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  "Title": "A Toolbox for Linear Discriminant Analysis with Penalties",
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  "Description": "Integrates several popular high-dimensional methods based\non Linear Discriminant Analysis (LDA) and provides a\ncomprehensive and user-friendly toolbox for linear,\nsemi-parametric and tensor-variate classification as mentioned\nin Yuqing Pan, Qing Mai and Xin Zhang (2019)\n<arXiv:1904.03469>. Functions are included for covariate\nadjustment, model fitting, cross validation and prediction.",
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