Input data size [72,1041500] = 72 channels, 1041500 frames Finding 72 ICA components using extended ICA. Kurtosis will be calculated initially every 1 blocks using 6000 data points. Decomposing 200 frames per ICA weight ((5184)^2 = 1041500 weights, Initial learning rate will be 0.001, block size 70. Learning rate will be multiplied by 0.98 whenever angledelta >= 60 deg. More than 32 channels: default stopping weight change 1E-7 Training will end when wchange < 1e-07 or after 512 steps. Online bias adjustment will be used. Removing mean of each channel ... Final training data range: -4.73468 to 7.71204 Computing the sphering matrix... Starting weights are the identity matrix ... Sphering the data ... Beginning ICA training ... first training step may be slow ... Lowering learning rate to 0.0009 and starting again. Lowering learning rate to 0.00081 and starting again. Lowering learning rate to 0.000729 and starting again. Lowering learning rate to 0.0006561 and starting again. Lowering learning rate to 0.00059049 and starting again. Lowering learning rate to 0.000531441 and starting again. Lowering learning rate to 0.000478297 and starting again. Lowering learning rate to 0.000430467 and starting again. Lowering learning rate to 0.00038742 and starting again. Lowering learning rate to 0.000348678 and starting again. Lowering learning rate to 0.000313811 and starting again. Lowering learning rate to 0.00028243 and starting again. Lowering learning rate to 0.000254187 and starting again. Lowering learning rate to 0.000228768 and starting again. Lowering learning rate to 0.000205891 and starting again. Lowering learning rate to 0.000185302 and starting again. Lowering learning rate to 0.000166772 and starting again. Lowering learning rate to 0.000150095 and starting again. Lowering learning rate to 0.000135085 and starting again. Lowering learning rate to 0.000121577 and starting again. Lowering learning rate to 0.000109419 and starting again. Lowering learning rate to 9.84771e-05 and starting again. Lowering learning rate to 8.86294e-05 and starting again. Lowering learning rate to 7.97664e-05 and starting again. Lowering learning rate to 7.17898e-05 and starting again. Lowering learning rate to 6.46108e-05 and starting again. Lowering learning rate to 5.81497e-05 and starting again. Lowering learning rate to 5.23348e-05 and starting again. Lowering learning rate to 4.71013e-05 and starting again. Lowering learning rate to 4.23912e-05 and starting again. Lowering learning rate to 3.8152e-05 and starting again. Lowering learning rate to 3.43368e-05 and starting again. Lowering learning rate to 3.09032e-05 and starting again. Lowering learning rate to 2.78128e-05 and starting again. Lowering learning rate to 2.50316e-05 and starting again. Lowering learning rate to 2.25284e-05 and starting again. Lowering learning rate to 2.02756e-05 and starting again. Lowering learning rate to 1.8248e-05 and starting again. step 1 - lrate 0.000018, wchange 29419789262971268.00000000, angledelta 0.0 deg Lowering learning rate to 1.31386e-05 and starting again. step 1 - lrate 0.000013, wchange 758033595541.61657715, angledelta 0.0 deg Lowering learning rate to 9.45977e-06 and starting again. step 1 - lrate 0.000009, wchange 358453028.92838448, angledelta 0.0 deg