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Course Introduction
I. Software used in the course: R 3.2.2 (64-bit) RStudio
Second, the technical points involved in the course:
1) Basic syntax and functions of the R language
2) A very useful package in R
3) Principle and realization of pattern recognition and classification prediction algorithm
Iii. objectives of the course learning:
This course explains the theory and combines a large number of cases, so that learners can quickly grasp the data mining skills, and the use of r data processing, drawing, implementation according to the establishment of mining model. By completing this course, learners can achieve the following goals:
1) master basic R usage;
2) Use R for descriptive statistical analysis, data processing and visualization;
3) The cleaning ability of the missing value;
4) Set up data mining model with R language;
Iv. Curriculum Outline:
Chapter One: Introduction to Basic concepts
1th lesson, data Mining, R language Concept Introduction
2nd lesson, software Installation and data reading, writing, modification
3rd lesson, basic concept explanation (vector, matrix, factor, data frame, list)
The 4th lesson, the basic figure explanation and the drawing
Chapter II: Introduction and application of practical software packages
5th lesson, Plyr Package main function explanation
6th lesson, Plyr package Auxiliary function explanation
7th Lesson, Ggpolt2 Introduction
8th Lesson, GGPOLT2 Practice
The 9th lesson, the explanation of the Reshape2 package and the practical operation
The treatment of the missing value of the 10th lesson and lesson
Chapter Three: Algorithm explanation and application
The 11th lesson, KNN principle Introduction
The 12th lesson, KNN algorithm actual operation
The 13th lesson and the theory explanation of decision tree
14th lesson, decision tree Real exercise
The 15th lesson, Artificial Neural network introduction 1
16th lesson, Artificial Neural network Introduction 2
17th lesson, Artificial neural network real 1
18th lesson, Artificial neural network Real 2
19th lesson, support vector Machine principle Introduction
The 20th lesson, the real operation of support vector machine
Getting started with data mining and mastering the-R language video tutorial