Other

Basic information

Name HASHIMOTO, Takako
Belonging department
Occupation name
researchmap researcher code
researchmap agency

Title

Temporal Awareness of Needs after East Japan Great Earthquake based on Latent Semantic Analysis and Pattern Similarity

Sole or Joint Author

Joint Author

Date of Issue

2013/07

Conference Presentation(name)

第90回 人工知能基本問題研究会 資料

Summary

This paper proposes a time series topic extraction method to investigate the transitions of people's needs after the East Japan Great Earthquake using latent semantic analysis. Our target data is a blog about afflicted people's needs provided by a non-profit organization in Tohoku, Japan. The method crawls blogmessages, extracts terms, and forms document-term matrix over time. Then, the method adopts the latent semantic analysis to extract people's needs as hidden topics. We recognize time series hidden topic-term matrix as 3rd order tensor, so that needs are detected transitions by investigating time-series similarities between hidden topics. In this paper, to show the effectiveness of our proposed method, we also provide the experimental results.

Subject1

Subject2

Subject3