Tero Lähderanta, Janne Salonen, J. Möttönen, M. Sillanpää
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引用次数: 2
Abstract
Using unique administrative register data, we investigate old-age retirement under the statutory pension scheme in Finland. The analysis is based on multi-outcome modelling of pensions and working lives together with a range of explanatory variables. An adaptive multi-outcome LAD-lasso regression method is applied to obtain estimates of earnings and socioeconomic factors affecting old-age retirement and to decide which of these variables should be included in our model. The proposed statistical technique produces robust and less biased regression coef fi cient estimates in the context of skewed outcome distributions and an excess number of zeros in some of the explanatory variables. The results underline the importance of late life course earnings and employment to the fi nal amount of pension and reveal differences in pension outcomes across socioeconomic groups. We conclude that adaptive LAD-lasso regression is a promising statistical technique that could be usefully employed in studying various topics in the pension industry.
期刊介绍:
The International Social Security Review, the world"s major international quarterly publication in the field of social security. First published in 1948, the journal appears in four language editions (English, French, German and Spanish). Articles by leading social security experts around the world present international comparisons and in-depth discussions of topical questions as well as studies of social security systems in different countries, and there is a regular, comprehensive round-up of the latest publications in its field.