Transfer Learning for P300 Brain-Computer Interfaces by Joint Alignment of Feature Vectors

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dc.contributor.author Altindis, Fatih
dc.contributor.author Banerjee, Antara
dc.contributor.author Phlypo, Ronald
dc.contributor.author Yilmaz, Bulent
dc.contributor.author Congedo, Marco
dc.date.accessioned 2024-04-09T07:13:31Z
dc.date.available 2024-04-09T07:13:31Z
dc.date.issued 2023-10-01
dc.identifier.issn 21682194
dc.identifier.uri http://localhost:8080/xmlui/handle/123456789/3113
dc.description This paper published with affiliation IIT (BHU), Varanasi in open access mode. en_US
dc.description.abstract This article presents a new transfer learning method named group learning, that jointly aligns multiple domains (many-to-many) and an extension named fast alignment that aligns any further domain to previously aligned group of domains (many-to-one). The proposed group alignment algorithm (GALIA) is evaluated on brain-computer interface (BCI) data and optimal hyper-parameter values of the algorithm are studied for classification performance and computational cost. Six publicly available P300 databases comprising 333 sessions from 177 subjects are used. As compared to the conventional subject-specific train/test pipeline, both group learning and fast alignment significantly improve the classification accuracy except for the database with clinical subjects (average improvement: 2.12±1.88%). GALIA utilizes cyclic approximate joint diagonalization (AJD) to find a set of linear transformations, one for each domain, jointly aligning the feature vectors of all domains. Group learning achieves a many-to-many transfer learning without compromising the classification performance on non-clinical BCI data. Fast alignment further extends the group learning for any unseen domains, allowing a many-to-one transfer learning with the same properties. The former method creates a single machine learning model using data from previous subjects and/or sessions, whereas the latter exploits the trained model for an unseen domain requiring no further training of the classifier. en_US
dc.language.iso en en_US
dc.publisher Institute of Electrical and Electronics Engineers Inc. en_US
dc.relation.ispartofseries Institute of Electrical and Electronics Engineers Inc.;27
dc.subject Brain-computer interface (BCI); en_US
dc.subject domain adaptation; en_US
dc.subject electroencephalography (EEG); en_US
dc.subject riemannian geometry; en_US
dc.subject transfer learning en_US
dc.subject Algorithms; en_US
dc.subject Brain-Computer Interfaces; en_US
dc.subject Databases, Factual; en_US
dc.subject Electroencephalography; en_US
dc.subject Humans; en_US
dc.subject Machine Learning en_US
dc.title Transfer Learning for P300 Brain-Computer Interfaces by Joint Alignment of Feature Vectors en_US
dc.type Article en_US


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