Decoding and encoding, including machine learning and receptive fields.
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M/EEG signal decomposition using the Common Spatial Patterns (CSP). |
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Transformer to compute event-matched spatial filters. |
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Estimator to filter RtEpochs. |
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Compute and store patterns from linear models. |
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Compute power spectral density (PSD) using a multi-taper method. |
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Standardize channel data. |
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Estimator to filter data array along the last dimension. |
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Time frequency transformer. |
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Use unsupervised spatial filtering across time and samples. |
Transform n-dimensional array into 2D array of n_samples by n_features. |
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Fit a receptive field model. |
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Ridge regression of data with time delays. |
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Search Light. |
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Generalization Light. |
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Implementation of the SPoC spatial filtering. |
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M/EEG signal decomposition using the Spatio-Spectral Decomposition (SSD). |
Functions that assist with decoding and model fitting:
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Compute event-matched spatial filter on epochs. |
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Evaluate a score by cross-validation. |
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Retrieve the coefficients of an estimator ending with a Linear Model. |