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Wide coverage natural language processing using kernel methods and neural networks for structured data

机译:使用内核方法和神经网络对结构化数据进行广泛的自然语言处理

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摘要

Convolution kernels and recursive neural networks are both suitable approaches for supervised learning when the input is a discrete structure like a labeled tree or graph. We compare these techniques in two natural language problems. In both problems, the learning task consists in choosing the best alternative tree in a set of candidates. We report about an empirical evaluation between the two methods on a large corpus of parsed sentences and speculate on the role played by the representation and the loss function.
机译:当输入是诸如标记树或图的离散结构时,卷积核和递归神经网络都是用于监督学习的合适方法。我们在两个自然语言问题中比较了这些技术。在这两个问题中,学习任务都包括在一组候选者中选择最佳的替代树。我们报告了两种方法对大量已解析句子的实证评估,并推测了表征和损失函数所起的作用。

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