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Parameter Selection in Mutual Information-Based Feature Selection in Automated Diagnosis of Multiple Epilepsies Using Scalp EEG.

, , , , , , и . PRNI, стр. 45-48. IEEE Computer Society, (2012)

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Multimodal diagnosis of epilepsy using conditional dependence and multiple imputation., , , , , , , , , и 8 other автор(ы). PRNI, стр. 1-4. IEEE, (2014)Non-negative matrix factorization of multimodal MRI, fMRI and phenotypic data reveals differential changes in default mode subnetworks in ADHD., , , , , , , , и . NeuroImage, (2014)Cognitive and neurodevelopmental benefits of extended formula-feeding in infants: Re: Deoni et al 2013., и . NeuroImage, (2014)Balancing Clinical and Pathologic Relevance in the Machine Learning Diagnosis of Epilepsy., , , , , , , , , и 2 other автор(ы). PRNI, стр. 86-89. IEEE, (2013)Feature Fallacy: Complications with Interpreting Linear Decoding Weights in fMRI., и . Explainable AI, том 11700 из Lecture Notes in Computer Science, Springer, (2019)Parameter Selection in Mutual Information-Based Feature Selection in Automated Diagnosis of Multiple Epilepsies Using Scalp EEG., , , , , , и . PRNI, стр. 45-48. IEEE Computer Society, (2012)Reducing Clinical Trial Costs by Detecting and Measuring the Placebo Effect and Treatment Effect Using Brain Imaging., и . MMVR, том 184 из Studies in Health Technology and Informatics, стр. 6-12. IOS Press, (2013)Real-Time Functional MRI Classification of Brain States Using Markov-SVM Hybrid Models: Peering Inside the rt-fMRI Black Box., , , , и . MLINI, том 7263 из Lecture Notes in Computer Science, стр. 242-255. Springer, (2011)