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Learning Language Semantics from Ambiguous Supervision

机译:从歧义监督中学习语言语义学

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This paper presents a method for learning a semantic parser from ambiguous supervision. Training data consists of natural language sentences annotated with multiple potential meaning representations, only one of which is correct. Such ambiguous supervision models the type of supervision that can be more naturally available to language-learning systems. Given such weak supervision, our approach produces a semantic parser that maps sentences into meaning representations. An existing semantic parsing learning system that can only learn from unambiguous supervision is augmented to handle ambiguous supervision. Experimental results show that the resulting system is able to cope up with ambiguities and learn accurate semantic parsers.
机译:本文提出了一种从模糊监督中学习语义解析器的方法。训练数据由自然语言句子组成,并用多种可能的含义表示法注释,其中只有一种是正确的。这种模棱两可的监督为语言学习系统更自然地提供了监督类型。在这种薄弱的监督下,我们的方法将产生一个语义分析器,该语法分析器将句子映射为含义表示。现有的只能从明确监督中学习的语义解析学习系统得到了增强,可以处理模糊监督。实验结果表明,生成的系统能够应对歧义并学习准确的语义解析器。

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