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FIND: Human-in-the-Loop Debugging Deep Text Classifiers

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arxiv 2010.04987 v1 pith:3AUBO4U4 submitted 2020-10-10 cs.CL cs.HCcs.LG

FIND: Human-in-the-Loop Debugging Deep Text Classifiers

classification cs.CL cs.HCcs.LG
keywords classifiersdatasetstextfindbiasesdatasetdeephumans
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Since obtaining a perfect training dataset (i.e., a dataset which is considerably large, unbiased, and well-representative of unseen cases) is hardly possible, many real-world text classifiers are trained on the available, yet imperfect, datasets. These classifiers are thus likely to have undesirable properties. For instance, they may have biases against some sub-populations or may not work effectively in the wild due to overfitting. In this paper, we propose FIND -- a framework which enables humans to debug deep learning text classifiers by disabling irrelevant hidden features. Experiments show that by using FIND, humans can improve CNN text classifiers which were trained under different types of imperfect datasets (including datasets with biases and datasets with dissimilar train-test distributions).

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