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Introduction to ReviewMiner

Introduction to ReviewMiner. Hongning Wang Department of Computer Science University of Illinois at Urbana-Champaign wang296@Illinois.edu. Introduction. ReviewMiner system is developed based on the work of “Latent Aspect Rating Analysis” published in KDD’10 and KDD’11

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Introduction to ReviewMiner

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  1. Introduction to ReviewMiner Hongning Wang Department of Computer Science University of Illinois at Urbana-Champaign wang296@Illinois.edu

  2. Introduction • ReviewMiner system is developed based on the work of “Latent Aspect Rating Analysis” published in KDD’10 and KDD’11 • Hongning Wang, Yue Lu and Chengxiang Zhai. Latent Aspect Rating Analysis on Review Text Data: A Rating Regression Approach. The 16th ACM SIGKDD Conference on Knowledge Discovery and Data Mining (KDD'2010), p783-792, 2010. • Hongning Wang, Yue Lu and ChengXiang Zhai. Latent Aspect Rating Analysis without Aspect Keyword Supervision. The 17th ACM SIGKDD Conference on Knowledge Discovery and Data Mining (KDD'2011), P618-626, 2011. http://timan100.cs.uiuc.edu:8080/ReviewMiner

  3. Latent Aspect Rating Analysis Aspect Segmentation + Latent Rating Regression Reviews + overall ratings Aspect segments Term Weights Aspect Rating Aspect Weight location:1 amazing:1 walk:1 anywhere:1 0.0 2.9 0.1 0.9 3.9 0.2 room:1 nicely:1 appointed:1 comfortable:1 0.1 1.7 0.1 3.9 0.2 4.8 2.1 1.2 1.7 2.2 0.6 nice:1 accommodating:1 smile:1 friendliness:1 attentiveness:1 5.8 0.6 Boot-stripping method Latent! http://timan100.cs.uiuc.edu:8080/ReviewMiner

  4. Functionalities • Keyword-based item retrieval • E.g., search hotels by name, location, brand • Aspect-based review analysis • Segment review content into aspects • Predict aspect ratings based on overall ratings and review text content • Infer latent aspect weights the reviewer has put over the aspects when generating the review content • Aspect-based item comparison • Predicted aspect rating/weight based quantitative comparison • Text content based qualitative comparsion http://timan100.cs.uiuc.edu:8080/ReviewMiner

  5. A search-oriented interface Search vertical selection panel User registration and profile panel Trending searches Search box (keyword queries) http://timan100.cs.uiuc.edu:8080/ReviewMiner

  6. Search result page Aspect-weight based user profile Spatial result display Search box (keyword queries) Search result list Personalized recommendation results http://timan100.cs.uiuc.edu:8080/ReviewMiner

  7. Highlight, compare and find similar items Supported analysis functions: compare and find similar items regarding to user’s selection Aspect highlights of the selected item http://timan100.cs.uiuc.edu:8080/ReviewMiner

  8. Review analysis page Aspect-based item highlights Review meta-info: reviewers, date, aspect ratings Helpfulness vote Aspect-segmented review content http://timan100.cs.uiuc.edu:8080/ReviewMiner

  9. Aspect-based opinion summarization Analysis type selection: text summary v.s. graphical chart summary. Text summary of aspects http://timan100.cs.uiuc.edu:8080/ReviewMiner

  10. Aspect-based review analysis Analysis type selection: aspect ratings, aspect weights, aspect mentions and aspect summarization. Analysis result display panel (move mouse over the chart to find the text highlights) http://timan100.cs.uiuc.edu:8080/ReviewMiner

  11. Aspect-based item comparison Analysis type selection: aspect ratings, aspect weights, aspect mentions and aspect summarization. Aspect selection panel Analysis result display panel (move mouse over the chart to find the text highlights) http://timan100.cs.uiuc.edu:8080/ReviewMiner

  12. Comments • More search verticals to be added • Our solution of LARA is general and can be easily extended to multiple domains • Restaurant reviews from Yelp.com and electric product reviews from amazon.com will be included soon • Your valuable comments and suggestions • Feel free to send them to wang296@Illinois.edu • I am looking forward to further discussions and collaborations http://timan100.cs.uiuc.edu:8080/ReviewMiner

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