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TY - ICOMM
T1 - Your Labels and Data are Noisy? LASSO The Traitors!
A1 - Borchers, Oliver
A1 - Ringel, Daniel M.
Y1 - 2020///
JF - Towards Data Science
UR - https://medium.com/@oliverbor/lasso-the-traitors-dd33ea5942bc
N2 - This article develops the LASSO The Traitors (LTT) method. LTT filters out noisy observations from a dataset based on an exogenous performance metric. LTT significantly improves the performance of estimators based on the cleaned dataset. LTT is fast, easily applicable, and task agnostic.
ER -
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