oter

Underfitting happens when models are too simplistic to capture patterns from "summary" of Machine Learning by Ethem Alpaydin

When models are too simplistic, they may fail to capture the underlying patterns in the data. This failure to capture patterns is known as underfitting. In other words, underfitting occurs when the model is not complex enough to represent the relationships between the input and output data accurately. Simplistic models lack the flexibility and nuance required to accurately model the data. As a result, they may produce inaccurate or biased predictions. For example, a linear model may not be able to capture the non-linear relationships in the data, leading to underfitting. Underfitting can also occur when the model is not trained on a sufficiently large dataset. A small dataset may not contain enough information for...
    Read More
    Continue reading the Microbook on the Oter App. You can also listen to the highlights by choosing micro or macro audio option on the app. Download now to keep learning!
    oter

    Machine Learning

    Ethem Alpaydin

    Open in app
    Now you can listen to your microbooks on-the-go. Download the Oter App on your mobile device and continue making progress towards your goals, no matter where you are.