Quick Context: When fitting a model, the goal is to find one that isn't over or under fit to the data. For Code, Slides and Notes Do Subscribe, likes and Shares to others...
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In this video, Varun sir will explore the Bias-Variance Tradeoff, a fundamental concept in machine learning, balancing model ... When fitting a model, the goal is to find one that isn't over or under fit to the data.
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- In this video, Varun sir will explore the Bias-Variance Tradeoff, a fundamental concept in machine learning, balancing model ...
- When fitting a model, the goal is to find one that isn't over or under fit to the data.
- For Code, Slides and Notes Do Subscribe, likes and Shares to others...
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