학술
기타
Bivariate Isotonic Regression by Dynamic Programming
arXiv Econ
CC BY
이 매체는 공공·자유 라이선스로 본문을 직접 표시합니다.Abstract
This article extends the dynamic programming framework introduced by (Rote, 2019) from the univariate to the bivariate isotonic problem, using an anti-diagonal traversal procedure.
The proposed algorithm is applied to the well-known baseball data set that describes the association of salary with a collection of player properties, including the number of runs batted and hits.
The new algorithm is relevant in the sense that dynamic programming has a wide range of applications in economics, such as the savings problem, economic growth, job search, business cycles, oligopoly equilibrium, recursive contracts, and forecasting.
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