AM dependency parsing is a method for neural semantic graph parsing that exploits the principle of compositionality. While AM dependency parsers have been shown to be fast and accurate across several graphbanks, they require explicit annotations of the compositional tree structures for training. In the past, these were obtained using complex graphbank-specific heuristics written by experts. Here we show how they can instead be trained directly on the graphs with a neural latent-variable model, drastically reducing the amount and complexity of manual heuristics. We demonstrate that our model picks up on several linguistic phenomena on its own and achieves comparable accuracy to supervised training, greatly facilitating the use of AM dependency parsing for new sembanks.
翻译:AM 依赖性剖析是一种利用组成原则的神经语义图解析方法。 虽然 AM 依赖性剖析器在多个图表库中被证明是快速和准确的, 但它们需要明确描述用于培训的构成性树结构。 过去, 它们是使用专家撰写的复杂图形库特有的黑素学获得的。 这里我们展示了如何直接用神经潜变模式在图表上培训他们, 大幅降低了人工超常性的数量和复杂性。 我们展示了我们的模型本身能捕捉到几种语言现象, 并实现了与监管培训相似的准确性, 大大便利了对新模型使用AM依赖性剖析。