-
Updated
Sep 7, 2021 - Python
regression
Here are 3,596 public repositories matching this topic...
-
Updated
Apr 1, 2021 - Jupyter Notebook
-
Updated
Jul 7, 2021 - Python
-
Updated
Dec 30, 2021 - Java
-
Updated
Dec 14, 2019 - Jupyter Notebook
-
Updated
Oct 31, 2020 - Python
Hi,
There are still parts of boost library that are used inside mlpack, more specifically in here
-
mlpack/src/mlpack/core/tree/cosine_tree/cosine_tree.hpp
boost::heap -
mlpack/src/mlpack/core/data/load_arff.hpp
boost::tokenizer -
mlpack/tests/main_tests/emst_test.cpp
boost::math::iround() -
mlpack/core/tree/cosine_tree/cosine_tree.cpp
boost::m
-
Updated
Dec 31, 2021 - Python
-
Updated
Dec 28, 2021 - Java
-
Updated
Dec 29, 2021 - C#
-
Updated
Jan 1, 2022 - JavaScript
-
Updated
Oct 22, 2021 - Jupyter Notebook
-
Updated
Dec 1, 2021 - PHP
-
Updated
Nov 10, 2021 - Jupyter Notebook
Support Python 3.10
Python 3.10 has been released. We should test it. If all the dependencies support it, we should add it to CI.
-
Updated
Jan 2, 2022 - R
-
Updated
Dec 29, 2021 - Jupyter Notebook
-
Updated
Dec 28, 2021 - PHP
-
Updated
Feb 10, 2021 - C++
-
Updated
Nov 30, 2020 - Python
-
Updated
Aug 25, 2021 - Python
-
Updated
Jan 1, 2022 - Julia
Hi @JavierAntoran @stratisMarkou,
First of all, thanks for making all of this code available - it's been great to look through!
Im currently spending some time trying to work through the Weight Uncertainty in Neural Networks in order to implement Bayes-by-Backprop. I was struggling to understand the difference between your implementation of `Bayes-by-Bac
-
Updated
Dec 29, 2021 - Python
-
Updated
Dec 21, 2021 - Java
-
Updated
Jan 2, 2022 - OCaml
-
Updated
Nov 8, 2021 - Julia
-
Updated
Dec 30, 2021 - Python
Improve this page
Add a description, image, and links to the regression topic page so that developers can more easily learn about it.
Add this topic to your repo
To associate your repository with the regression topic, visit your repo's landing page and select "manage topics."
Hi I would like to propose a better implementation for 'test_indices':
We can remove the unneeded np.array casting:
Cleaner/New:
test_indices = list(set(range(len(texts))) - set(train_indices))
Old:
test_indices = np.array(list(set(range(len(texts))) - set(train_indices)))