WEKO3
アイテム
{"_buckets": {"deposit": "06847767-685c-4034-b617-21f1a91c0696"}, "_deposit": {"created_by": 1, "id": "45868", "owners": [1], "pid": {"revision_id": 0, "type": "depid", "value": "45868"}, "status": "published"}, "_oai": {"id": "oai:repo.qst.go.jp:00045868", "sets": ["1"]}, "author_link": ["456224", "456226", "456225", "456223"], "item_8_biblio_info_7": {"attribute_name": "書誌情報", "attribute_value_mlt": [{"bibliographicIssueDates": {"bibliographicIssueDate": "2008-10", "bibliographicIssueDateType": "Issued"}, "bibliographicIssueNumber": "8", "bibliographicPageEnd": "1131", "bibliographicPageStart": "1112", "bibliographicVolumeNumber": "21", "bibliographic_titles": [{"bibliographic_title": "Neural Networks"}]}]}, "item_8_description_5": {"attribute_name": "抄録", "attribute_value_mlt": [{"subitem_description": "An increasing number of projects in neuroscience require statistical analysis of high-dimensional data, as, for instance, in the prediction of behavior from neural firing or in the operation of artificial devices from brain recordings in brain-machine interfaces. Although prevalent, classical linear analysis techniques are often numerically fragile in high dimensions due to irrelevant, redundant, and noisy information. We developed a robust Bayesian linear regression algorithm that automatically detects relevant features and excludes irrelevant ones, all in a computationally efficient manner. In comparison with standard linear methods, the new Bayesian method regularizes against overfitting, is computationally efficient (unlike previously proposed variational linear regression methods, is suitable for data sets with large numbers of samples and a very high number of input dimensions) and is easy to use, thus demonstrating its potential as a drop-in replacement for other linear regression techniques. We evaluate our technique on synthetic data sets and on several neurophysiological data sets. For these neurophysiological data sets we address the question of whether EMG data collected from arm movements of monkeys can be faithfully reconstructed from neural activity in motor cortices. Results demonstrate the success of our newly developed method, in comparison with other approaches in the literature, and, from the neurophysiological point of view, confirms recent findings on the organization of the motor cortex. Finally, an incremental, real-time version of our algorithm demonstrates the suitability of our approach for real-time interfaces between brains and machines.", "subitem_description_type": "Abstract"}]}, "item_8_source_id_9": {"attribute_name": "ISSN", "attribute_value_mlt": [{"subitem_source_identifier": "0893-6080", "subitem_source_identifier_type": "ISSN"}]}, "item_access_right": {"attribute_name": "アクセス権", "attribute_value_mlt": [{"subitem_access_right": "metadata only access", "subitem_access_right_uri": "http://purl.org/coar/access_right/c_14cb"}]}, "item_creator": {"attribute_name": "著者", "attribute_type": "creator", "attribute_value_mlt": [{"creatorNames": [{"creatorName": "Ting, Jo-Anne"}], "nameIdentifiers": [{"nameIdentifier": "456223", "nameIdentifierScheme": "WEKO"}]}, {"creatorNames": [{"creatorName": "Yamamoto, Kenji"}], "nameIdentifiers": [{"nameIdentifier": "456224", "nameIdentifierScheme": "WEKO"}]}, {"creatorNames": [{"creatorName": "et.al"}], "nameIdentifiers": [{"nameIdentifier": "456225", "nameIdentifierScheme": "WEKO"}]}, {"creatorNames": [{"creatorName": "山本 憲司", "creatorNameLang": "en"}], "nameIdentifiers": [{"nameIdentifier": "456226", "nameIdentifierScheme": "WEKO"}]}]}, "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": "journal article", "resourceuri": "http://purl.org/coar/resource_type/c_6501"}]}, "item_title": "Variational bayesian least squares: An application to brain-machine interface data", "item_titles": {"attribute_name": "タイトル", "attribute_value_mlt": [{"subitem_title": "Variational bayesian least squares: An application to brain-machine interface data"}]}, "item_type_id": "8", "owner": "1", "path": ["1"], "permalink_uri": "https://repo.qst.go.jp/records/45868", "pubdate": {"attribute_name": "公開日", "attribute_value": "2010-07-28"}, "publish_date": "2010-07-28", "publish_status": "0", "recid": "45868", "relation": {}, "relation_version_is_last": true, "title": ["Variational bayesian least squares: An application to brain-machine interface data"], "weko_shared_id": -1}
Variational bayesian least squares: An application to brain-machine interface data
https://repo.qst.go.jp/records/45868
https://repo.qst.go.jp/records/458686271c669-9ec1-4510-8a87-5c05dd3e02ea
Item type | 学術雑誌論文 / Journal Article(1) | |||||
---|---|---|---|---|---|---|
公開日 | 2010-07-28 | |||||
タイトル | ||||||
タイトル | Variational bayesian least squares: An application to brain-machine interface data | |||||
言語 | ||||||
言語 | eng | |||||
資源タイプ | ||||||
資源タイプ識別子 | http://purl.org/coar/resource_type/c_6501 | |||||
資源タイプ | journal article | |||||
アクセス権 | ||||||
アクセス権 | metadata only access | |||||
アクセス権URI | http://purl.org/coar/access_right/c_14cb | |||||
著者 |
Ting, Jo-Anne
× Ting, Jo-Anne× Yamamoto, Kenji× et.al× 山本 憲司 |
|||||
抄録 | ||||||
内容記述タイプ | Abstract | |||||
内容記述 | An increasing number of projects in neuroscience require statistical analysis of high-dimensional data, as, for instance, in the prediction of behavior from neural firing or in the operation of artificial devices from brain recordings in brain-machine interfaces. Although prevalent, classical linear analysis techniques are often numerically fragile in high dimensions due to irrelevant, redundant, and noisy information. We developed a robust Bayesian linear regression algorithm that automatically detects relevant features and excludes irrelevant ones, all in a computationally efficient manner. In comparison with standard linear methods, the new Bayesian method regularizes against overfitting, is computationally efficient (unlike previously proposed variational linear regression methods, is suitable for data sets with large numbers of samples and a very high number of input dimensions) and is easy to use, thus demonstrating its potential as a drop-in replacement for other linear regression techniques. We evaluate our technique on synthetic data sets and on several neurophysiological data sets. For these neurophysiological data sets we address the question of whether EMG data collected from arm movements of monkeys can be faithfully reconstructed from neural activity in motor cortices. Results demonstrate the success of our newly developed method, in comparison with other approaches in the literature, and, from the neurophysiological point of view, confirms recent findings on the organization of the motor cortex. Finally, an incremental, real-time version of our algorithm demonstrates the suitability of our approach for real-time interfaces between brains and machines. | |||||
書誌情報 |
Neural Networks 巻 21, 号 8, p. 1112-1131, 発行日 2008-10 |
|||||
ISSN | ||||||
収録物識別子タイプ | ISSN | |||||
収録物識別子 | 0893-6080 |