A two-phase external-knowledge plus number-learning-network method for multi-label charge prediction yields 3-5% macro-F1 and 5-15% micro-F1 gains when added to existing deep models on a Chinese legal dataset.
In: ICAIL 2017, London, UK, June 16, 2017
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An External Knowledge Enhanced Multi-label Charge Prediction Approach with Label Number Learning
A two-phase external-knowledge plus number-learning-network method for multi-label charge prediction yields 3-5% macro-F1 and 5-15% micro-F1 gains when added to existing deep models on a Chinese legal dataset.