流数据的作者归属

Sadi Evren Seker, K. Al-Naami, L. Khan
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引用次数: 12

摘要

小说作者的概念出现在流数据源中,如不断发展的社交媒体,是一个迄今尚未解决的问题。现有的作者归属技术处理的是数据集,其中作者的总数在分类器的训练或测试时间内不会改变。这项研究关注的问题是,“如果随着时间的推移,新的作者加入到系统中会发生什么?”此外,在这项研究中,我们也在处理一些作者可能不会留下来的问题,可能会随着时间的推移而消失,或者在一段时间后可能会重新出现。本文提出了流挖掘方法来解决这一问题。测试场景是在现有的IMDB62数据集上创建的,该数据集已经被作者归属算法广泛使用。我们使用自己的洗牌算法来创造小说作者的效果。在流挖掘之前,还采用了词性标注方法和TF-IDF方法进行特征提取。我们采用了双标签方法,其中两个连续的标签被认为是我们方法的新特征。利用本文首次提出的新技术,将流文本数据的作者归属成功率从35%提高到61%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Author attribution on streaming data
The concept of novel authors occurring in streaming data source, such as evolving social media, is an unaddressed problem up until now. Existing author attribution techniques deals with the datasets, where the total number of authors do not change in the training or the testing time of the classifiers. This study focuses on the question, “what happens if new authors are added into the system by time?”. Moreover in this study we are also dealing with the problems that some of the authors may not stay and may disappear by time or may reappear after a while. In this study stream mining approaches are proposed to solve the problem. The test scenarios are created over the existing IMDB62 data set, which is widely used by author attribution algorithms already. We used our own shuffling algorithms to create the effect of novel authors. Also before the stream mining, POS tagging approaches and the TF-IDF methods are applied for the feature extraction. And we have applied bi-tag approach where two consecutive tags are considered as a new feature in our approach. By the help of novel techniques, first time proposed in this paper, the success rate has been increased from 35% to 61% for the authorship attribution on streaming text data.
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