AUTHOR=Holdgraf Christopher R. , Rieger Jochem W. , Micheli Cristiano , Martin Stephanie , Knight Robert T. , Theunissen Frederic E. TITLE=Encoding and Decoding Models in Cognitive Electrophysiology JOURNAL=Frontiers in Systems Neuroscience VOLUME=11 YEAR=2017 URL=https://www.frontiersin.org/journals/systems-neuroscience/articles/10.3389/fnsys.2017.00061 DOI=10.3389/fnsys.2017.00061 ISSN=1662-5137 ABSTRACT=
Cognitive neuroscience has seen rapid growth in the size and complexity of data recorded from the human brain as well as in the computational tools available to analyze this data. This data explosion has resulted in an increased use of multivariate, model-based methods for asking neuroscience questions, allowing scientists to investigate multiple hypotheses with a single dataset, to use complex, time-varying stimuli, and to study the human brain under more naturalistic conditions. These tools come in the form of “Encoding” models, in which stimulus features are used to model brain activity, and “Decoding” models, in which neural features are used to generated a stimulus output. Here we review the current state of encoding and decoding models in cognitive electrophysiology and provide a practical guide toward conducting experiments and analyses in this emerging field. Our examples focus on using linear models in the study of human language and audition. We show how to calculate auditory receptive fields from natural sounds as well as how to decode neural recordings to predict speech. The paper aims to be a useful tutorial to these approaches, and a practical introduction to using machine learning and applied statistics to build models of neural activity. The data analytic approaches we discuss may also be applied to other sensory modalities, motor systems, and cognitive systems, and we cover some examples in these areas. In addition, a collection of