使用相对权重来改善不平衡文本类别的kNN

Xiaodong Liu, F. Ren, Caixia Yuan
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引用次数: 4

摘要

文本分类技术在自然语言处理中有着广泛的应用。作为最好的文本分类算法之一,kNN在许多应用中得到了广泛的应用。传统的kNN假设训练数据的分布是均匀的,但在很多情况下并非如此。当我们在主题检测和跟踪(TDT)系统中使用kNN时,由于训练数据集的偏差,它的性能不佳。为了克服数据偏差带来的障碍,本文提出了一种利用相对权重来调整kNN权重(RWKNN)的方法。通过对TDT2和TDT3汉语语料库数据的评估,RWKNN在非平衡数据上具有鲁棒性,性能优于传统kNN。
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Use relative weight to improve the kNN for unbalanced text category
The technology of text category is widely used in natural language processing. As one of best text category algorithms, kNN is very popular used in many applications. Traditional kNN assumes that the distribution of training data is even, however, it is not the case for many situations. When we used kNN in our Topic Detection and Tracking (TDT) system, it did not perform well due to the bias of training data set. To overcome the obstacle caused by data bias, this paper proposes an approach which uses relative weight to adjust the weight of kNN (RWKNN). When evaluated on the data of TDT2 and TDT3 Chinese corpus, RWKNN proves to be robust on unbalanced data and yields better performance than the traditional kNN.
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