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Conduct of Business: Promoting Good Conduct in Insurancee Distribution IAIS Global Seminar 2017 Birny Birnbaum Center for Econom ic Justice June 30, 2017

The Center for Economic Justice CEJ is a non-profit consumer advocacy organization dedicated to representing the interests of low-income and minority consumers as a class on economic justice issues. Most of our work is before administrative agencies on insurance, financial services and utility issues. On the Web: www.cej-online.org Birny Birnbaum 2 IAIS Global Seminar 2017

Why CEJ Works on Insurance Issues Insurance Products Are Financial Security Tools Essential for Individual and Community Economic Development: CEJ works to ensure fair access and fair treatment for insurance consumers, particularly for low- and moderate-income consumers. Insurance is the Primary Institution to Promote Loss Prevention and Mitigation, Resiliency and Sustainability: CEJ works to ensure insurance institutions maximize their role in efforts to reduce loss of life and property from catastrophic events and to promote resiliency and sustainability of individuals, businesses and communities. Birny Birnbaum 3 IAIS Global Seminar 2017

Captive Insurance Markets: Who Are the Gatekeepers for Insurance Sales and Claims? Today, there are a number of smaller insurance markets in which the consumer is captive to the intermediary: Consumer Credit Insurance / Payment Protection sold by Lenders Force-Placed Insurance, Private Mortgage Insurance sold by Lenders and Loan Servicers Travel Insurance Sold by Airlines, Travel Agents Rental Car Insurance Sold by Rental Car Companies Christian has discussed the problems with consumer credit insurance in Australia and the efforts of ASIC to address the market problems problems arising from a reverse-competitive market in which market forces do not align with consumer interests. Birny Birnbaum 4 IAIS Global Seminar 2017

Reverse Competition Reverse competition means competition among insurers that regularly takes the form of insurers vying with each other for the favor of persons who control, or may control, the placement of the insurance with insurers. New York Department of Financial Services Investigation of Force-Placed Insurance: Force-placed insurers have competed for business from banks and mortgage servicers through reverse competition : i.e., rather than competing for business by offering lower prices, insurers have created incentives for banks and mortgage servicers to buy force-placed insurance with high premiums by enabling banks and mortgage services, through complex arrangements, to share in the profits associated with the higher prices. Birny Birnbaum 5 IAIS Global Seminar 2017

CCI/PPI Sales Abuses a Global Phenomenon: U.S., U.K., Australia, South Africa and elsewhere. Why? The Lender is the gatekeeper for a captive market the lender as intermediary determines what products will be sold to which consumers and how much of the premium the lender will extract from the insurer as consideration for the lender s market power to open the gate to its consumers for the insurer. Over the past ten years, captive markets have spread to many other types of insurance product and markets, but now, the gatekeepers are Big Data Algorithms. Without public policy action, captive markets will no longer be limited to add-on products markets like credit-related insurance. Other insurance markets whether personal or commercial lines will become captive markets where control over access is with the data vendors and algorithms describing and scoring the individual consumer or business. Birny Birnbaum 6 IAIS Global Seminar 2017

Big Data Algorithms as Insurance Market Gatekeepers Marketing: web searches and web advertising that pre-score and channel consumers to particular products, providers and price-levels. Pricing: pre-fill applications and pricing without the consumer providing information, pricing based not just on risk but on price optimization / consumer demand models, real-time competitive options and/or socio-economic characteristics Claims: automated, instant claim settlement proposals based on data generated by a vehicle, home telematics or wearable device and utilizing price optimization/consumer demand models to determine amount of claim settlement offer a particular consumer is likely to accept based on his or her personal data. Common characteristics opaque algorithms, little or no disclosure or transparency to consumer, great potential to penalize most vulnerable consumers, limiting loss mitigation role of insurance Birny Birnbaum 7 IAIS Global Seminar 2017

What is Needed to Keep Insurance Markets Competitive and Fair to Consumers? Improve Insurance Role for Economic Security, Loss Mitigation, Resiliency and Sustainability for Individual and Businesses? 1. Articulate What the Future of Insurance Should Look Like 2. Monitor Markets More Comprehensively and Efficiently a. Routine Surveys of Insurers Data Sources and Uses b. Routine Collection and Robust Analysis of Granular Data on Consumer Market Outcomes 3. Develop / Improve / Reinvigorate Capabilities for Economic Analysis of Markets, Competition and Anti-Trust. Supervisory Intervention to align market forces with consumer interest, when needed. Will future success in insurance market be determined by quality of products and services or by amount of consumer data insurer/intermediary controls? Birny Birnbaum 8 IAIS Global Seminar 2017

Big Data Defined Insurers use of Big Data has transformed the way they do marketing, pricing, claims settlement and their approach to risk management. For purposes of my talk, Big Data means: Massive databases of information about (millions) of individual consumers Associated data mining and predictive analytics applied to those data Scoring models produced from these analytics. The scoring models generated by data mining and predictive analytics are algorithms. Algorithms are lines of computer code that rapidly execute decisions based on rules set by programmers or, in the case of machine learning, generated from statistical correlations in massive datasets. With machine learning, the models change automatically. Coupled with the increased volume and granularity of data is the digital technology to generate, access, process, analyze and deploy big data algorithms in real time Birny Birnbaum 9 IAIS Global Seminar 2017

What s So Big About Big Data? 1. Insurers use of Big Data has huge potential to benefit consumers and insurers by transforming the insurer-consumer relationship and by discovering new insights into and creating new tools for loss mitigation. 2. Insurers use of Big Data has huge implications for fairness, access and affordability of insurance and for supervisors ability to keep up with the changes and protect consumers from unfair practices 3. The current insurance supervisory framework generally does not provide supervisors with the tools to effectively respond to insurers use of Big Data. Big Data has massively increased the market power of insurers versus consumers and versus supervisors. 4. Market forces alone free-market competition cannot and will not protect consumers from unfair insurer practices. So-called innovation without some consumer protection and public policy guardrails will lead to unfair outcomes. Birny Birnbaum 10 IAIS Global Seminar 2017

5. Supervisors and policymakers must understand the economic and competitive implications of Big Data on insurance. Without public policy action, captive markets will no longer be limited to add-on products markets like credit-related insurance. Other insurance markets whether personal or commercial lines will become captive markets where control over access is with the data vendors and algorithms describing and scoring the individual consumer or business. 6. The insurance industry and insurance supervisory systems e-based supervisory system are at a crossroad. One possible future is empowered consumers and businesses partnering with risk management and sustainability companies who also provide insurance. Another choice is a small set of insurers, data brokers and consulting firms who control access to insurance through opaque algorithms. Birny Birnbaum 11 IAIS Global Seminar 2017

How Insurance Is Different from Other Consumer Products 1. The insurance is required by law and by lenders requiring protection of home or vehicle collateralizing the loan. Limits normal competition. 2. Contract is a promise for future benefits if an undesirable event occurs. If the product fails the consumer learns the insurance policy won t cover the loss she is stuck and can t purchase another policy that would protect her against a known loss. Consumers have little or no information about the insurers performance. Again, limits normal competition. 3. Cost-based pricing is required and consumer challenges to prices are prohibited. The requirement for cost-based pricing is to protect insurer financial condition and prevent intentional or unintentional unfair discrimination 4. There is Profound Public Interest in Broad Coverage failure or inability of consumers and businesses to access insurance has implications not just for individual families and businesses, but for taxpayers, communities and the nation. Birny Birnbaum 12 IAIS Global Seminar 2017

Big Data Algorithms Can Reflect and Perpetuate Historical Inequities Barocas and Selbst: Big Data s Disparate Impact Advocates of algorithmic techniques like data mining argue that they eliminate human biases from the decision-making process. But an algorithm is only as good as the data it works with. Data mining can inherit the prejudices of prior decision-makers or reflect the widespread biases that persist in society at large. Often, the patterns it discovers are simply preexisting societal patterns of inequality and exclusion. Unthinking reliance on data mining can deny members of vulnerable groups full participation in society. A computer algorithm reflects historical biases of the data and the developers. Birny Birnbaum 13 IAIS Global Seminar 2017

Insurance Supervision in an Era of Big Data 1. Innovation in Insurance Supervision New Tools to Empower Consumers. Create a Future in Which Consumers Shop for Insurance Based Not Only on Price, But: a. Insurers and producers transparency about and use and protection of consumers personal information; b. Insurers and intermediaries performance based on actual market outcomes for consumers; and c. Insurers and intermediaries tools and partnerships for loss mitigation, loss prevention and consumer empowerment for risk management to control premium costs Birny Birnbaum 14 IAIS Global Seminar 2017

21 st Century Insurance Supervision 2. Innovation in Insurance Supervision Enhanced Data Collection for Market Monitoring and for Development of New Tools for Consumers a. Routine collection and publication by supervisors of the types, sources and uses of data by insurers for marketing, sales, pricing, claims settlement and loss mitigation. b. Routine collection and publication by supervisors of granular consumer insurance market outcomes, including transaction-detail data on quotes, sales and claim settlements. Birny Birnbaum 15 IAIS Global Seminar 2017

3. Innovation in Insurance Supervision Addressing Challenges of Big Data a. Set Out Guidelines and Values for Innovation b. Modernize Oversight of Marketing, Pricing and Claims Settlement c. Economic Analysis Informed by Anti-trust and Competitive Concepts d. Institutionalize Greater Consumer Stakeholder Involvement in Insurance Supervision Birny Birnbaum 16 IAIS Global Seminar 2017