Albanian Authorship Attribution Model

Arta Misini, A. Kadriu, Ercan Canhasi
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引用次数: 1

Abstract

Authorship attribution (AA) is a subfield of NLP that analyzes the author's prior works to determine who wrote a text based on its features. Each natural language has its characteristics, just like every author's unique writing style. This study aims to conduct an in-depth comparison of several AA machine-learning techniques. The specially created Albanian corpus (A3C) and the English dataset (Reuters C50) have been used in the experiments. Using n-grams, we perform character-level and word-level analyses of the text to represent the author's writing style. We use five different classification algorithms to train the AA models. The TF-IDF feature vector is used as input to the models. Various experiments were conducted on the corpora. The most accurate results were obtained using word n-grams after stopword removal. The SVM algorithm performed best on the A3C dataset (Albanian). We get a 95% F1 score using SVM. On the C50 dataset (English), the SVM classifier achieved an 83% F1 score. Experiments have provided evidence of the models' robust performance on the AA corpora.
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阿尔巴尼亚作者归因模型
作者归属(AA)是NLP的一个子领域,它分析作者之前的作品,根据其特征确定谁写了一个文本。每种自然语言都有自己的特点,就像每个作家都有自己独特的写作风格一样。本研究旨在对几种AA机器学习技术进行深入比较。专门创建的阿尔巴尼亚语语料库(A3C)和英语数据集(路透社C50)已在实验中使用。使用n-grams,我们对文本进行字符级和单词级分析,以表示作者的写作风格。我们使用五种不同的分类算法来训练AA模型。TF-IDF特征向量被用作模型的输入。对语料库进行了各种实验。去除停止词后,使用单词n-grams获得最准确的结果。SVM算法在A3C数据集(阿尔巴尼亚语)上表现最好。我们使用SVM得到95%的F1分数。在C50数据集(英语)上,SVM分类器获得了83%的F1分数。实验证明了该模型在AA语料库上的鲁棒性。
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