Explores reference document choices for applying DeepSHAP to neural retrieval models and reports that its explanations differ substantially from those of LIME.
MatchZoo: A Toolkit for Deep Text Matching
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
In recent years, deep neural models have been widely adopted for text matching tasks, such as question answering and information retrieval, showing improved performance as compared with previous methods. In this paper, we introduce the MatchZoo toolkit that aims to facilitate the designing, comparing and sharing of deep text matching models. Specifically, the toolkit provides a unified data preparation module for different text matching problems, a flexible layer-based model construction process, and a variety of training objectives and evaluation metrics. In addition, the toolkit has implemented two schools of representative deep text matching models, namely representation-focused models and interaction-focused models. Finally, users can easily modify existing models, create and share their own models for text matching in MatchZoo.
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cs.IR 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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A study on the Interpretability of Neural Retrieval Models using DeepSHAP
Explores reference document choices for applying DeepSHAP to neural retrieval models and reports that its explanations differ substantially from those of LIME.