This repository features a collection of Jupyter notebooks focused on regularization techniques and variable selection methods in Python. These notebooks highlight my expertise in improving model ...
Understanding Regularization in Machine Learning Regularization is a technique used in machine learning to prevent overfitting by adding a penalty term to the loss function. This process can lead to ...
Regularization is a technique used to reduce the likelihood of neural network model overfitting. Model overfitting can occur when you train a neural network for too many iterations. This sometimes ...
The data science doctor continues his exploration of techniques used to reduce the likelihood of model overfitting, caused by training a neural network for too many iterations. Regularization is a ...
In this paper, we describe TRIPs-Py, a new Python package of linear discrete inverse problems solvers and test problems. The goal of the package is two-fold: 1) to provide tools for solving small and ...
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