将情感和情感分析应用于品牌推文的数字营销

Dua'a Al-Hajjar, A. Z. Syed
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引用次数: 26

摘要

随着数字营销越来越流行,消费者对品牌的看法也在迅速增加。这使得企业很难评估自己的品牌形象,也很难在网上进行产品的数字化营销。我们提出了一种基于词典的方法,从推文中提取情感和情感,用于数字营销目的。我们收集了10个科技品牌的1万条推文:苹果、谷歌、微软、三星、通用电气、IBM、英特尔、Facebook、甲骨文和惠普。我们使用SentiWordNet进行情感分析,同时使用NRC Hashtag Emotion Lexicon进行情感检测。我们将从两个词汇中获得的分数进行比较并合并为每个tweet的一个结果。我们描述了实验的执行过程,并表明情感和情感分析结合方法的准确性比情感分析或情感分析的独立方法得到了提高。
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Applying sentiment and emotion analysis on brand tweets for digital marketing
As digital marketing is becoming more popular, the number of customer views on brands is increasing rapidly. This makes it harder for companies to assess their brand image or digitally market their products on the web. We present a lexicon-based approach to extracting sentiment and emotion from tweets for digital marketing purposes. We collect ten thousand tweets related to ten technology brands: Apple, Google, Microsoft, Samsung, GE, IBM, Intel, Facebook, Oracle and HP. We perform sentiment analysis using SentiWordNet while we detect emotions using the NRC Hashtag Emotion Lexicon. We compare and combine the scores obtained from the two lexicons into one result per tweet. We describe the execution process of our experiment and show that the accuracy of the combined approach of sentiment and emotion analysis is enhanced over the independent approaches of sentiment analysis or emotion analysis.
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