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A survey on online Stock forum using subspace clustering

机译:使用子空间聚类的在线股票论坛调查

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Financial stock Data Analysis and future prediction in terms of Sentiments is great challenge in the big data research. Among the unlabelled opinion, opinion classification in terms of unsupervised learning algorithm will lead to classification error as data is sparse and high dimensional. To overcome this problem, the sentiment analysis to extract the opinion of each word in the stock data has been proposed. Moreover the data size is large, hence the singular value decomposition to resolve the inconsistent constraints correlating to the large dimensions, and dimensionally reduced feature set is been used. The dimensionally reduced feature set is classified into clusters through employment of Principle component analysis with utilization of the domain knowledge. Cluster data which further inconsistent with the outlier probability can further reduced through subspace clustering. Experimental results prove that the proposed framework outperforms the state of art approaches in terms of precision, recall and Fmeasure.
机译:大数据研究中的金融股票数据分析和未来情绪预测是一个巨大的挑战。在未标注的意见中,由于数据稀疏且维数较大,因此在无监督学习算法的前提下对意见进行分类会导致分类错误。为了克服这个问题,已经提出了情感分析以提取股票数据中每个单词的观点。此外,数据量很大,因此使用奇异值分解来解决与大尺寸相关的不一致约束,并使用了尺寸减小的特征集。通过使用主成分分析并利用领域知识,将维数减少的特征集分类为聚类。可以通过子空间聚类进一步减少与异常值概率不一致的聚类数据。实验结果证明,所提出的框架在精度,召回率和Fmeasure方面均优于最新方法。

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