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LAMVI-2: A Visual Tool for Comparing and Tuning Word Embedding Models

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arxiv 1810.11367 v1 pith:4Y2WO5RS submitted 2018-10-22 cs.CL cs.HCcs.LGstat.ML

LAMVI-2: A Visual Tool for Comparing and Tuning Word Embedding Models

classification cs.CL cs.HCcs.LGstat.ML
keywords modellearningmodelscomparingdeeplamvi-2tuningaccuracy
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Tuning machine learning models, particularly deep learning architectures, is a complex process. Automated hyperparameter tuning algorithms often depend on specific optimization metrics. However, in many situations, a developer trades one metric against another: accuracy versus overfitting, precision versus recall, smaller models and accuracy, etc. With deep learning, not only are the model's representations opaque, the model's behavior when parameters "knobs" are changed may also be unpredictable. Thus, picking the "best" model often requires time-consuming model comparison. In this work, we introduce LAMVI-2, a visual analytics system to support a developer in comparing hyperparameter settings and outcomes. By focusing on word-embedding models ("deep learning for text") we integrate views to compare both high-level statistics as well as internal model behaviors (e.g., comparing word 'distances'). We demonstrate how developers can work with LAMVI-2 to more quickly and accurately narrow down an appropriate and effective application-specific model.

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