Brain informatics : international conference, BI 2018, Arlington, TX, USA, December 7-9, 2018, proceedings. International Conference on Brain Informatics (2018 : Arlington, Tex.)最新文献

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Determining the Optimal Number of MEG Trials: A Machine Learning and Speech Decoding Perspective. 确定MEG试验的最佳次数:机器学习和语音解码的视角。
Debadatta Dash, Paul Ferrari, Saleem Malik, Albert Montillo, Joseph A Maldjian, Jun Wang
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