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Arabic Poetry Authorship Attribution using Machine Learning Techniques

机译:使用机器学习技术的阿拉伯诗歌作者身份归因

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摘要

In this study, authorship attribution in Arabic poetry will be conducted to determine the authorship of a specified text after documents with recognized authorships have been allocated. This work also measures the impact performance of Naive Bayes, Support Vector Machine and Linear discriminant analysis for Arabic poetry authorship attribution using text mining classification. Several features such as lexical features, character features, structural features, poetry features, syntactic features, semantic features and specific word features are utilized as the input data for text mining, using classification algorithms Linear discriminant analysis, Support Vector Machine and Naive Bayes by Arabic Poetry Authorship Attribution Model (APAAM). The dataset of Arabic poetry is divided into two sets: known poetic in training dataset texts and anonymous poetic texts in a test dataset part. In the experiment, a set of 114 random poets from entirely different eras are used. The highest performance accuracy value is 99, 12%; the performance rate at the attribute level is 98.246%; the level of techniques is 92.836%.
机译:在这项研究中,将在分配具有公认作者身份的文件后,对阿拉伯诗歌进行作者身份归属确定特定文本的作者身份。这项工作还使用文本挖掘分类法来评估朴素贝叶斯,支持向量机和线性判别分析对阿拉伯诗歌作者身份归因的影响性能。使用分类算法线性判别分析,支持向量机和阿拉伯语朴素贝叶斯等词法特征,字符特征,结构特征,诗歌特征,句法特征,语义特征和特定词特征等多种特征作为文本挖掘的输入数据诗歌作者身份归因模型(APAAM)。阿拉伯诗歌的数据集分为两组:训练数据集文本中的已知诗歌和测试数据集部分中的匿名诗歌文本。在实验中,使用了一组来自完全不同时代的114名随机诗人。最高的性能精度值为99,即12%;属性级别的性能率为98.246%;技术水平为92.836%。

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