
Statistics Colloquium by Eamon Gara Grady ’23
Wed, May 3rd, 2023
1:10 pm - 1:50 pm
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Sparse Principal Component Analysis and Its Application to Soccer Player Performance Data by Eamon Gara Grady ’23, Statistics Colloquium, Wednesday, May 3, 1:10 – 1:50 pm, North Science Building 114, Wachenheim.
Abstract: Sparse principal component analysis (SPCA) is a dimension reduction technique often applied when working with high-dimensional data. It works by forming orthogonal predictors from linear combinations of features in a dataset as a regular PCA does. It introduces sparsity in the loadings to make the interpretations of principal components easier than that from a regular PCA. In this talk, I will first introduce SPCA, and then discuss an application of SPCA to reduce the dimensionality of soccer players’ attributes derived from their EA Sports FIFA ratings. Then I will discuss how the results of SPCA were used to group like players together with the k-means clustering method.