{"created":"2023-07-27T06:24:30.930712+00:00","id":7450,"links":{},"metadata":{"_buckets":{"deposit":"e04303e9-0392-4e7e-80a0-a52433abecd5"},"_deposit":{"created_by":3,"id":"7450","owners":[3],"pid":{"revision_id":0,"type":"depid","value":"7450"},"status":"published"},"_oai":{"id":"oai:kanazawa-u.repo.nii.ac.jp:00007450","sets":["934:935:936"]},"author_link":["9867","353"],"item_8_biblio_info_8":{"attribute_name":"書誌情報","attribute_value_mlt":[{"bibliographicIssueDates":{"bibliographicIssueDate":"1996-06-01","bibliographicIssueDateType":"Issued"},"bibliographicPageEnd":"1296","bibliographicPageStart":"1291","bibliographicVolumeNumber":"2","bibliographic_titles":[{"bibliographic_title":"IEEE International Conference on Neural Networks - Conference Proceedings"}]}]},"item_8_description_21":{"attribute_name":"抄録","attribute_value_mlt":[{"subitem_description":"In this paper, probabilistic memory capacity of recurrent neural networks(RNNs) is investigated. This probabilistic capacity is determined uniquely if the network architecture and the number of patterns to be memorized are fixed. It is independent from a learning method and the network dynamics. It provides the upper bound of the memory capacity by any learning algorithms in memorizing random patterns. It is assumed that the network consists of N units, which take two states. Thus, the total number of patterns is the Nth power of 2. The probabilities are obtained by discriminations whether the connection weights, which can store random M patterns at equilibrium states, exist or not. A theoretical way for this purpose is derived, and actual calculation is executed by the Monte Carlo method. The probabilistic memory capacity is very important in applying the RNNs to real fields, and in evaluating goodness of learning algorithms. As an example of a learning algorithm, the improved error correction learning is investigated, and its convergence probabilities are compared with the upper bound. A linear programming method can be effectively applied to this numerical analysis.","subitem_description_type":"Abstract"}]},"item_8_description_5":{"attribute_name":"提供者所属","attribute_value_mlt":[{"subitem_description":"金沢大学理工研究域電子情報学系","subitem_description_type":"Other"}]},"item_8_publisher_17":{"attribute_name":"出版者","attribute_value_mlt":[{"subitem_publisher":"IEEE(Institute of Electrical and Electronics Engineers)"}]},"item_8_source_id_9":{"attribute_name":"ISSN","attribute_value_mlt":[{"subitem_source_identifier":"1098-7576","subitem_source_identifier_type":"ISSN"}]},"item_8_version_type_25":{"attribute_name":"著者版フラグ","attribute_value_mlt":[{"subitem_version_resource":"http://purl.org/coar/version/c_970fb48d4fbd8a85","subitem_version_type":"VoR"}]},"item_creator":{"attribute_name":"著者","attribute_type":"creator","attribute_value_mlt":[{"creatorNames":[{"creatorName":"Miyoshi, Seiji"}],"nameIdentifiers":[{}]},{"creatorNames":[{"creatorName":"Nakayama, Kenji"}],"nameIdentifiers":[{},{},{}]}]},"item_files":{"attribute_name":"ファイル情報","attribute_type":"file","attribute_value_mlt":[{"accessrole":"open_date","date":[{"dateType":"Available","dateValue":"2017-10-03"}],"displaytype":"detail","filename":"TE-PR-NAKAYAMA-K-1291.pdf","filesize":[{"value":"748.1 kB"}],"format":"application/pdf","licensetype":"license_note","mimetype":"application/pdf","url":{"label":"TE-PR-NAKAYAMA-K-1291.pdf","url":"https://kanazawa-u.repo.nii.ac.jp/record/7450/files/TE-PR-NAKAYAMA-K-1291.pdf"},"version_id":"fa84ac67-a317-4da0-ab67-deb017f21459"}]},"item_language":{"attribute_name":"言語","attribute_value_mlt":[{"subitem_language":"eng"}]},"item_resource_type":{"attribute_name":"資源タイプ","attribute_value_mlt":[{"resourcetype":"conference paper","resourceuri":"http://purl.org/coar/resource_type/c_5794"}]},"item_title":"Probabilistic memory capacity of recurrent neural networks","item_titles":{"attribute_name":"タイトル","attribute_value_mlt":[{"subitem_title":"Probabilistic memory capacity of recurrent neural networks"}]},"item_type_id":"8","owner":"3","path":["936"],"pubdate":{"attribute_name":"公開日","attribute_value":"2017-10-03"},"publish_date":"2017-10-03","publish_status":"0","recid":"7450","relation_version_is_last":true,"title":["Probabilistic memory capacity of recurrent neural networks"],"weko_creator_id":"3","weko_shared_id":-1},"updated":"2023-07-28T02:23:26.820639+00:00"}