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An effective Decision Support System for social media listening based on cross-source sentiment analysis models

机译:基于跨源情感分析模型的有效社交媒体决策支持系统

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Nowadays, companies and enterprises are more and more incline to exploit the pervasive action of on-line social media, such as Facebook, Twitter and Instagram. Indeed, several promotional and marketing campaigns are carried out by concurrently adopting several social medial channels. These campaigns reach very quickly a wide range of different categories of users, since many people spend most of their time on on-line social media during the day.In this work, a Decision Support System (DSS) is presented, which is able to efficiently support companies and enterprises in managing promotional and marketing campaigns on multiple social media channels. The proposed DSS continuously monitors multiple social channels, by collecting social media users' comments on promotions, products, and services. Then, through the analysis of these data, the DSS estimates the reputation of brands related to specific companies and provides feedbacks about a digital marketing campaign.The core of the proposed DSS is a Sentiment Analysis Engine (SAE), which is able to estimate the users' sentiment in terms of positive, negative or neutral polarity, expressed in a comment. The SAE is based on a machine learning text classification model, which is initially trained by using real data streams coming from different social media platforms specialized in user reviews (e.g., TripAdvisor). Then, the monitoring and the sentiment classification are carried out on the comments continuously extracted from a set of public pages and channels of publicly available social networking platforms (e.g., Facebook, Twitter, and Instagram). This approach is labeled as cross-source sentiment analysis.After some discussions on the design and the implementation of the proposed DSS, some results are shown about the experimentation of the proposed DSS on two scenarios, namely restaurants and consumer electronics online shops. Specifically, first the application of effective sentiment analysis models, created relying on user reviews is discussed: the models achieve accuracies higher than 90%. Then, such models are embedded into the proposed DSS. Finally, the results of a social listening campaign are presented. The campaign was carried out by fusing data streams coming from real social channels of popular companies belonging to the selected scenarios.
机译:如今,公司和企业越来越倾向于利用在线社交媒体(例如Facebook,Twitter和Instagram)的普遍行为。实际上,通过同时采用几种社交媒体渠道进行了几次促销和营销活动。由于许多人白天将大部分时间都花在在线社交媒体上,因此这些广告系列可以很快地覆盖各种各样的用户类别。在这项工作中,我们展示了决策支持系统(DSS),该系统可以有效地支持公司和企业通过多种社交媒体渠道管理促销和营销活动。拟议的DSS通过收集社交媒体用户对促销,产品和服务的评论来连续监视多个社交渠道。然后,通过对这些数据的分析,DSS估算与特定公司相关的品牌的声誉,并提供有关数字营销活动的反馈。拟议的DSS的核心是情感分析引擎(SAE),它能够估算用户在正面,负面或中性方面的情绪,以评论表示。 SAE基于机器学习文本分类模型,该模型最初是通过使用来自于专门针对用户评论的不同社交媒体平台(例如,TripAdvisor)的真实数据流进行训练的。然后,对从一组公共页面和公共可用社交网络平台(例如,Facebook,Twitter和Instagram)的频道连续提取的评论进行监视和情绪分类。这种方法被标记为跨源情感分析。在对拟议的DSS的设计和实现进行了一些讨论之后,显示了有关拟议的DSS在餐厅和消费类电子产品网上商店这两种场景下进行实验的一些结果。具体来说,首先讨论有效情感分析模型的应用,该模型是根据用户评论创建的:这些模型的准确率高于90%。然后,将这些模型嵌入到建议的DSS中。最后,介绍了社交倾听活动的结果。该活动是通过融合来自属于所选场景的热门公司的真实社交渠道的数据流来进行的。

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