wasshuber

wasshuber

Programming Machine Learning: Help: weird results I don't understand

I encountered something that I can’t explain. Any help, tips, or explanations would be great.

I followed the one hidden layer example with 100 nodes and sigmoid activation function. Works great and I can get to 98.6% accuracy with a learning rate of 1.0, a batch size of 1000, and 100 epochs.

I then decided to exchange the sigmoid activation function with the ReLU. This is not done in the book at this point but it is easy enough to program the ReLU and its derivative. Here is the Python code I used:

def relu(z):
    return np.maximum(0.0,z)
def relu_gradient(z):
    return (z > 0)*1

Works fine as long as one reduces the learning rate which I did reduce to 0.1. It reaches about the same level of accuracy as with the sigmoid. I then did one insignificant change in the gradient of the ReLU. Instead of z > 0 I wrote z >= 0. So the code for the gradient was now:

def relu_gradient(z):
    return (z >= 0)*1

This I thought should not make any difference because how often would z be exactly zero? How often would the weighted sum of all inputs in the floating point format be exactly zero? Perhaps never. Even if it is zero occasionally it should hardly make any big difference. But to my surprise, it makes a profound difference. I can only get to about 95%. Why? Why is there almost 4% difference in accuracy for this insignificant change? There must be something weird happening.

I tried this several times to rule out that somehow the random initialization was unusual. I tried it with different learning rates and different batch sizes. None made any difference in the result. I checked for dead neurons. Found none. If somebody can tell me what is going on here I would really appreciate it.

Most Liked

wasshuber

wasshuber

Turns out it was a bug. Using the nomenclature of the book I was feeding h into the gradient function when I should have fed a into it. With the >= comparison this made all the gradients 1 and thus it acted like the linear activation function. (The linear activation function does produce about 94% accuracy.) Properly using the gradient function produces the expected results. It doesn’t matter if one uses > or >=.

I am happy I found this bug. But this is also part of why your book is so great. Programming it yourself forces one to understand the little details and allows one to change and modify the algorithms at the very core, which leads to much deeper understanding of how this all works.

Here is an insight that my experimentation produced. I tested a bunch of different activation functions including weird piecewise linear ones, periodic ones with sin and cos, combinations thereof etc. It surprised me that many work just as good as ReLU or sigmoid with a single hidden layer. (I intend to extend this experimentation to multiple hidden layers.) For example, it is kind of shocking at first that the absolute-value-function works just as good as ReLU. This kind of makes sense in the biological case. A neuron being a cell would not be completely identical to its neighbor neuron. Neurons in nature would certainly have different activation functions. Perhaps not as different as I experimented with but they would perhaps be noisy and distorted versions of sigmoid or ReLU. It doesn’t matter, it still works fine.

Further, this makes me wonder if perhaps that variation in activation functions in nature is a benefit. I am wondering if folks have tried to make nets where each activation function of each neuron is different. Perhaps that confers a training advantage to the network because not everything behaves in exactly the same way? I will try to explore this question. But first I need to extend the code to allow for multiple hidden layers.

This is one critique I have to make. In my opinion, it would have been better to go further with the code and extend it to multiple hidden layers than to switch to libraries. The point of the book is programming it yourself to allow full unmitigated experimentation. I would have added one or two chapters to extend the code further even if that would have meant leaving out libraries altogether. Numpy should be fast enough to explore multilayer networks on a single average computer.

Where Next?

Popular Pragmatic Bookshelf topics Top

New
brianokken
Many tasks_proj/tests directories exist in chapters 2, 3, 5 that have tests that use the custom markers smoke and get, which are not decl...
New
joepstender
The generated iex result below should list products instead of product for the metadata. (page 67) iex> product = %Product{} %Pento....
New
brunogirin
When I run the coverage example to report on missing lines, I get: pytest --cov=cards --report=term-missing ch7 ERROR: usage: pytest [op...
New
brunogirin
When installing Cards as an editable package, I get the following error: ERROR: File “setup.py” not found. Directory cannot be installe...
New
brunogirin
When running tox for the first time, I got the following error: ERROR: InterpreterNotFound: python3.10 I realised that I was running ...
New
AufHe
I’m a newbie to Rails 7 and have hit an issue with the bin/Dev script mentioned on pages 112-113. Iteration A1 - Seeing the list of prod...
New
jonmac
The allprojects block listed on page 245 produces the following error when syncing gradle: “org.gradle.api.GradleScriptException: A prob...
New
s2k
Hi all, currently I wonder how the Tailwind colours work (or don’t work). For example, in app/views/layouts/application.html.erb I have...
New
andreheijstek
After running /bin/setup, the first error was: The foreman' command exists in these Ruby versions: That was easy to fix: gem install fore...
New

Other popular topics Top

Devtalk
Hello Devtalk World! Please let us know a little about who you are and where you’re from :nerd_face:
New
PragmaticBookshelf
Ruby, Io, Prolog, Scala, Erlang, Clojure, Haskell. With Seven Languages in Seven Weeks, by Bruce A. Tate, you’ll go beyond the syntax—and...
New
PragmaticBookshelf
Rust is an exciting new programming language combining the power of C with memory safety, fearless concurrency, and productivity boosters...
New
PragmaticBookshelf
Learn different ways of writing concurrent code in Elixir and increase your application's performance, without sacrificing scalability or...
New
PragmaticBookshelf
Author Spotlight Mike Riley @mriley This month, we turn the spotlight on Mike Riley, author of Portable Python Projects. Mike’s book ...
New
New
PragmaticBookshelf
Author Spotlight: Peter Ullrich @PJUllrich Data is at the core of every business, but it is useless if nobody can access and analyze ...
New
PragmaticBookshelf
Leverage Elixir and the Nx ecosystem to build intelligent applications that solve real-world problems in computer vision, natural languag...
New
AstonJ
This is cool! DEEPSEEK-V3 ON M4 MAC: BLAZING FAST INFERENCE ON APPLE SILICON We just witnessed something incredible: the largest open-s...
New
AstonJ
This is a very quick guide, you just need to: Download LM Studio: https://lmstudio.ai/ Click on search Type DeepSeek, then select the o...
New

Sub Categories: