The most of the people have their account on social networks (e.g. Facebook, Vkontakte) where they express their attitude to different situations and events. Facebook provides only the positive mark as a like button and share. However, it is important to know the position of a certain user on posts even though the opinion is negative. Positive, negative and neutral attitude can be extracted from the comments of users. Overall information about positive, negative and neutral opinion can bring the understanding of how people react in a position. Moreover, it is important to know how attitude is changing during the time period. The contribution of the paper is a new method based on sentiment text analysis for detection and prediction negative and positive patterns for Facebook comments which combines (i) real-time sentiment text analysis for pattern discovery and (ii) batch data processing for creating opinion forecasting algorithm. To perform forecast we propose two-steps algorithm where: (i) patterns are clustered using unsupervised clustering techniques and (ii) trend prediction is performed based on finding the nearest pattern from the certain cluster. Case studies show the efficiency and accuracy (Avg. MAE = 0.008) of the proposed method and its practical applicability. Also, we discovered three types of users attitude patterns and described them.
翻译:大多数人在社交网络(如脸书、Vkontakte)上都有自己的账户,他们在社交网络(如脸书、Vkontakte)上表达对不同情况和事件的态度。脸书仅提供正面标记作为类似按钮和共享的类似按钮和共享。然而,必须了解某些用户在文章上的位置,即使观点是否定的。从用户的评论中可以得出积极的、消极的和中立的态度。关于正面的、消极的和中性的观点的总体信息可以使人们了解人们如何在一个位置上作出反应。此外,重要的是了解在这段时间里人们的态度是如何变化的。论文的贡献是一种基于感知文字分析的新方法,用于检测和预测脸书评论的负面和正面模式。这种分析结合了(一) 模式发现模式的实时情绪文本分析,以及(二) 为创建观点预测算法而分批处理数据。为了进行预测,我们建议采用两步算法:(一) 模式采用不受监督的组合技术,和(二) 趋势预测是根据从某个群组中找到最近的模式进行。案例研究显示效率和准确性(Avig.MAe=0.08) 以及所发现的方法和实际适用性。