Taylor’s theorem: A new perspective for neural tensor networks
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摘要
Neural tensor networks have been widely used in a large number of natural language processing tasks such as conversational sentiment analysis, named entity recognition and knowledge base completion. However, the mathematical explanation of neural tensor networks remains a challenging problem, due to the bilinear term. According to Taylor’s theorem, a kth order differentiable function can be approximated by a kth order Taylor polynomial around a given point. Therefore, we provide a mathematical explanation of neural tensor networks and also reveal the inner link between them and feedforward neural networks from the perspective of Taylor’s theorem. In addition, we unify two forms of neural tensor networks into a single framework and present factorization methods to make the neural tensor networks parameter-efficient. Experimental results bring some valuable insights into neural tensor networks.
论文关键词:Neural tensor networks,Natural language processing,Taylor’s theorem,Conversational sentiment analysis
论文评审过程:Received 24 December 2020, Revised 20 June 2021, Accepted 24 June 2021, Available online 26 June 2021, Version of Record 9 July 2021.
论文官网地址:https://doi.org/10.1016/j.knosys.2021.107258