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検診結果ビッグデータを用いた構造適応型Deep Belief Networkの癌予測システムと知識発見
https://pu-hiroshima.repo.nii.ac.jp/records/1442
https://pu-hiroshima.repo.nii.ac.jp/records/144203bf1514-84bd-47a0-942b-b0bcc3c8318d
名前 / ファイル | ライセンス | アクション |
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IchimuraT071.pdf (305.8 kB)
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Item type | 会議発表論文 / Conference Paper(1) | |||||||||||
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公開日 | 2023-04-18 | |||||||||||
タイトル | ||||||||||||
言語 | ja | |||||||||||
タイトル | 検診結果ビッグデータを用いた構造適応型Deep Belief Networkの癌予測システムと知識発見 | |||||||||||
タイトル | ||||||||||||
言語 | en | |||||||||||
タイトル | Cancer Prediction of Medical Examination Data and Its Knowledge Extraction by Adaptive Structural Learning of Deep Belief Network | |||||||||||
言語 | ||||||||||||
言語 | jpn | |||||||||||
資源タイプ | ||||||||||||
資源タイプ識別子 | http://purl.org/coar/resource_type/c_5794 | |||||||||||
資源タイプ | conference paper | |||||||||||
著者 |
鎌田, 真
× 鎌田, 真× 市村, 匠× 原田, 俊英
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抄録 | ||||||||||||
内容記述タイプ | Abstract | |||||||||||
内容記述 | Abstract?Deep Learning has a hierarchical network architecture to represent the complicated feature of in-put patterns. We have developed the adaptive structure learning method of Deep Belief Network (DBN) that can discover an optimal number of hidden neurons for given input data in a Restricted Boltzmann Machine (RBM) by neuron generation-annihilation algorithm, and hidden layers in DBN. The proposed adaptive structure DBN was applied to the comprehensive medical examination data for the cancer prediction. The prediction system shows the highest classi?cation accuracy among the traditional DBN. In this paper, the explicit knowledge with respect to the relation between input and output patterns was extracted from the trained DBN network by C4.5. Some characteristics extracted in the form of If-Then rules to ?nd an initial cancer were reported in this paper. | |||||||||||
言語 | en | |||||||||||
内容記述 | ||||||||||||
内容記述タイプ | Other | |||||||||||
内容記述 | 開催日:平成30年7月28日 会場:広島工業大学 | |||||||||||
書誌情報 |
2018 IEEE SMC Hiroshima Chapter若手研究会講演論文集 p. 63-69, 発行日 2018 |
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出版者 | ||||||||||||
出版者 | IEEE SMC Hiroshima Chapter | |||||||||||
フォーマット | ||||||||||||
内容記述タイプ | Other | |||||||||||
内容記述 | application/pdf | |||||||||||
著者版フラグ | ||||||||||||
出版タイプ | VoR | |||||||||||
出版タイプResource | http://purl.org/coar/version/c_970fb48d4fbd8a85 |