英文摘要 |
"Automated analysis of natural language in its daily use has shown to be effective in capturing psychological characteristics in the literature. Linguistic Inquiry and Word Count (LIWC), developed by Pennebaker and his research team, is one of the most commonly used text analysis tools in the social sciences. The essential assumption of LIWC is that the frequencies of word usage in certain categories serve as language markers that index individuals’ inner thoughts and psychological processes. LIWC contains two parts, the computer software and the dictionary. The computer software is used to calcu-late the frequency of words in each category. The dictionary is the LIWC key classifying words into categories. LIWC2015 is the latest dictionary, and is based on a significant revision of its predecessor, the LIWC2007 dictionary. The aim of the current study is to develop a corresponding Chinese version of the LIWC2015 dictionary (CLIWC2015) and demonstrate its reliability and validity.
Based on the Chinese LIWC 2007 dictionary, we revised CLIWC2015 by adding and deleting corresponding categories of the LIWC2015 dictionary. We described the details of the process in Study 1. There is a total of 10,795 words belonging to 79 categories in CLIWC2015, including 25 linguistic process categories and 54 psychological process categories. Study 2 collected 100 texts from blog posts on various topics. The average total word count in each post was 1,290 in Study 2. To calculate the reliability, sentences in each text were ordered first, and then odd- and even-numbered sen-tences were grouped into two subtexts. LIWC indices were calculated for each subtext, and then correlation coefficients between the corre-sponding subtexts for each language category were used for reliabil-ity analyses. Results showed that all word categories demonstrated strong correlation effects except one punctuation category which cal-culated the frequency of the dashes usage. One possible explanation is that dashes is not a commonly used punctuation mark in the blog posts which could have lowered the reliability. To examine the valid-ity, study 3 collected 100 posts from the Ptt bulletin board system, 50 of which were from the “hate” board, and the rest were from the “sad” board. The average total word count in each post was 164 in Study 3. The two sets’ linguistic features were compared. Consistent with our hypotheses, “hate” board posts used significantly more anger, swear and netspeak words, and exclamation marks. In contrast, “sad” board posts used significantly more first-personal singular pronouns, sad, anxiety and cognitive words, and higher cognitive complexity words. Across studies 2 and 3, our findings supported the reliability and validity of the CLIWC2015 well.
Unlike traditional content analysis, which requires a great deal of time and effort, one of the most important strengths of LIWC is the ability to analyze huge text files rapidly. Recently, more and more research has applied LIWC to analyze big data. In the last part of this article, we also discussed the implications of using CLIWC2015 and its applications in Chinese culture and big data analytics." |