2013
DOI: 10.1007/978-3-319-02753-1_36
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Developing Simplified Chinese Psychological Linguistic Analysis Dictionary for Microblog

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Cited by 140 publications
(112 citation statements)
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“…To describe the linguistic attributes, we leverage a psychological dictionary named "Language Inquiry and Word Count Dictionary" [20]. The simplified Chinese LIWC dictionary [21] is developed by Chinese psychologists and linguists, based on the psycholinguistic dictionary LIWC (http://www.liwc.net), which has been proved to be effective on determining affect in Twitter. It is composed of almost 4500 words and categorized into over 60 categories [20].…”
Section: ) Linguistic Attributesmentioning
confidence: 99%
“…To describe the linguistic attributes, we leverage a psychological dictionary named "Language Inquiry and Word Count Dictionary" [20]. The simplified Chinese LIWC dictionary [21] is developed by Chinese psychologists and linguists, based on the psycholinguistic dictionary LIWC (http://www.liwc.net), which has been proved to be effective on determining affect in Twitter. It is composed of almost 4500 words and categorized into over 60 categories [20].…”
Section: ) Linguistic Attributesmentioning
confidence: 99%
“…The stress-category lexicon is built based on the "Simplified Chinese Language Inquiry and Word Count Dictionary" [9]. It contains 1307 words, which are categorized into four typical types, i.e., physiological, work-related, social and affection-related stress.…”
Section: ) Linguistic Attributesmentioning
confidence: 99%
“…We crawled the 92 Weibo users' data through the Application Programming Interface (API) provided by Sina Weibo. After obtaining the online data of the users, we extracted the features of each user from two aspects: LIWC features (see Gao, Hao, Li, Gao, & Zhu, 2013;Zhao, Jiao, Bai, & Zhu, 2016, for more details) and behavioral features.…”
Section: Measurementmentioning
confidence: 99%