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Transferred from: HTTPS://HACKERLISTS.COM/BEGINNER-ML-COURSES/10 machine learning Online courses for BEGINNERS10 machine learning Online Courses for BeginnersThe following is a list of, mostly free, machine learning online courses
to start the application. This is the lack of machine learning from the perspective of the quality of mathematical knowledge. How to apply mathematics knowledge to the algorithm of machine learning? The first is to know what mathematical knowledge corresponds to the algorithm and theory of
Hello everyone, I am mac Jiang, today and everyone to share Coursera-stanford university-machine Learning-week 10:large scale machine learning after the class exercise solution. Although my answer passed the system test, but my analysis is not necessarily correct, if you bo
Transferred from: http://www.csdn.net/article/2015-10-16/2825925First of all, let me start with my intentions . Machine learning system now much more red NB this thing I don't have to repeat. But because of the particularity of machine learning system, it is not easy to build a reliable and useful system. Every time I
-GROWTH algorithm to efficiently discover frequent itemsets
Part IV Other tools
13.) Use PCA to simplify data
14.) Simplify data with SVD
15.) Big Data and MapReduce
Part V Project Combat (non-textbook content)
16.) Recommendation System
Periodic summary
Summary of the first phase of 2017-04-08_
Appendix A, getting Started with Python
Appendix B Linear Algebra
Appendix C Review o
(written in front) said yesterday to write a machine learning book, then write one today. This book is mainly used for beginners, very basic, suitable for sophomore, junior to see the children, of course, if you are a senior or a senior senior not seen machine learning is also applicable. Whether it's studying intellig
Reprinted please indicate Source Address: http://www.cnblogs.com/xbinworld/archive/2013/04/21/3034300.html
Pattern Recognition and machine learning (PRML) book learning, Chapter 1.1, introduces polynomial curve fitting)
The doctor is almost finished. He will graduate next year and start preparing for graduation this year. He feels that he has done a lot of
Original writing. For more information, see http://blog.csdn.net/xbinworld,bincolumns.
Pattern Recognition and machine learning (PRML) book learning, Chapter 1.1, introduces polynomial curve fitting)
The doctor is almost finished. He will graduate next year and start preparing for graduation this year. He feels that he has done a lot of research on
values of each eigenvalue have the same scale range, so that the influence of each eigenvalue is the same.How do I set the value of λ? By selecting a different λ to repeat the test process, a λ that minimizes the prediction error is obtained. The best value can be obtained by cross-validation-the sum of squared errors is minimized on the test data.Ridge regression was first used to deal with more than a sample number of features, and is now used to add human bias to the estimate, thus obtaining
training set for training and get different model;
4, the model on the CV set on the performance of a score, choose a better performance models;
There is a need to note that we will eventually choose to perform the best model on the CV set, but the final evaluation of this model is to be in a new data d_test (similar to the Netflix Prize competition, The official eventually gives your model a rating of data) on the test. Andrew NG recommends dividing the data as follows:
k-fold Cross validtio
structure as follows.What effect does this autoencoder have on machine learning?1) for supervised learning: This information-preserving NN's hidden layer structure + weight is a reasonable conversion of the original input, equivalent to learning the expression of data in the structure2) for unsupervised
To learn about machine learning, you must master a few mathematical knowledge. Otherwise, you will be confused (Allah was in this state before ). Among them, data distribution, maximum likelihood (and several methods for extreme values), deviation and variance trade-offs, as well as feature selection, model selection, and hybrid model are all particularly important. Here I will take you to
://www.cs.toronto.edu/~hinton/csc2515/lectures.html specially recommended to do one of the assignments:http:// Www.cs.toronto.edu/~hinton/csc2515/assignments.html
These three books have been brushed some, recommend Mlapp.1. PRML and Mlapp a bit like, are listed ml various models, but PRML than mlapp more partial probability interpretation, some for probability and probability. Mlapp is more neutral, the content is newer, and the attachment material is sufficient (have code)2. ESL content and "
classification), The high-dimensional space is represented as a super-plane (hyperplane).Review machine learning (i)---the regression of supervised learning has knowledge about logistic regression: For classifier hypothesis, in the case of two classification, now for this function, with the expression of the super-
attention.Deep Learning (learning) is a new field in ML research that is introduced into ML to bring ml closer to its original target: AI. View a brief introduction to machine learning for AI and an introduction to deep learning algorithms.Deep
prediction
Naturual Language Processing
Coursera Course Book on NLP
NLTK
NLP W/python
Foundations of statistical Language processing
Probability Statistics
Thinking Stats-book + Python Code
From algorithms to Z-scores-book
The Art of R Programming-book (not finished)
All of Statistics
Introduction to statistical thought
Basic probability theory
Introduction to probability
Principle of u
Machine learning Notes (iii) multivariable linear regression
Note: This content resource is from Andrew Ng's machine learning course on Coursera, which pays tribute to Andrew Ng.
One, multiple characteristics (multiple Features)The housing price problem discus
previous article Python machine learning "Getting Started"Body:In the previous introductory article, we mainly introduced two algorithms for machine learning tasks: supervised learning and unsupervised learning. Among them, the t
calculates the accuracy of the entire system at this time:
As shown in, text recognition consists of four parts. Now we can find the system accuracy after optimization for each part. The question is, how can we improve the accuracy of the entire system? We can see from the table that, if we have optimized the text moderation part, the accuracy will be72%Add89%If we optimize the character segmentation, the accuracy is only from89%To90%If character recognition is optimized90%To100%In contr
Recently is a period of idle, do not want to waste, remember before there is a collection of machine learning link Andrew ng NetEase public class, of which the overfiting part of the group will report involved, these days have time to decide to learn this course, at least a superficial understanding.Originally wanted to go online to check machine
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