An Unbalanced Emotion Classification Method for Interactive Texts Based on Multiple-Domain Instance Transfer

Q3 Engineering
F. Tian, Kuo-Min Chao, F. Wu, Q. Zheng, P. Gao
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引用次数: 1

Abstract

A data level sampling method of target dataset-oriented instance transfer is proposed to solve the problem that the characteristics of interactive texts such as short sentences,missing parts of sentences and unbalanced class distribution in multiple-domains result in difficulties of high dimension,sparse eigenvalue in feature space and lack of positive instances.A function is employed to choose features for evaluating the instance similarity between source and target datasets.The function calculates the sum of the information gains of Top-N common features of these two datasets and their proportions in the sum.Moreover,a homogenization processing method is presented for feature spaces of the target dataset and the source dataset to overcome the feature spaces inconsistency between these two datasets.A method for selecting and transferring instances from a domain of source dataset to the corresponding one of target dataset is adopted to solve the problem of unbalanced class distribution in multiple domains.Experimental results show that the proposed method effectively alleviates the unbalanced problem in target dataset.The proposed method running with four classic classification methods,i.e.support vector machine,random forest,naive Bayes,and random committee,results in an 11.3%improvement in average of weighted receiver operating characteristic curve(ROC).
基于多域实例转移的交互式文本不平衡情感分类方法
针对交互式文本的短句、缺句和多域类分布不平衡等特点导致的特征空间高维、特征值稀疏和缺少正实例等问题,提出了一种面向目标数据集的数据级采样方法。利用函数选择特征来评估源数据集和目标数据集之间的实例相似性。该函数计算这两个数据集Top-N个共同特征的信息增益之和及其在总和中的比例。此外,针对目标数据集和源数据集特征空间不一致的问题,提出了一种特征空间同质化处理方法。为了解决多领域类分布不平衡的问题,采用了一种从源数据集的一个领域选择实例并将实例转移到目标数据集的相应领域的方法。实验结果表明,该方法有效地缓解了目标数据集的不平衡问题。该方法与四种经典分类方法(即:采用支持向量机、随机森林、朴素贝叶斯和随机委员会方法,加权受试者工作特征曲线(ROC)均值提高11.3%。
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CiteScore
1.70
自引率
0.00%
发文量
25
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