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, people may have skin color, height, physique and ... Hey, I'm evil. And so on, are these features independent of each other? Of course not, such as the black average height is not white high, there are black people running ability and so on, characteristics and characteristics are related. But naive Bayesian sees them as independent.
In principle, naive Bayes has an objective minimum error rate because it requires the least number of parameters. But
Stanford cs231n 2017 newest Course: Li Feifei Detailed framework realization and comparison of depth learning by Zhuzhibosmith June 19, 2017 13:37
Stanford University Course cs231n (convolutional Neural Networks for visual recognition) is widely admired in academia as an important foundation course in depth
Stanford University's Machine learning course (The instructor is Andrew Ng) is the "Bible" for learning computer learning, and the following is a lecture note.First, what is machine learningMachine
1. The complete course of statistics all of statistics Carnegie Kimelon Wosseman
2. Fourth edition, "Probability Theory and Mathematical Statistics" Morris. Heidegger, Morris H.degroot, and Mark. Schevish (Mark j.shervish)
3. Introduction to Linear algebra, Gilbert. Strong--Online video tutorials are classic
4. "Numerical linear algebra", Tracy Füssen. Lloyd and David. Bao
Textbooks suitable for undergraduates
5. Predictive data analysis of
Operating system Learning notes----process/threading Model----Coursera Course note process/threading model 0. Overview 0.1 Process ModelMulti-Channel program designConcept of process, Process control blockProcess status and transitions, process queuesProcess Control----process creation, revocation, blocking, wake-up 、...0.2 threading ModelWhy threading is introducedThe composition of the threadImplementatio
assumptions tend to be 0, but the actual labels are 1, both of which indicate a miscarriage of judgment. Otherwise, we define the error value as 0, at which point the value is assumed to correctly classify the sample Y.Then, we can use the error rate errors to define the test error, that is, 1/mtest times the error rate errors of H (i) (xtest) and Y (i) (sum from I=1 to Mtest).Stanford University public Class machine
11.1 What to do first11.2 Error AnalysisError measurement for class 11.3 skew11.4 The tradeoff between recall and precision11.5 Machine-Learning data11.1 what to do firstThe next video will talk about the design of the machine learning system. These videos will talk about the major problems you will encounter when desi
The first chapter begins
In the first chapter we will learn from how C + +. , and what we need to learn. Two questions to start our study journey.
how to learn C + +?C + + as a high-level machine language, although different from our communication language, but there are some common language features: grammar, vocabulary. Think about how we learn English. The first is to understand the word, then the phrase, then the sentence, and finally the dialog
formed a more perfect experience accumulation of the application scene. There are many applications in data mining that need to be developed, even if it is possible to dig out valuable patterns. Like Recommender systems, computer vision, and NLP, these values are known to be more fortunate than others. Write the Book of course everything to write, is there something in machine
the file name of the data to iris.csv. The Code is as follows:
1
Is it easy? Just 12 lines of code is enough. Next, let's test it. According to the figure above, when we input 5 3.3 1.4 0.2, the output should be Iris-setosa. Let's take a look:
Check that at least one original data is input and the correct result is obtained. But what if we enter data that is not in the original dataset? Let's test two groups:
From the data of the two images we posted earlier, the data we input does not exist
1. What is manifoldManifold Learning Viewpoint: We think that the data we can observe is actually mapped by a low-dimensional pandemic to a high-dimensional space. Due to the limitations of the internal characteristics of the data, some of the data in the higher dimensions produce redundancy on the dimension, which in fact can be represented only by a lower dimension. So intuitively speaking, a manifold is like a D-dimensional space, in a m-dimensiona
Machine learning Algorithms and Python Practice (ii) Support vector Machine (SVM) BeginnerMachine learning Algorithms and Python Practice (ii) Support vector Machine (SVM) Beginner[Email protected]Http://blog.csdn.net/zouxy09Machine lear
to learn the "intrinsic" structure of data from the data set of X.
In unsupervised learning, the most practical and representative method is Clustering (cluster).
For example we can look for a group of people (yellow people inside), everyone has some data to describe (accent, dietary preferences, ...) And so on, we can get a rough idea of the different clusters (cluster) through these characteristics. The concept of these clu
square feet size house to sell, then based on the above data, how do you speculate about how much the house worth. For this problem, we can apply the machine learning algorithm, draw a line in this set of data or a line of quasi-unity, according to this line we can speculate that the house may sell $000. Of course, this is not the only algorithm, such as a two-t
the WTW:The essence is similar.Another understanding: If we consider the constraints in SVM as a filtering algorithm, for a number of points in a plane,It is possible that some margin non-conforming methods will be ignored, so this is actually a reduction of the problem of the VC dimension, which is also an optimization direction of the problem.With the condition of M > 1.126, better generalization performance was obtained compared to PLA.Taking a circle midpoint as an example, some partitionin
, linear algebra library to accelerate the calculation, the smaller batch, the acceleration effect may be less obvious. Of course, batch is not the bigger the better, too big, the weight of the update will be less frequent, resulting in the optimization process is too long. So mini-batch size, not static, according to your data set size, your device computing ability to choose.
The the-Go is therefore-use some acceptable (but not necessarily-
Machine learning Algorithm and Python Practice (c) Advanced support vector Machine (SVM)Machine learning Algorithm and Python Practice (c) Advanced support vector Machine (SVM)[Email protected]Http://blog.csdn.net/zouxy09Machine
Preface
In recent weeks, I spent some time learning the machine learning course of the Dragon Star program for the next summer vacation. For more information, see the appendix. This course chooses to talk about the basic model in ml. It also introduces popular and new algo
inspire rewards by trying and using errors to reveal specific actions. The agents can then use these rewards to understand the best state of the game and choose the next action.Quantifying the prevalence of machine learning algorithmsSome research reports (http://www.cs.uvm.edu/~icdm/algorithms/10Algorithms-08.pdf) have been done to quantify 10 of the most popular data mining algorithms. However, such a li
(Preface)I wrote a machine learning ticket yesterday. Let's write one today. This book is mainly used for beginners and is very basic. It is suitable for sophomores and juniors. Of course, it is also applicable if you have not read machine learning before your senior or seni
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