
overfitting - What should I do when my neural network doesn't ...
Overfitting for neural networks isn't just about the model over-memorizing, its also about the models inability to learn new things or deal with anomalies. Detecting Overfitting in Black Box Model: …
machine learning - Overfitting and Underfitting - Cross Validated
Mar 2, 2019 · 0 Overfitting and underfitting are basically inadequate explanations of the data by an hypothesized model and can be seen as the model overexplaining or underexplaining the data. This …
How does cross-validation overcome the overfitting problem?
Jul 19, 2020 · Why does a cross-validation procedure overcome the problem of overfitting a model?
What's a real-world example of "overfitting"? - Cross Validated
Dec 11, 2014 · I kind of understand what "overfitting" means, but I need help as to how to come up with a real-world example that applies to overfitting.
how to avoid overfitting in XGBoost model - Cross Validated
Jan 4, 2020 · Firstly, I have divided the data into train and test data for cross-validation. After cross validation I have built a XGBoost model using below parameters: n_estimators = 100 max_depth=4 …
definition - What exactly is overfitting? - Cross Validated
So, overfitting in my world is treating random deviations as systematic. Overfitting model is worse than non overfitting model ceteris baribus. However, you can certainly construct an example when the …
Why is logistic regression particularly prone to overfitting in high ...
A higher capacity leads to overfitting as well as the asymptotical nature of the logistic regression in higher dimensionality of the "Classification illustration". Better keep "Regression illustration" & …
neural networks - What are the impacts of different learning rates on ...
Jul 11, 2021 · What are the impacts of different learning rates on this model and why does it keep overfitting? Ask Question Asked 4 years, 6 months ago Modified 4 years, 6 months ago
How do I intentionally design an overfitting neural network?
Jun 30, 2020 · To have a neural network that performs perfectly on training set, but poorly on validation set, what am I supposed to do? To simplify, let's consider it a CIFAR-10 classification task. For …
Is overfitting "better" than underfitting? - Cross Validated
Apr 28, 2021 · 68 Overfitting is likely to be worse than underfitting. The reason is that there is no real upper limit to the degradation of generalisation performance that can result from over-fitting, whereas …