• Title/Summary/Keyword: 모듈성 기반 군집화

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A Reexamination on the Influence of Fine-particle between Districts in Seoul from the Perspective of Information Theory (정보이론 관점에서 본 서울시 지역구간의 미세먼지 영향력 재조명)

  • Lee, Jaekoo;Lee, Taehoon;Yoon, Sungroh
    • KIISE Transactions on Computing Practices
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    • v.21 no.2
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    • pp.109-114
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    • 2015
  • This paper presents a computational model on the transfer of airborne fine particles to analyze the similarities and influences among the 25 districts in Seoul by quantifying a time series data collected from each district. The properties of each district are driven with the model of a time series of the fine particle concentrations, and the calculation of edge-based weights are carried out with the transfer entropies between all pairs of the districts. We applied a modularity-based graph clustering technique to detect the communities among the 25 districts. The result indicates the discovered clusters correspond to a high transfer-entropy group among the communities with geographical adjacency or high in-between traffic volumes. We believe that this approach can be further extended to the discovery of significant flows of other indicators causing environmental pollution.

Question Answering Optimization via Temporal Representation and Data Augmentation of Dynamic Memory Networks (동적 메모리 네트워크의 시간 표현과 데이터 확장을 통한 질의응답 최적화)

  • Han, Dong-Sig;Lee, Chung-Yeon;Zhang, Byoung-Tak
    • Journal of KIISE
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    • v.44 no.1
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    • pp.51-56
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    • 2017
  • The research area for solving question answering (QA) problems using artificial intelligence models is in a methodological transition period, and one such architecture, the dynamic memory network (DMN), is drawing attention for two key attributes: its attention mechanism defined by neural network operations and its modular architecture imitating cognition processes during QA of human. In this paper, we increased accuracy of the inferred answers, by adapting an automatic data augmentation method for lacking amount of training data, and by improving the ability of time perception. The experimental results showed that in the 1K-bAbI tasks, the modified DMN achieves 89.21% accuracy and passes twelve tasks which is 13.58% higher with passing four more tasks, as compared with one implementation of DMN. Additionally, DMN's word embedding vectors form strong clusters after training. Moreover, the number of episodic passes and that of supporting facts shows direct correlation, which affects the performance significantly.