12 Useful Tips for Machine Learning (转载)
Pedro Domingos教授在其著名的文章《A Few Useful Things to Know about Machine Learning》中提到以下內(nèi)容:
1. LEARNING = REPRESENTATION + EVALUATION + OPTIMIZATION
2. IT’S GENERALIZATION THAT COUNTS
3. DATA ALONE IS NOT ENOUGH
4. OVERFITTING HAS MANY FACES
5. INTUITION FAILS IN HIGH DIMENSIONS
6. THEORETICAL GUARANTEES ARE NOT WHAT THEY SEEM
7. FEATURE ENGINEERING IS THE KEY
8. MORE DATA BEATS A CLEVERER ALGORITHM
9. LEARN MANY MODELS, NOT JUST ONE
10. SIMPLICITY DOES NOT IMPLY ACCURACY
11. REPRESENTABLE DOES NOT IMPLY LEARNABLE
12. CORRELATION DOES NOT IMPLY CAUSATION
詳情請參閱 《A Few Useful Things to Know about Machine Learning》.
?
?
轉(zhuǎn)載于:https://www.cnblogs.com/statml/archive/2013/04/04/2999030.html
總結(jié)
以上是生活随笔為你收集整理的12 Useful Tips for Machine Learning (转载)的全部內(nèi)容,希望文章能夠幫你解決所遇到的問題。
- 上一篇: Strong Consistency,
- 下一篇: undefined reference