Deep learning for individual heterogeneity: An automatic inference framework
Year of publication: |
2021
|
---|---|
Authors: | Farrell, Max H. ; Liang, Tengyuan ; Misra, Sanjog |
Publisher: |
London : Centre for Microdata Methods and Practice (cemmap) |
Subject: | Deep Learning | Influence Functions | Neyman Orthogonality | Heterogeneity | Structural Modeling | Semiparametric Inference |
Series: | cemmap working paper ; CWP29/21 |
---|---|
Type of publication: | Book / Working Paper |
Type of publication (narrower categories): | Working Paper |
Language: | English |
Other identifiers: | 10.47004/wp.cem.2021.2921 [DOI] 1765281148 [GVK] hdl:10419/246797 [Handle] RePEc:ifs:cemmap:29/21 [RePEc] |
Source: |
-
Deep learning for individual heterogeneity : an automatic inference framework
Farrell, Max H., (2021)
-
The dynamic advertising effect of collegiate athletics
Chung, Doug J., (2013)
-
Crowdsourcing new product ideas under consumer learning
Huang, Yan, (2014)
- More ...
-
Deep learning for individual heterogeneity : an automatic inference framework
Farrell, Max H., (2021)
-
Markov chain Monte Carlo for incomplete information discrete games
Misra, Sanjog, (2013)
-
Statistical inference for the population landscape via momentâadjusted stochastic gradients
Liang, Tengyuan, (2019)
- More ...