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دوره‌ی مقدمه‌ای بر یادگیری ماشین، برای دانشجویان

License: Creative Commons Zero v1.0 Universal

TeX 1.88% Jupyter Notebook 92.16% Python 0.06% HTML 5.90% Shell 0.01%

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introduction_to_machine_learning's Issues

Decision Trees: Proper Slide Arrangement

slide 12/15:
This slide is not arranged in proper order.
ID3 and C4.5 algorithms must be introduced "before" CART and immediately after information gain as C4. 5 and ID3 use Gain Ratio and Information Gain respectively as the goodness function.
1

Slide improvements

These slides are getting used as a reference for teaching in the ML for BioInformatic course as well.
In the process of class, some points of improvement got found. This issues tries to serve as a thread for conveying these improvements.

Generalization Error: Bias Variance

Slide 7/7:
In Overfitting vs Underfitting graph, it is recommented to plot Bias2, Var, and Bias2+Var rather than
Bias, Var, and Bias2 + Var
rather than Bias according to the formula shown below:
2

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