C03 Machine Learning and Neural Network

Group Exercise

C03-1-1. Collect features: height, weight, play football (0/1), swim (0/1), CET4 (0/1), wash clothes more than once a month (0/1), daily sleeping hours, winning of scholarships (0/1), and gender (F/M). Use SVM to classify genders.

C03-2-1. Use NN to do the gender classfication.

C03-2-2. Prepare some 28X28 figures of handwritings of number ‘0’ and ‘1’. Use NN to classify the two numbers.

Homework

C03-1-1. Implement a SVM to classify wine using the wine dataset available at https://archive.ics.uci.edu/ml/datasets/Wine .

C03-2-1. Use NN to do the wine classification again.

Material

UCI Machine Learning Datasets: https://archive.ics.uci.edu

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