Classical Statistics and Statistical Learning in Imaging Neuroscience
نویسنده
چکیده
Brain-imaging research has predominantly generated insight by means of classical statistics, including regression-type analyses and null-hypothesis testing using t-test and ANOVA. Throughout recent years, statistical learning methods enjoy increasing popularity especially for applications in rich and complex data, including cross-validated out-of-sample prediction using pattern classification and sparsity-inducing regression. This concept paper discusses the implications of inferential justifications and algorithmic methodologies in common data analysis scenarios in neuroimaging. It is retraced how classical statistics and statistical learning originated from different historical contexts, build on different theoretical foundations, make different assumptions, and evaluate different outcome metrics to permit differently nuanced conclusions. The present considerations should help reduce current confusion between model-driven classical hypothesis testing and data-driven learning algorithms for investigating the brain with imaging techniques.
منابع مشابه
A statistical perspective on data mining
Data mining can be regarded as a collection of methods for drawing inferences from data. The aims of data mining, and some of its methods, overlap with those of classical statistics. However, there are some philosophical and methodological di erences. We examine these di erences, and we describe three approaches to machine learning that have developed largely independently: classical statistics...
متن کاملThe Problem of Thresholding in Small-World Network Analysis
Graph theory deterministically models networks as sets of vertices, which are linked by connections. Such mathematical representation of networks, called graphs are increasingly used in neuroscience to model functional brain networks. It was shown that many forms of structural and functional brain networks have small-world characteristics, thus, constitute networks of dense local and highly eff...
متن کاملWhen Informatics Meets Neuroscience: Software and Statistics for Human Brain Imaging
Human language as one of the most complex systems has fascinated scientists from various fields for decades. Whether we consider language from a point of view of a classical linguistics, psychology, computational linguistics, medicine or neurolinguistics, it keeps bringing up questions such as ”How do we actually comprehend language in our brain?” The most interesting achievements often result ...
متن کاملHighly informative natural scene regions increase microsaccade production during visual scanning.
Classical image statistics, such as contrast, entropy, and the correlation between central and nearby pixel intensities, are thought to guide ocular fixation targeting. However, these statistics are not necessarily task relevant and therefore do not provide a complete picture of the relationship between informativeness and ocular targeting. Moreover, it is not known whether either informativene...
متن کاملInferring Functional Brain States Using Temporal Evolution of Regularized Classifiers
We present a framework for inferring functional brain state from electrophysiological (MEG or EEG) brain signals. Our approach is adapted to the needs of functional brain imaging rather than EEG-based brain-computer interface (BCI). This choice leads to a different set of requirements, in particular to the demand for more robust inference methods and more sophisticated model validation techniqu...
متن کامل