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arxiv: 1606.06352 · v1 · pith:7WIY3RX6new · submitted 2016-06-20 · 📊 stat.ML · cs.CL· cs.LG

Visualizing textual models with in-text and word-as-pixel highlighting

classification 📊 stat.ML cs.CLcs.LG
keywords modelin-textmakemethodsmodelsparticularsensetext
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We explore two techniques which use color to make sense of statistical text models. One method uses in-text annotations to illustrate a model's view of particular tokens in particular documents. Another uses a high-level, "words-as-pixels" graphic to display an entire corpus. Together, these methods offer both zoomed-in and zoomed-out perspectives into a model's understanding of text. We show how these interconnected methods help diagnose a classifier's poor performance on Twitter slang, and make sense of a topic model on historical political texts.

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