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Book part
Publication date: 18 July 2022

Samridhi Tanwar and Surbhi Bhardwaj

Introduction: Foreign direct investment (FDI) is a deciding factor in the insurance industry’s growth in any nation. Besides, similar socioeconomic conditions, some countries tend…

Abstract

Introduction: Foreign direct investment (FDI) is a deciding factor in the insurance industry’s growth in any nation. Besides, similar socioeconomic conditions, some countries tend to attract more FDI inflows. This chapter focuses on exploring the FDI in the insurance industry in Brazil, Russia, India, China, and South Africa (BRICS).

Purpose: The chapter aims to explore the current situation of FDI in the insurance industry in BRICS member nations and uncover the factors that have led to higher foreign investments in some countries.

Methodology: Using descriptive and comparative approaches, this chapter explains the FDI scenario in the insurance sector of BRICS nations.

Findings: Based on a comparative analysis, the authors observed that deregulation, increased foreign engagement, and adoption of innovative technology and distribution methods are some avenues that could be worked upon to improve FDIs in the Indian insurance sector.

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Big Data Analytics in the Insurance Market
Type: Book
ISBN: 978-1-80262-638-4

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Book part
Publication date: 18 July 2022

Abstract

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Big Data Analytics in the Insurance Market
Type: Book
ISBN: 978-1-80262-638-4

Book part
Publication date: 28 March 2022

Kiran Sood, Navneet Seth and Simon Grima

Purpose: In addition to the liberalisation policy, big data has revolutionised the level of awareness among customers about the quality and prices of insurance products. The

Abstract

Purpose: In addition to the liberalisation policy, big data has revolutionised the level of awareness among customers about the quality and prices of insurance products. The rationale behind this study is to underline the issues in managing product portfolios in a disruptive environment, where a sudden and unexpected situation like COVID-19 pandemic is going to challenge the traditional models and insurance covers of organisations as well as individuals.

Methodology: The study is based on secondary data. The scope of the study will only be confined to the top two general insurance companies in India based on year of registration and market share to compare their product portfolios during pre- and post-liberalisation periods ranging from 1985–1986 to 2000–2001 and 2001–2002 to 2018–2019, respectively.

Findings: There is a lack of a balanced product portfolio for fulfilling the varying needs of customers. The insurance companies needed to set up different portfolios and should provide separate covers for natural catastrophes such as floods, earthquakes, landslides, tsunami, and the occurrence of new pandemics like COVID-19.

Significance: The study highlights that the outbreak of COVID-19 and similar pandemics or global emergencies need special preparation from the insurance sector.

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Managing Risk and Decision Making in Times of Economic Distress, Part B
Type: Book
ISBN: 978-1-80262-971-2

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The Development of the Maltese Insurance Industry: A Comprehensive Study
Type: Book
ISBN: 978-1-78756-978-2

Book part
Publication date: 18 July 2022

Manju Dahiya, Shikha Sharma and Simon Grima

Introduction: Big data in the insurance industry can be defined as structured or unstructured data that can affect the rating, marketing, pricing, or underwriting. The five Vs of…

Abstract

Introduction: Big data in the insurance industry can be defined as structured or unstructured data that can affect the rating, marketing, pricing, or underwriting. The five Vs of big data provide insurers with a valuable framework for converting their raw data into actionable information. These five Vs are specifically: (1) Volume: The need to look at the type of data and the internal systems; (2) Velocity: The speed at which big data is generated, collected, and refreshed; (3) Variety: Refers to both the structured and unstructured data; (4) Veracity: Refers to trustworthiness and confidence in data; and (5) Value: Refers to whether the data collected are good or bad.

Purpose: Insurance companies face many data challenges. However, the administration of big data has allowed insurers to acknowledge the demand of their customers and develop more personalised products. In addition, it can be used to make correct decisions about insurance operations such as risk selection and pricing.

Methodology: We do this by conducting a systematic literature review on big data. Our emphasis is on gathering information on the five Vs of the big data and the insurance market. Specifically, how big data can help in data-driven decisions.

Findings: Big data technology has created an endless series of opportunities, which have ensured a surge in its usage. It has helped businesses make the process more systematic, cost-effective, and helped in the reduction in fraud and risk prediction.

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Big Data Analytics in the Insurance Market
Type: Book
ISBN: 978-1-80262-638-4

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Book part
Publication date: 19 July 2022

Ayesha Banu

Introduction: The Internet has tremendously transformed the computer and networking world. Information reaches our fingertips and adds data to our repository within a second. Big…

Abstract

Introduction: The Internet has tremendously transformed the computer and networking world. Information reaches our fingertips and adds data to our repository within a second. Big data was initially defined as three Vs, where data come with greater variety, increasing volumes and extra velocity. Big data is a collection of structured, unstructured and semi-structured data gathered from different sources and applications. It has become the most powerful buzzword in almost all the business sectors. The real success of any industry can be counted based on how the big data is analysed, potential knowledge is discovered and productive business decisions are made. New technologies such as artificial intelligence and machine learning have added more efficiency to storing and analysing data. This big data analytics (BDA) becomes more valuable to those companies, focusing on getting insight into customer behaviour, trends and patterns. This popularity of big data has inspired insurance companies to utilise big data at their core systems and advance the financial operations, improve customer service, construct a personalised environment and take all possible measures to increase revenue and profits.

Purpose: This study aims to recognise what big data stands for in the insurance sector and how the application of BDA has opened the door for new and innovative changes in the insurance industry.

Methodology: This study describes the field of BDA in the insurance sector, discusses the benefits, outlines tools, architectural framework, the method, describes applications in general and specific and briefly discusses the opportunities and challenges.

Findings: The study concludes that BDA in insurance is evolving into a promising field for providing insight from very large data sets and improving outcomes while reducing costs. Its potential is great; however, there remain challenges to overcome.

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Big Data: A Game Changer for Insurance Industry
Type: Book
ISBN: 978-1-80262-606-3

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Book part
Publication date: 2 September 2019

Ashu Tiwari, Archana Patro and Soniya Mohil

The systematic risks related to credit financing has received significant attention in the academic domain during and after any financial crisis. However, the role of insurance…

Abstract

The systematic risks related to credit financing has received significant attention in the academic domain during and after any financial crisis. However, the role of insurance has not been adequately studied in the context of crises. The extant literature also shows that the scale of credit financing depends upon the availability of credit insurance and on the policy orientation. Past evidence shows that demand for credit insurance was significantly high during the crisis period. Therefore, this chapter proposes to study the role of various combinations of these two aspects near the period of crisis. The findings of this chapter are based on the outcomesof previous research articles on these topics. The research articles are gathered from various online databases for the years 2000–2014 for the G7 economies. This chapter has alsoincluded facts from contextual policy documents on monetary and fiscal policies where it finds them necessary. Broadly, this chapter describes the role of policies when two mutually dependent industries interact and adversely impact market equilibrium.

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The Impacts of Monetary Policy in the 21st Century: Perspectives from Emerging Economies
Type: Book
ISBN: 978-1-78973-319-8

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Book part
Publication date: 1 January 2005

Wafik Grais and Dimitri Vittas

This chapter looks at the development of contractual savings and institutional investors in Egypt, Jordan, Morocco, and Tunisia (EJMT), and their links with the development of…

Abstract

This chapter looks at the development of contractual savings and institutional investors in Egypt, Jordan, Morocco, and Tunisia (EJMT), and their links with the development of equity markets. The chapter identifies four major potential contributions of contractual savings to capital market development as well as “impact pre-conditions” that can help them obtain. It concludes that contractual savings and institutional investors are neither necessary nor sufficient for the development of equity and bond markets. Nevertheless with certain conditions in place they can have a large impact. The presence of these conditions in EJMT are assessed.

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Money and Finance in the Middle East: Missed Oportunities or Future Prospects?
Type: Book
ISBN: 978-1-84950-347-1

Book part
Publication date: 24 January 2022

Ramon Mizzi, Andre Farrugia and Simon Grima

Insurance in Malta has been very largely influenced by English practice and law. The influence of the English market insurance practice and law not only shaped the Maltese market…

Abstract

Insurance in Malta has been very largely influenced by English practice and law. The influence of the English market insurance practice and law not only shaped the Maltese market but practically that of all common law jurisdictions in former members of the British empire. Since the London insurance market continues to be a very dominant force globally until today, the connection has undoubtedly served Malta well.

The origins of UK insurance principles of utmost good faith and insurable interest under contract law, date back to times which were very different from today and the need to revise the laws has now been felt in the UK as well as in other jurisdictions which were influenced by its law and practice. In Malta, minimal legislative intervention and the Maltese courts were and continue to be mostly guided by English case law, some of which has now been superseded by the updated statute law which was recently introduced in the UK by virtue of the Consumer Insurance (Disclosure and Representations) Act (2012) and Insurance Act (2015).

We herein lay out a case study of the development of utmost good faith and insurable interest in insurance contracts within the Maltese legal context, based on empirical literature findings and semi-structured interviews together with several legal experts who are specialized in the field and experienced insurance professionals.

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Insurance and Risk Management for Disruptions in Social, Economic and Environmental Systems: Decision and Control Allocations within New Domains of Risk
Type: Book
ISBN: 978-1-80117-140-3

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Book part
Publication date: 18 July 2022

Payal Bassi and Jasleen Kaur

Introduction: The insurance industry has unprecedented growth, and the demand for insurance has outgrown in the recent past due to the prevailing pandemic. The companies have a…

Abstract

Introduction: The insurance industry has unprecedented growth, and the demand for insurance has outgrown in the recent past due to the prevailing pandemic. The companies have a large base of the data set at their disposal, and companies must appropriately handle these data to come out with valuable solutions. Data mining enables insurance companies to gain an insightful approach to map strategies and gain competitive advantage, thus strengthening the profits that will allow them to identify the effectiveness of back-propagation neural network (BPNN) and support vector machines (SVMs) for the companies considered under study. Data mining techniques are the data-driven extraction techniques of information from large data repositories, thus discovering useful patterns from the voluminous data (Weiss & Indurkya, 1998).

Purpose: The present study is performed to investigate the comparative performance of BPNNs and SVMs for the selected Indian insurance companies.

Methodology: The study is conducted by extracting daily data of Indian insurance companies listed on the CNX 500. The data were then transformed into technical indicators for predictive model building using BPNN and SVMs. The daily data of the selected insurance companies for four years, that is, 1 April 2017 to 21 March 2021, were used for this. The data were further transformed into 90 data sets for different periods by categorising them into biannual, annual, and two-year collective data sets. Additionally, the comparison was made for the models generated with the help of BPNNs and SVMs for the six Indian insurance companies selected under this study.

Findings: The findings of the study exhibited that the predictive performance of the BPNN and SVM models are significantly different from each other for SBI data, General Insurance Corporation of India (GICRE) data, HDFC data, New India Assurance Company Ltd. (NIACL) data, and ICICIPRULI data at a 5% level of significance.

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