EMAILGGNMLOct 11, 2020

Interpretable Neural Networks for Panel Data Analysis in Economics

arXiv:2010.05311v38 citations
Originality Incremental advance
AI Analysis

This provides a new tool for economists to use neural networks with interpretability for analyzing panel data, though it is incremental in addressing the black-box problem.

The paper tackles the lack of interpretability in neural networks for economics by proposing an interpretable neural network model that achieves 94.5% accuracy in predicting monthly employment status from administrative data, comparable to conventional methods.

The lack of interpretability and transparency are preventing economists from using advanced tools like neural networks in their empirical research. In this paper, we propose a class of interpretable neural network models that can achieve both high prediction accuracy and interpretability. The model can be written as a simple function of a regularized number of interpretable features, which are outcomes of interpretable functions encoded in the neural network. Researchers can design different forms of interpretable functions based on the nature of their tasks. In particular, we encode a class of interpretable functions named persistent change filters in the neural network to study time series cross-sectional data. We apply the model to predicting individual's monthly employment status using high-dimensional administrative data. We achieve an accuracy of 94.5% in the test set, which is comparable to the best performed conventional machine learning methods. Furthermore, the interpretability of the model allows us to understand the mechanism that underlies the prediction: an individual's employment status is closely related to whether she pays different types of insurances. Our work is a useful step towards overcoming the black-box problem of neural networks, and provide a new tool for economists to study administrative and proprietary big data.

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