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Vandelay Industries ! Nonlinear blend. Qualifying RMSE: 0.8664
OfADifferentKind mixture. Qualifying RMSE 0.8737
A nonlinear blend of RBM, SVD, KNN & other algorithms. It is now being used as part of Vandelay Industries
03.005_004
008_008
008_064
11
21
22
328-g2
328-g4
1000
d1.005_004
e80i80edf
kl_016_080
Single (not Bellkor) integrated model, using most known effects. Base:128f SVD+.
lm2gedate
lm2rbm21
m600
p__0004_0512
rbm21
rbm21c
rbm24amf
A logistic version of my integrated model.
50 predictor blend
probe blend for my .8689 submission
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This is an RBM with some date effects and a neighborhood-style post processor.
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256 feature integrated model
Single model result
My blend of SVD variants, RBM variants, plus custom models.
another result based on "adifferent 0.870968"
svd++ 100
Conditional factored RBM 1000-100
mainly based on "adifferent 0.870968" again
CF RBM 1000-100
Feedforward neural net with pattern-completion training. 400 hiddens
svd 500. Largest positive coefficient in my blend, but NOT the best individual model!
svd++ 10. Large negative coefficient in my blend. Very useful!
svd 250 plus biases
svd 40. Large negative coefficient in my blend. very useful
svd++ 10 no biases. Large negative coefficient in my blend. very useful.
Feedforward neural net, conditional, 100 hiddens
svd+++ with some neighbor thrown in. poor RMSE but blends well
Fully Bayesian treatment of a time integrated svd++ model