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Genetic Algorithms for Data-Driven Web Question Answering

机译:数据驱动的Web问答的遗传算法

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We present an evolutionary approach for the computation of exact answers to natural languages (NL) questions. Answers are extracted directly from the A'-best snippets, which have been identified by a standard Web search engine using NL questions. The core idea of our evolutionary approach to Web question answering is to search for those substrings in the snippets whose contexts are most similar to contexts of already known answers. This context model together with the words mentioned in the NL question are used to evaluate the fitness of answer candidates, which are actually randomly selected substrings from randomly selected sentences of the snippets. New answer candidates are then created by applying specialized operators for crossover and mutation, which either stretch and shrink the substring of an answer , candidate or transpose the span to new sentences. Since we have no predefined notion of patterns, our context alignment methods are very dynamic and strictly data-driven. We assessed our system with seven different datasets of question/answer pairs. The results show that this approach is promising, especially when it deals with specific questions.
机译:我们提出了一种进化的方法来计算自然语言(NL)问题的确切答案。答案是直接从A'最佳代码段中提取的,这些代码段已由标准的Web搜索引擎使用NL问题识别。我们的Web问题解答进化方法的核心思想是在代码片段中搜索上下文与已知答案的上下文最相似的那些子字符串。此上下文模型与NL问题中提到的单词一起用于评估答案候选者的适应性,这些候选者实际上是从摘要的随机选择的句子中随机选择的子字符串。然后通过应用专门的运算符进行交叉和变异来创建新的候选答案,这些运算符可以拉伸和缩小答案的子字符串,候选者或将跨度转置为新句子。由于我们没有预定义的模式概念,因此我们的上下文对齐方法非常动态并且严格由数据驱动。我们用七个不同的问题/答案对数据集评估了我们的系统。结果表明,这种方法很有希望,特别是在处理特定问题时。

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