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Recognition of Higher-Order Relations among Features in Textual Cases Using Random Indexing

机译:使用随机索引识别文本案例中特征之间的高阶关系

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We envisage retrieval in textual case-based reasoning (TCBR) as an instance of abductive reasoning. The two main subtasks underlying abductive reasoning are 'hypotheses generation' where plausible case hypotheses are generated, and 'hypothesis testing' where the best hypothesis is selected among these in sequel. The central idea behind the presented two-stage retrieval model for TCBR is that recall relies on lexical equality of features in the cases while recognition requires mining higher order semantic relations among features. The proposed account of recognition relies on a special representation called random indexing, and applies a method that simultaneously performs an implicit dimension reduction and discovers higher order relations among features based on their meanings that can be learned incrementally. Hence, similarity assessment in recall is computationally less expensive and is applied on the whole case base while in recognition a computationally more expensive method is employed but only on the case hypotheses pool generated by recall. It is shown that the two-stage model gives promising results.
机译:我们设想以案文为基础的推理(TCBR)作为归纳推理的实例进行检索。归纳推理所基于的两个主要子任务是:“假设生成”(产生合理的案例假设)和“假设检验”,在其中选择最佳假设。提出的用于TCBR的两阶段检索模型背后的中心思想是,召回依赖于案例中特征的词汇相等性,而识别则需要挖掘特征之间的更高阶语义关系。提出的识别方法依赖于一种称为随机索引的特殊表示形式,并应用了一种方法,该方法可以同时执行隐式降维,并根据可以逐步学习的含义来发现特征之间的高级关系。因此,召回中的相似性评估在计算上较便宜,并且在整个案例基础上应用,而在识别中,采用计算上更昂贵的方法,但仅在由召回生成的案例假设池上。结果表明,两阶段模型给出了令人满意的结果。

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