women Police Officers With Special Reference to Kannur District
Page: 70-85 (16)
Author: Vigi V. Nair* and Madhusoodanan Kartha N.V.
DOI: 10.2174/9789815238365124010009
PDF Price: $15
Abstract
Law enforcement is a profession with a few unusual traits that can cause
stress, and policing is one of the maximum demanding and stressful jobs amongst
them. The police employees are the few experts wherein people are expected to stand
risks and, if necessary, to treat their lives in addition facing high stress in lots of
different aspects. Police personnel go through tremendous occupational physical and
mental stress. Women law enforcement officials are steadily growing in numbers
within the country and they're believed to revel in greater stress than their male
counterparts and additionally operating in regulation enforcement. Studies have shown
that working hours, education, age and the relationship among co-workers and
supervisors have been the aspects that led them to experience stress. Stress affects the
overall performance of men or women in this sector. The study deals with the analysis
of stress management among women police officers with special reference to Kannur
District.
Marketing Analytics in Business: Emerging Opportunities and Challenges
Page: 86-96 (11)
Author: Aswani Thampi P.R.* and Ambeesh Mon. S.
DOI: 10.2174/9789815238365124010010
PDF Price: $15
Abstract
In today’s modern marketing scenario, a greater understanding of the
consumer’s mind and user behavior is vital in positioning a product or service.
Personalized ads that speak to the buyer’s specific needs and interests are inevitable for
brands to catch individual attention. With the advent of more advanced analytical tools
and approaches in recent years, companies and marketers no longer need to guess
buyer behavior patterns or their product preferences. Marketers can also better
understand current marketing trends, determine which programs worked and why,
evaluate and monitor trends over time, assess the market, predict future results, etc.
Marketing analytics helps the business to make decisions on everything, and gives the
business leaders significant new decision-making power. Insights gleaned from
marketing analytics can enable organizations to improve customer experiences,
increase the return on investment of marketing efforts, and craft future marketing
strategies. Even though, marketing analytics is a crucial element in business and
provides several opportunities, most of the marketers face multiple marketing analytics
challenges that restrict them from using the available data to the best potential. The key
here is to identify and understand these challenges. This research paper aims to identify
the various opportunities and challenges associated with marketing analytics in
business. Thereby assessing its importance in today’s competitive business landscape.
Impact of Data Analytics in Retail Industry
Page: 97-102 (6)
Author: Danileo Jose*
DOI: 10.2174/9789815238365124010011
PDF Price: $15
Abstract
In this era, retail market has grown to an extreme level where satisfying a
customer’s need is of utmost importance for the survival of a retailer in the market as in
the business. Hence, managing and processing the data to meet the customer’s
expectation is very much crucial in order to run their business, promote growth as well
profit-making. As the retail sector is in the fast run and for serving faster to the
customers and clients, every business sector makes use of the big data, more
specifically data analytics for almost every part of the retail activities such as tracking
the trending products, monitoring the inventory level forecasting future sales,
forecasting future demand and many such activities. Also it helps the retailers in
working on how to promote themselves or their product to their targeted customers,
what are the purchasing patterns of the buyers, what to sell next to their targeted
customers by evaluating the customer behaviour as well their interests.
Emerging Landscape in Business Analytics Technologies
Page: 103-114 (12)
Author: D. Mavoothu*
DOI: 10.2174/9789815238365124010012
PDF Price: $15
Abstract
This review paper tries to capture the emerging landscape in business
analytics technologies with the main focus being to identify the potential challenges
due to this emergence. With the projected global data creation of 170 ZB by 2025, with
enterprises comprising around 60% of that 170 ZB total, companies need weighty
analytics technologies to maneuver them. Cloud, data warehouses, big data, and new
software/hardware developments have intensified the unfolding of analytics. Analytics
as such has not changed much, but analytical technology has undergone a lot of
changes. New and emerging analytics technologies include hybrid data architecture,
containerization, data fabric, IoT, blockchain, connected cloud, etc. Business
analytics innovative technologies bring new opportunities and challenges, but not
without net gain.
A Study on Supply Chain Management Practices of Seafood Industries in Kerala
Page: 115-122 (8)
Author: S. Geetha and Sanal S.*
DOI: 10.2174/9789815238365124010013
PDF Price: $15
Abstract
Kerala contributes close to one-fifth of the total marine fish landed in India.
The marine fish landing in Kerala during the year 2020-21 was 3.91 lakh tonnes (4.75
lakh tonnes in 2019-20) and the export of marine products from Kerala during the year
2020-21 was 1,57,698 MT (1,63,563 MT in 2019-20). Organizations are faced with an
array of challenges as they strive to compete in today’s dynamic global markets. To
remain competitive, organizations must recognize the importance of supply chain
practices that improve not only their own performance but also coordinate with their
channel partners to improve their joint performance. Effective and efficient supply
chain management practices now have become a very valuable and important way to
remain competitive in the market and to improve organizational performance. A
successful supply chain will effectively coordinate its processes, focus on delivering
quality products, eliminate unnecessary costs in key functional areas, proper waste
management, and create a performance measurement system that provides data on
whether the supply chain is performing up to expectations. The significance of this
study is first to study the extent to which the seafood industries in Kerala implement
supply chain management practices. Second, to identify various factors that contribute
to supply chain management practices, competitive advantage, and organizational
performance.
Gamut of Data Mining Incidental to Fraud Detection in the Era of Digital Banking
Page: 123-130 (8)
Author: Shinta Sebastian and Agustina M.S.*
DOI: 10.2174/9789815238365124010014
PDF Price: $15
Abstract
Rivals in the modern fintech space are fighting legacy banks from all sides
and gradually dismantling the protective walls that have been up over the years. The
banks and broader financial sector must deal with this fledgling innovation in digital
banking as well as difficulties connected to payments, cash management, lending, and
investment management. Credit cards, peer-to-peer lending networks, real-time
payment systems, digital wallets, challenger banks, etc. are examples of such
innovations in digital banking. At present new entrants to the banking ecosystem have
a greater degree of independence. Due to seamless integration, mobile connectivity,
data availability, trust-based transactions, cloud-physical infrastructure, scaling up the
business, etc. have improved and the cost of acquiring and servicing clients has
reduced. People around the world are frequently travelling, and making purchases than
at any other time in the past. However, the shift of banking to digital channels has
resulted in a revolution in financial fraud. In the current era, digital banking fraud is a
big worldwide industry, where highly competent criminal gangs use ever-moreadvanced and ever-sophisticated technology. They regularly collaborate with dishonest
bank personnel to steal substantial sums of money. Data mining, artificial intelligence,
and machine learning are being used to protect clients and the digitalized banking
system against scammers and financial fraud. This study explicitly shows the scope of
emerging data mining techniques for fraud detection and prevention in the modern era
of digitalized banking.
Subject Index
Page: 131-136 (6)
Author: Sumi K. V. and R. Vasanthagopal
DOI: 10.2174/9789815238365124010015
PDF Price: $15
Introduction
Business Analytics for Effective Decision Making is a comprehensive reference that explores the role of business analytics in driving informed decision-making. The book begins with an introduction to business analytics, highlighting its significance in today's dynamic business landscape. The subsequent chapters review various tools and software available for data analytics, addressing both the opportunities and challenges for professionals in different sectors. Readers will find practical insights and real-world case studies across diverse industries, including banking, retail, marketing, and supply chain management. Each chapter provides actionable insights and concludes with implications for implementing data-driven strategies. Key Features: Practical Examples: Real-world case studies and examples make complex concepts easy to understand. Ethical Considerations: Guidance on responsible data usage and addressing ethical implications. Comprehensive Coverage: From data collection to analysis and interpretation, the book covers all aspects of business analytics. Diverse Perspectives: Contributions from industry experts offer diverse insights into data analytics applications in business research, marketing, supply chain and the retail industry. Actionable Insights: Each chapter concludes with practical implications for implementing data-driven strategies.