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Neural Symbolic Machines: Learning Semantic Parsers on Freebase with Weak Supervision

机译:神经象征机:在自由贝酶上学习语义解毒剂弱势监督

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Harnessing the statistical power of neural networks to perform language understanding and symbolic reasoning is difficult, when it requires executing efficient discrete operations against a large knowledge-base. In this work, we introduce a Neural Symbolic Machine (NSM), which contains (a) a neural "programmer", i.e., a sequence-to-sequence model that maps language utterances to programs and utilizes a key-variable memory to handle compositionality (b) a symbolic "computer", i.e., a Lisp interpreter that performs program execution, and helps find good programs by pruning the search space. We apply REINFORCE to directly optimize the task reward of this structured prediction problem. To train with weak supervision and improve the stability of REINFORCE we augment it with an iterative maximum-likelihood training process. NSM outperforms the state-of-the-art on the WebQuestionsSP dataset when trained from question-answer pairs only, without requiring any feature engineering or domain-specific knowledge.
机译:利用神经网络的统计力量在需要对大型知识库执行有效的离散操作时难以执行语言理解和象征性推理。在这项工作中,我们介绍了一个神经象征机(NSM),其包含(a)神经“程序员”,即将语言话语映射到程序的序列到序列模型,并利用键可变存储器来处理合成性(b)符号“计算机”,即执行程序执行的LISP解释器,并通过修剪搜索空间来帮助找到好的程序。我们申请强化直接优化该结构化预测问题的任务奖励。培养弱势监督,提高加强的稳定性,我们通过迭代的最大可能性培训过程增强它。 NSM在WebQuestionsSP数据集上占据了最先进的状态,只有在问题答案对对时,不需要任何特征工程或特定于域的知识。

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