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Data Analysis and Knowledge Discovery  2019, Vol. 3 Issue (7): 23-33    DOI: 10.11925/infotech.2096-3467.2018.0898
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Matching Book Reviews and Essential Sentiment Lexicons with Chinese Word Segmenters
Zhongxi You1,2(),Weina Hua1,Xuelian Pan1
1(School of Information Management, Nanjing University, Nanjing 210023, China)
2(School of Education Science, Nantong University, Nantong 226007, China)
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Abstract  

[Objective] This paper aims to compare the impacts of Chinese word segmenters on the degree of matching between the corpus and the sentiment lexicons. [Methods] We used six Chinese segmenters to process the self-built corpus of book reviews, which were also filtered with four Sentiment Lexicons. Then, we calculated the coverage and the matchings of corpus to each sentiment lexicon, the negative word list and the degree word list. Finally, we computed the ratio of neutral corpus and low-frequency words to the lexicons. [Results] For different sentiment lexicons, the segmenters yielded various results in corpus-lexicon matching, proportion of low-frequency in lexicons, as well as proportion of neutral part in corpus. [Limitations] The corpus size needs to be expanded, and the sentence-level and rule-based testing need to be added. [Conclusions] The word segmenter has significant impacts on the matching between the corpus and sentiment lexicons.

Key wordsChinese Word Segmenter      Sentiment Lexicon      Sentiment Analysis     
Received: 13 August 2018      Published: 06 September 2019
ZTFLH:  TP391 G35  
Corresponding Authors: Zhongxi You     E-mail: dafuh@163.com

Cite this article:

Zhongxi You,Weina Hua,Xuelian Pan. Matching Book Reviews and Essential Sentiment Lexicons with Chinese Word Segmenters. Data Analysis and Knowledge Discovery, 2019, 3(7): 23-33.

URL:

https://manu44.magtech.com.cn/Jwk_infotech_wk3/EN/10.11925/infotech.2096-3467.2018.0898     OR     https://manu44.magtech.com.cn/Jwk_infotech_wk3/EN/Y2019/V3/I7/23

分词器 全称 版本 URL
NLPIR ICTCLAS/NLPIR汉语分词系统 2015 http://ictclas.nlpir.org/
Jieba “结巴”中文分词 0.39 https://github.com/fxsjy/jieba
HITLTP* 哈尔滨工业大学语言技术平台 3.4.0 https://www.ltp-cloud.com/
THULAC THU Lexical Analyzer for Chinese 2017 http://thulac.thunlp.org/
HanLP 汉语言处理包 1.6.4 https://github.com/hankcs/HanLP
SFNLP* Stanford NLP Chinese Word Segmenter 3.9.1 https://nlp.stanford.edu/software/segmenter.shtml
名称 极性 词数 合计数 重叠词数
HowNet
http://www.keenage.com/
Positive 4 528 8 746 102
Negative 4 320
NTUSD
http://academiasinicanlplab.github.io/
Positive 2 647 10 339 49
Negative 7 741
DLUTEO
http://ir.dlut.edu.cn/
Positive 13 505 27 351 20
Negative 13 866
TUHLJ
http://nlp.csai.tsinghua.edu.cn/site2/
Positive 5 567 10 034 1
Negative 4 468
词典 NLPIR Jieba HITLTP THULAC HanLP SFNLP
HowNet 62.76 80.18 73.63 75.22 72.74 77.87
NTUSD 40.35 51.52 48.37 46.82 45.99 54.44
DLUTEO 39.24 53.46 46.74 51.10 45.67 48.96
THULJ 71.80 84.02 82.28 81.73 78.81 83.21
总体 38.20 52.44 46.73 49.35 45.00 49.96
词典 NLPIR Jieba HITLTP THULAC HanLP SFNLP
HowNet 12.35 3.77 6.85 6.52 7.12 2.24
NTUSD 12.10 4.91 6.15 7.86 7.56 5.10
DLUTEO 3.23 0.35 1.58 1.52 0.48 0.14
THULJ 1.89 -1.40 0.44 0.26 -1.02 -0.52
总体 8.26 5.26 6.04 6.98 5.65 3.82
词典 NLPIR Jieba HITLTP THULAC HanLP SFNLP
HowNet 9.30 4.48 7.04 6.36 4.91 6.80
NTUSD 1.14 0.28 0.65 1.30 0.41 0.59
DLUTEO 7.87 4.27 6.33 5.37 4.65 6.20
THULJ 5.99 3.48 4.46 4.67 3.88 4.37
总体 6.46 3.52 5.17 4.64 3.81 5.07
词典 NLPIR Jieba HITLTP THULAC HanLP SFNLP
HowNet -3.62 -0.11 -1.78 -1.37 -0.31 0.64
NTUSD -0.73 -0.21 -0.51 -0.99 -0.19 -0.20
DLUTEO -2.65 -0.80 -1.72 -1.49 -1.01 -0.75
THULJ -4.50 -1.70 -2.78 -2.44 -2.07 -2.22
总体 -1.03 0.04 -0.41 -0.48 -0.03 0.44
NLPIR Jieba HITLTP THULAC HanLP SFNLP
HowNet 9.95 18.34 19.67 19.84 13.91 20.79
NTUSD 3.79 9.69 12.64 12.23 5.78 13.01
DLUTEO 14.98 26.27 24.67 28.41 19.08 24.95
THULJ 11.52 17.95 19.50 20.64 14.31 17.66
总体 13.50 24.40 24.41 26.97 17.57 24.48
词典 NLPIR Jieba HITLTP THULAC HanLP SFNLP
HowNet -0.47 -4.59 -4.39 -4.25 -2.78 -4.81
NTUSD -2.13 -7.15 -9.51 -8.59 -4.05 -6.32
DLUTEO -0.70 -1.71 -2.67 -2.44 -2.49 -2.67
THULJ 0.45 0.47 -0.39 0.19 -0.35 -0.07
总体 0.67 -0.91 0.56 -1.81 -0.80 -1.88
NLPIR Jieba HITLTP THULAC HanLP SFNLP
否定词 89.74 97.44 89.74 61.54 94.87 100.00
程度副词 78.97 90.65 85.05 78.50 84.58 93.93
词典 NLPIR Jieba HITLTP THULAC HanLP SFNLP
HowNet 31.64 35.39 33.77 32.45 33.69 35.13
NTUSD 36.16 35.46 36.22 38.32 34.85 35.95
DLUTEO 34.49 34.29 34.46 37.74 34.21 34.70
THULJ 33.64 34.39 33.56 36.73 33.98 33.98
总体 16.86 18.17 17.84 18.74 16.91 18.43
词典 NLPIR Jieba HITLTP THULAC HanLP SFNLP
HowNet -25.54 -26.15 -27.62 -20.80 -26.16 -26.47
NTUSD -16.05 -14.02 -16.09 -17.50 -14.02 -14.60
DLUTEO -24.35 -23.14 -24.33 -22.99 -23.59 -24.22
THULJ -26.95 -26.34 -26.83 -26.06 -26.36 -26.64
总体 -21.68 -21.24 -22.99 -19.99 -21.04 -21.49
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