Framing fake news classification as natural language inference and ensembling NLI models with BERT, plus transitivity rules, achieves 88.063% test accuracy in the WSDM 2019 challenge.
Semantic Sentence Matching with Densely-connected Recurrent and Co-attentive Information
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Sentence matching is widely used in various natural language tasks such as natural language inference, paraphrase identification, and question answering. For these tasks, understanding logical and semantic relationship between two sentences is required but it is yet challenging. Although attention mechanism is useful to capture the semantic relationship and to properly align the elements of two sentences, previous methods of attention mechanism simply use a summation operation which does not retain original features enough. Inspired by DenseNet, a densely connected convolutional network, we propose a densely-connected co-attentive recurrent neural network, each layer of which uses concatenated information of attentive features as well as hidden features of all the preceding recurrent layers. It enables preserving the original and the co-attentive feature information from the bottommost word embedding layer to the uppermost recurrent layer. To alleviate the problem of an ever-increasing size of feature vectors due to dense concatenation operations, we also propose to use an autoencoder after dense concatenation. We evaluate our proposed architecture on highly competitive benchmark datasets related to sentence matching. Experimental results show that our architecture, which retains recurrent and attentive features, achieves state-of-the-art performances for most of the tasks.
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cs.CL 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Fake News Detection as Natural Language Inference
Framing fake news classification as natural language inference and ensembling NLI models with BERT, plus transitivity rules, achieves 88.063% test accuracy in the WSDM 2019 challenge.