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Constructing a sentiment analysis model for LibQUAL+ comments

机译:为利比+评论构建情感分析模型

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Purpose-The purpose of this paper is to establish a data mining model for performing sentiment analysis on open-ended qualitative LibQUAL+ comments, providing a further method for year-to-year comparison of user satisfaction, both of the library as a whole and individual topics. Design/methodology/approach-A training set of 514 comments, selected at random from five LibQUAL+ survey responses, was manually reviewed and labeled as having a positive or negative sentiment. Using the open-source RapidMiner data mining platform, those comments provided the framework for creating library-specific positive and negative word vectors to power the sentiment analysis model. A further process was created to help isolate individual topics within the larger comments, allowing formore nuanced sentiment analysis. Findings-Applied to LibQUAL+ comments for a Canadian mid-sized academic research library, the model suggested a fairly even distribution of positive and negative sentiment in overall comments. When filtering comments into affect of service, information control and library as place, the three dimensions' relative polarity mirrored the results of the quantitative LibQUAL+ questions, with highest scores for affect of service and lowest for library as place. Practical implications-The sentiment analysis model provides a complementary tool to the LibQUAL+ quantitative results, allowing for simple, time-efficient, year-to-year analysis of open-ended comments. Furthermore, the process provides the means to isolate specific topics based on specified keywords, allowing individual institutions to tailor results for more in-depth analysis. Originality/value-To best account for library-specific terminology and phrasing, the sentiment model was created using LibQUAL+ open-ended comments as the foundation for the sentiment model's classification process. The process also allows individual topics, chosen to meet individual library needs, to be isolated and independently analyzed, providing more precise examination.
机译:目的 - 本文的目的是建立一个用于对开放式定性利巴+评论进行情感分析的数据挖掘模式,提供了一个进一步的用户满意度比较的方法,这是一个整体和个人话题。设计/方法/方法 - 从五个LibQual +调查响应中随机选择的514个评论培训集,并标记为具有积极或负面情绪。使用开源XXIMMINER数据挖掘平台,这些评论提供了创建图书馆特定的正面和负字向量的框架,以为情绪分析模型供电。创建了进一步的过程,以帮助在更大的评论中隔离各个主题,允许形成含有细致的情绪分析。调查结果 - 适用于加拿大中型学术研究库的利比+评论,该模型建议在整体评论中相当甚至分布积极和负面情绪。将评论过滤为服务,信息控制和库的影响,三维相对极性相对极性镜像定量的利巴+问题的结果,具有最高分数,用于服务的影响以及图书馆的最低限度。实际意义 - 情感分析模型为基布尔+定量结果提供了一个互补的工具,允许对开放式评论进行简单,效率,年度达到的分析。此外,该过程提供了基于指定的关键字隔离特定主题的方法,允许各个机构根据更深入的分析来定制结果。关于图书馆特定术语和措辞的原始性/值 - 最佳帐户,使用LibQual +开放式评论作为情绪模型的分类过程的基础创建了情绪模型。该过程还允许单独的主题,选择满足个别库的需求,待分离和独立地分析,提供更精确的检查。

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