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Saul D. Hoffman

Researcher at University of Delaware

Publications -  69
Citations -  9468

Saul D. Hoffman is an academic researcher from University of Delaware. The author has contributed to research in topics: Population & Earned income tax credit. The author has an hindex of 30, co-authored 69 publications receiving 9037 citations. Previous affiliations of Saul D. Hoffman include University of Michigan.

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A Treatise on the Family

TL;DR: A Treatise on the Family by G. S. Becker as discussed by the authors is one of the most famous and influential economists of the second half of the 20th century, a fervent contributor to and expounder of the University of Chicago free-market philosophy, and winner of the 1992 Nobel Prize in economics.
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The incidence and wage effects of overeducation

TL;DR: This article found that surplus education does have economic value and that the individual return to an additional year of surplus education was positive and significant for all major demographic groups, but the estimated return is only about half the size of the return to required education.
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Reevaluating the costs of teenage childbearing.

TL;DR: It is found that accounting for unobserved family background reduces, but does not eliminate, the estimated consequences of early childbearing, and Statistically significant and quantitatively important effects of teen parenthood remain for high school graduation, family size, and economic well-being.
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A reconsideration of the economic consequences of marital dissolution

TL;DR: Evidence of selection bias in the subgroup of women who remarry is found, suggesting that currently unmarried women might not improve their economic status through remarriage as much as women who have remarried.
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Multinomial and conditional logit discrete-choice models in demography

TL;DR: It is argued that the feature of conditionallogit makes it more appropriate for estimating behavioral models, rather than the other way around, than the more familiar multinomial logit model.