def featuresByLSA(features,ncomponents=100):
svd = TruncatedSVD(n_components=ncomponents)
normalizer = Normalizer(copy=False)
lsa = make_pipeline(svd, normalizer)
dtm_lsa = lsa.fit_transform(features)
return dtm_lsa
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