We adapt the Higher Criticism (HC) goodness-of-fit test to measure the closeness between word-frequency tables. We apply this measure to authorship attribution challenges, where the goal is to identify the author of a document using other documents whose authorship is known. The method is simple yet performs well without handcrafting and tuning; reporting accuracy at the state of the art level in various current challenges. As an inherent side effect, the HC calculation identifies a subset of discriminating words. In practice, the identified words have low variance across documents belonging to a corpus of homogeneous authorship. We conclude that in comparing the similarity of a new document and a corpus of a single author, HC is mostly affected by words characteristic of the author and is relatively unaffected by topic structure.
翻译:我们调整了高级批评性(HC)优异标准,以衡量字频表格之间的近距离。我们将这一措施应用于作者归属挑战,目的是用已知的作者身份的其他文件识别文件作者。这种方法简单,但表现良好,没有手工艺和调试;在当前的各种挑战中,在最新水平上报告准确性。作为一种内在的副作用,HC计算找出了歧视性词语的一个子。在实践中,所查明的词在属于同一作者的文体的文件之间差异不大。我们的结论是,在比较新文件的相似性和单一作者的文体时,HC主要受到作者的文字特征的影响,相对不受主题结构的影响。