Temporal awareness of changes in afflicted people's needs after East Japan Great Earthquake

T. Hashimoto, T. Kuboyama, B. Chakraborty
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引用次数: 3

Abstract

This paper proposes a time series topic detection method to investigate changes in afflicted people's needs after the East Japan Great Earthquake using latent semantic analysis and singular vectors' pattern similarities. Our target data is a blog about afflicted people's needs provided by a non-profit organization in Tohoku, Japan. The method crawls blog messages, extracts terms, and forms document-term matrix over time. Then, it adopts the latent semantic analysis to extract people's needs as hidden topics from each snapshot matrix. We form time series hidden topic-term matrix as 3rd order tensor, so that changes in topics (people's needs) are detected 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.
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东日本大地震后灾民需求变化的时间意识
本文提出了一种利用潜在语义分析和奇异向量模式相似度的时间序列主题检测方法来研究东日本大地震后受灾人群需求的变化。我们的目标数据是一个由日本东北的一个非营利组织提供的关于受灾人民需求的博客。该方法会随着时间的推移抓取博客消息、提取术语并形成文档术语矩阵。然后,采用潜在语义分析从每个快照矩阵中提取人们的需求作为隐藏主题。我们将时间序列隐藏主题项矩阵形成三阶张量,通过研究隐藏主题之间的时间序列相似性来检测主题(人们的需求)的变化。为了证明该方法的有效性,文中还给出了实验结果。
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