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Novel textual entailment technique for the Arabic language using genetic algorithm

机译:基于遗传算法的阿拉伯语语言的新颖性意外技术

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摘要

This paper presents a textual entailment (TE) model that considers entailment as an optimization problem. The proposed TE model employs a genetic algorithm to derive an optimal Similarity function and correlated entailment judgment threshold. The similarity function is formulated through a linear combination of text similarity measures and weights. Two text similarity measures are considered: cosine and the longest common substring. These text similarity measures are computed for each text pair. The weights represent the importance of the considered text similarity measures for generating an entailment judgment. The weights and correlated judgment thresholds are obtained by the genetic algorithm. Several experiments are conducted using the ArbTED dataset to evaluate the performance of the proposed model. Comparative results demonstrate the superiority of the proposed model. On average, the model achieved a 16% improvement in terms of accuracy. Furthermore, the average recall and precision values were 72.7% and 72.3%, respectively.
机译:本文介绍了一种文本征征(TE)模型,其认为是优化问题。所提出的TE模型采用遗传算法来得出最佳相似性函数和相关的引诱判断阈值。相似函数通过文本相似度测量和权重的线性组合制定。考虑了两个文本相似度措施:余弦和最长的常见基板。每个文本对计算这些文本相似度措施。权重代表了所考虑的文本相似措施的重要性,以产生征必判断。通过遗传算法获得权重和相关判断阈值。使用受加额数据集进行了几个实验,以评估所提出的模型的性能。比较结果证明了所提出的模型的优越性。平均而言,该模型在准确性方面取得了16%的改善。此外,平均召回和精度值分别为72.7%和72.3%。

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