Best products from r/mlclass
We found 3 comments on r/mlclass discussing the most recommended products. We ran sentiment analysis on each of these comments to determine how redditors feel about different products. We found 3 products and ranked them based on the amount of positive reactions they received. Here are the top 20.
1. Machine Learning
- 24" 1920 x 1080 (1080p) Full HD Display supporting up to 75 Hz (configure through GPU settings).
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- Compatible with Console and PC platforms with a compact slip-resistant base that provides ideal space for controller storage paired with full tilt adjustment. Tilt (°): -5~15 , Dual HDMI ports, VESA compatibility, and built-in speakers.
- Manufacturer Limited Warranty: 3 Years
Features:
I'm taking an ML course as my institution alongside this course. The book assigned in my other course was Machine Learning, Mitchell. It's pretty old but my professor referred to it as the bible for ML; but I've heard the Bible reference many times before.
I've been doing the readings and I like the book. The way it reads is very nice and it's an awesome supplement for anyone interested in ML.
The Bishop book mentioned here was a (strongly) recommended supplement in the course as well. I got both and although Bishop requires more focus to read (IMO) it has tons of great information.
I found this book really helped me http://www.amazon.com/Information-Theory-Inference-Learning-Algorithms/dp/0521642981
He's talking about the distribution of the error of y not J(or the distribution of the probability of the function y given x). It's explained in the lecture notes, and in page 29(figure 1.16) of Bishop's book there's an illustration that switched on the bulb for me(althought I found the book almost incomprehensible). You can look it using the amazon preview http://www.amazon.com/Pattern-Recognition-Learning-Information-Statistics/dp/0387310738/ref=sr_1_1?ie=UTF8&qid=1318610381&sr=8-1#reader_0387310738