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Using the MEPS-IC to Study Retiree Health Insurance

April 2006

Written by: Alice Zawacki

Working Paper Number:

CES-06-13

Abstract

This paper discusses using the restricted-access Medical Expenditure Panel Survey- Insurance Component (MEPS-IC) to study employer-sponsored retiree health insurance (RHI). This topic is particularly interesting given current events such as the aging of baby boomers, rising health care costs, new prescription drug coverage under Medicare, and changes in accounting standards for reporting liabilities related to RHI offerings. Consequently, employers are grappling with an aging workforce, evaluating Medicare subsidies to employers for offering retiree drug plans, facing rising premium costs as a result of rising health care costs, and trying to show profitability on financial reports. This paper provides technical information on using the MEPS-IC to study RHI and points out data issues with some of the measures in the database. Descriptive statistics are provided to illustrate the types of retiree estimates possible using the MEPS-IC and to show some of the trends in this subject area. Not surprising, these estimates show that employer offers of RHI have declined, greater numbers of retirees are enrolling in these plans, and expenditures for employer-sponsored RHI have been rising.

Document Tags and Keywords

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:
profitability, estimation, cost, financial, finance, accounting, expenditure, subsidy, insurance, retirement, expense, enrollment, premium, medicare, healthcare, insurance employer, retiree, insured, health insurance, enrollee, insurance plans

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:
Standard Industrial Classification, Center for Economic Studies, Medical Expenditure Panel Survey, North American Industry Classification System, Agency for Healthcare Research and Quality

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