Super-intelligent Shade

Apr 4, 2023 22:07
@AKX and EKanadily did you guys miss the ;) emoji in my comment?...
Apr 4, 2023 22:07
@AKX this is awesome. From now on I will start all my answers with "It looks like the issue might be with ..." just to freak people out ;)
 
Sep 28, 2021 18:47
I take it back, I've added non-neg constraints and I see much higher loss, but still somewhat meaningful predictions:
Sep 28, 2021 18:37
@sergey_208 maybe take my example as a starting point and start adding to it. I still suspect it's the non-neg constraint that causes it.I don't know/understand/too lazy to know/understand your problem enough to figure out why you want it done the way you did
Sep 28, 2021 18:34
How dare you sleep?!... ;) I ended up doing the same :)
Sep 28, 2021 03:25
Check this out. It's obviously overfitting on the 80 training samples, but it's definitely not predicting the same value
Sep 28, 2021 03:20
you still there?
Sep 28, 2021 02:56
and the last column are the labels?
Sep 28, 2021 02:53
there are 871 columns
Sep 28, 2021 02:53
do I ignore all columns past 435?
Sep 28, 2021 02:46
ok
Sep 28, 2021 02:41
or file.io or transfer.sh
Sep 28, 2021 02:40
and share the link?
Sep 28, 2021 02:40
oh... google drive?
Sep 28, 2021 02:39
how big is it?
Sep 28, 2021 02:28
sure
Sep 28, 2021 02:20
can you tell me/show me real example of your input and output data?
Sep 28, 2021 02:18
Not sure. Sorry I am not familiar with optimization theory beyond what I've just googled. Gonna disappear for a few min to try something
Sep 28, 2021 02:14
default value for activation is None
Sep 28, 2021 02:13
but again dense with no activation followed by dense is pointless
Sep 28, 2021 02:12
in fact with Dense layers, if you want identity/no activation, you can just skip it altogether
Sep 28, 2021 02:10
it's only useful when you have a function that requires you pass in an activation function
Sep 28, 2021 02:09
@sergey_208 the goal of identity is to have no activation ;)
Sep 28, 2021 02:09
I am back
Sep 28, 2021 01:55
brb
Sep 28, 2021 01:50
and I suspect your weights get zeroed out due to non-neg weights constraints
Sep 28, 2021 01:49
you do not gain anything by adding them and only unnecessarily slow down your model
Sep 28, 2021 01:46
*linear regressor
Sep 28, 2021 01:46
imagine*
Sep 28, 2021 01:46
image a model where you have 10 dense layers with ident activations. this model is still just a linear model
Sep 28, 2021 01:45
you get more power from complexity/non-linearity of the model, not number of params. however, most of the time model complexity comes at the expense of more params
Sep 28, 2021 01:41
y = (x * w1 + b1) + (x * w2 + b2) is the same as y = x * w3 + b3 where w3 = w1 + w2 and b3 = b1 + b2
Sep 28, 2021 01:40
dense/identity + dense/relu is the same as a single dense/relu
Sep 28, 2021 01:38
OK. But I still fail to see why you need the two extra identity layers
Sep 28, 2021 01:35
@sergey_208 "working" would be a stretch here :)
Sep 28, 2021 01:33
your inputs and outputs are random numbers. you are trying to train your model to predict noise out of noise
Sep 28, 2021 01:32
If you don't mind me asking: (1) why are you using identity activations and non-neg weight constraints? (2) you realize that you are trying to map noise to noise in your example, so your model won't be able to learn much, right?
Sep 28, 2021 01:32
Here is my link ;) colab.research.google.com/drive/…. Look at the last cell. Layer 0 weights are all 0. So, any input gets replaced with a constant. That's why you get the same prediction
Sep 28, 2021 01:32
If you make a simple notebook on Colab and post a link here, that would be helpful. I don't mind taking a peek, but I'm too lazy to copy-paste the code.
 
Sep 4, 2019 20:21
and see if it works. A lot of times dis-related errors will trigger TPU errors and you don't know wtf is going on
Sep 4, 2019 20:20
In other words, just comment that line with strategy.scope()
Sep 4, 2019 20:20
Maybe first, try and get it working without the TPU
Sep 4, 2019 20:19
:/
Sep 4, 2019 20:16
Correct, or better yet input_shape=image[0].shape or something, so it's not hard-coded
Sep 4, 2019 20:11
OK cool
Sep 4, 2019 20:10
I am back
Sep 4, 2019 19:38
no worries. I am not in a rush :)