Customer language processing: Extended abstract

A. Metzmacher, V. Heinrichs, B. Falk, R. Schmitt
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引用次数: 2

Abstract

The research presented is the first working step towards the goal of developing a domain-independent method for sentiment analysis of German customer feedback in social media. The approach proposes to apply the concept of natural language processing (NLP) to customer language processing (CLP). In this context we hypothesize an indifference in annotator ability in assigning customer reviews of tangible vs. intangible goods and an indifferences within customers' writing styles within their evaluation of these goods. To test these hypotheses, a study was conducted where participants had to assign the sentiment as well as the subject of customer reviews and its evaluative attribute. The results reveal that the inter-rater reliability of annotators does not differ significantly with respect to product groups. However a slight difference with respect to product categories could be observed. Moreover, there occur variations within the inter-rater ability according to the emotional commitment towards products.
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客户语言处理:扩展抽象
这项研究是朝着开发一种独立于领域的方法来分析德国社交媒体客户反馈情绪的目标迈出的第一步。该方法提出将自然语言处理(NLP)的概念应用于客户语言处理(CLP)。在这种情况下,我们假设注释者在分配客户对有形商品和无形商品的评论时的能力无关,以及客户在评估这些商品时的写作风格无关。为了验证这些假设,进行了一项研究,参与者必须分配情绪以及客户评论的主题及其评估属性。结果表明,评价者之间的可靠性没有显著差异相对于产品组。然而,在产品类别方面可以观察到细微的差异。此外,根据对产品的情感承诺,评价者之间的能力也会发生变化。
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