2022
DOI: 10.1111/lsq.12378
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How to Cautiously Uncover the “Black Box” of Machine Learning Models for Legislative Scholars

Abstract: Machine learning models, especially ensemble and tree‐based approaches, offer great promise to legislative scholars. However, they are heavily underutilized outside of narrow applications to text and networks. We believe this is because they are difficult to interpret: while the models are extremely flexible, they have been criticized as “black box” techniques due to their difficulty in visualizing the effect of predictors on the outcome of interest. In order to make these models more useful for legislative sc… Show more

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