Skip to content

ANN Weaknesses

ANN Weaknesses. What is the main weakness of an artificial neural network? Overfitting, lack of explainability. Needs huge data to process.

ANN Weaknesses

What is the main weakness of an artificial neural network?

One of the main weaknesses of artificial neural networks (ANNs) is their susceptibility to overfitting. Overfitting occurs when a neural network is trained too much on a specific dataset and becomes too complex, causing it to perform well on the training data but poorly on new, unseen data. This can happen when the network has too many layers, too many neurons in each layer, or too many training iterations.

Another weakness of ANNs is their lack of explainability. While ANNs can make accurate predictions, it can be difficult to understand how the network arrived at those predictions. This can be problematic when the decision-making process needs to be understood or explained, such as in medical diagnosis or legal cases.

Finally, ANNs require large amounts of labeled data to be trained effectively. This can be a significant limitation when working with small datasets or when acquiring labeled data is difficult or expensive.

Thank you for questions, shares and comments!

Share your thoughts or questions in the comments below!

Text with help of openAI’s ChatGPT Laguage Models & Fleeky – Images with help of Picsart & MIB

Fleeky One

Fleeky One

AI is a magnificient tool when stirred with knowledge and wisdom. This site is made with help of AI tools. Enjoy the beauty!

Join the conversation

Your email address will not be published. Required fields are marked *

Optimized by Optimole Skip to content