100 Most useful Theorems and Ideas in Mathematics |
|
661 |
Standard Deviation of Sample Median |
|
660 |
Computer Evaluation of the best Historical Chess Players |
|
610 |
“Deep Support Vector Machines for Regression Problems” |
|
524 |
Dropout – What happens when you randomly drop half the features? |
|
432 |
Notes on “A Few Useful Things to Know about Machine Learning” |
|
366 |
“Machine Learning Techniques for Stock Prediction” |
|
343 |
Bengio LeCun Deep Learning Video |
|
327 |
The 20 most striking papers, workshops, and presentations from NIPS 2012 |
|
289 |
Simpson’s paradox and Judea Pearl’s Causal Calculus |
|
283 |
The Exact Standard Deviation of the Sample Median |
|
271 |
“Machine Learning Cheat Sheet (for scikit-learn)” |
|
262 |
Matlab code and a Tutorial on DIRECT Optimization |
|
250 |
Comet ISON, Perihelion, Mars, and the rule of 13.3 |
|
240 |
Markov Logic Networks Tutorial |
|
229 |
Approximation of KL distance between mixtures of Gaussians |
|
218 |
About |
|
208 |
Category Theory ? |
|
183 |
Searching a Game Tree with a GPU |
|
173 |
What is probabilistic programming and Why it Matters |
|
159 |
Checkers and Machine Learning |
|
150 |
“Semantic Hashing” |
|
149 |
Lifted Inference |
|
144 |
“Stacked Generalization” |
|
142 |
Knowledge Representation, Ologs, and Category theory |
|
136 |
“A Neuro-evolution Approach to General Atari Game Playing” |
|
136 |
“Is chess the drosophila of artificial intelligence?” |
|
135 |
Most popular posts |
|
132 |
Johnson–Lindenstrauss lemma |
|
130 |
Why are Gaussian Distributions Great? |
|
125 |
Deriving the Gaussian Distribution from the Sterling Approximation and the Central Limit Theorem |
|
124 |
Julia Language |
|
120 |
Strong AI, ML, GOFAI, Category Theory, and Abstraction |
|
118 |
Sparse Kalman Filters |
|
111 |
“Randomized Numerical Linear Algebra (RandNLA): Theory and Practice” |
|
107 |
An ODE, Orthogonal Functions, and the Chebyshev Polynomials |
|
98 |
“Machine Learning: A Love Story” |
|
98 |
“BOA: The Bayesian Optimization Algorithm” |
|
96 |
“Autoencoders, MDL, and Helmholtz Free Energy” |
|
92 |
Yann Esposito’s Category theory Slides with Haskell |
|
85 |
TED: “The key to growth? Race with the machines” |
|
84 |
No comments
Comments feed for this article
Trackback link: http://artent.net/most-popular-posts/trackback/