Multi-Dimensional Data Analysis Platform (MuDAP): A Cognitive Science Data Toolbox

Researchers in cognitive science have long been interested in modeling human perception using statistical methods. This requires maneuvers because these multiple dimensional data are always intertwined with complex inner structures. The previous studies in cognitive sciences commonly applied princip...

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Bibliographic Details
Published inSymmetry (Basel) Vol. 16; no. 4; p. 503
Main Authors Li, Xinlin, Wang, Yiming, Bi, Xiaoyu, Xu, Yalu, Ying, Haojiang, Chen, Yiyang
Format Journal Article
LanguageEnglish
Published Basel MDPI AG 01.04.2024
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ISSN2073-8994
2073-8994
DOI10.3390/sym16040503

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Summary:Researchers in cognitive science have long been interested in modeling human perception using statistical methods. This requires maneuvers because these multiple dimensional data are always intertwined with complex inner structures. The previous studies in cognitive sciences commonly applied principal component analysis (PCA) to truncate data dimensions when dealing with data with multiple dimensions. This is not necessarily because of its merit in terms of mathematical algorithm, but partly because it is easy to conduct with commonly accessible statistical software. On the other hand, dimension reduction might not be the best analysis when modeling data with no more than 20 dimensions. Using state-of-the-art techniques, researchers in various research disciplines (e.g., computer vision) classified data with more than hundreds of dimensions with neural networks and revealed the inner structure of the data. Therefore, it might be more sophisticated to process human perception data directly with neural networks. In this paper, we introduce the multi-dimensional data analysis platform (MuDAP), a powerful toolbox for data analysis in cognitive science. It utilizes artificial intelligence as well as network analysis, an analysis method that takes advantage of data symmetry. With the graphic user interface, a researcher, with or without previous experience, could analyze multiple dimensional data with great ease.
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ISSN:2073-8994
2073-8994
DOI:10.3390/sym16040503