社交媒体使用中的垃圾文本检测:针对社交物联网的监督抽样方法

Haewon Byeon, Sameer Jha, Ismail Keshta, Mohammed Wasim Bhatt, P. Singh, Latika Jindal, T. R. Vijaya Lakshmi
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引用次数: 0

摘要

本文提出了一种基于负选择密度聚类(NSDC-DS)的下采样策略,在对不平衡通信文本进行随机下采样的同时,提高分类器的性能。通过负选择发现自异常增强了传统聚类的效果。检测器和自集分别是样本中心点和待聚类样本;对二者进行异常匹配;NSDC 技术分析样本相似性。为了改进传统的下采样方法,我们使用奈伊夫贝叶斯支持向量机(NBSVM)分类器识别采样通信样本中的垃圾信息,使用主成分分析(PCA)评估样本信息含量,提出改进的PCA-签名有向图(SGD)算法优化模型参数,完成了社交物联网上的半监督通信垃圾文本识别。我们使用了包括非平衡通信文本在内的多个数据集,将改进方法与 NSDC、NSDC-DS、PCA-SGD 和标准模型进行了比较。试验结果表明,改进模型的收敛速度更快、更稳定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spam Text Detection Over Social Media Usage: A Supervised Sampling Approach for the Social Web of Things
A downsampling strategy based on negative selection density clustering (NSDC-DS) is proposed to improve classifier performance while employing random downsampling for unbalanced communication text. The discovery of self-anomalies via negative selection enhances traditional clustering. The detector and self-set are the sample center point and the sample to be clustered, respectively; anomalous matching is performed on the two; and the NSDC technique analyzes sample similarity. To improve on the traditional downsampling method, we use the Naïve Bayes Support Vector Machine (NBSVM) classifier to identify garbage in sampled communication samples, use principal component analysis (PCA) to evaluate sample information content, propose an improved PCA-signed directed graph (SGD) algorithm to optimize model parameters, and complete semisupervised communication spam text recognition over the Social Web of Things. Several datasets, including unbalanced communication text, were used to compare the improved approach against NSDC, NSDC-DS, PCA-SGD, and standard models. According to the trials, the improved model has a quicker and more consistent convergence speed.
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