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JOINT LEARNING OF LOCAL AND GLOBAL FEATURES FOR ENTITY LINKING VIA NEURAL NETWORKS

机译:通过神经网络联合进行本地和全局特征的实体学习

摘要

A system, method and computer program product for disambiguating one or more entity mentions in one or more documents. The method facilitates the simultaneous linking entity mentions in a document based on convolution neural networks and recurrent neural networks that model both the local and global features for entity linking. The framework uses the capacity of convolution neural networks to induce the underlying representations for local contexts and the advantage of recurrent neural networks to adaptively compress variable length sequences of predictions for global constraints. The RNN functions to accumulate information about the previous entity mentions and/or target entities, and provide them as the global constraints for the linking process of a current entity mention.
机译:一种用于消除一个或多个文档中一个或多个实体提及的歧义的系统,方法和计算机程序产品。该方法有利于基于卷积神经网络和递归神经网络的文档中同时链接的实体提及,后者对实体链接的局部和全局特征进行建模。该框架利用卷积神经网络的能力来诱导局部上下文的基本表示,并利用递归神经网络的优势来自适应地压缩全局约束的预测的可变长度序列。 RNN的功能是累积有关先前实体提及和/或目标实体的信息,并将它们提供为当前实体提及的链接过程的全局约束。

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