Lec 13, Distribution of Sample Means, population, and variance
15
Lec 14: Confidence interval estimation: Single population - I
16
Lec 15, Confidence Interval Estimation: Single Population - II
17
Lec 16, Hypothesis Testing- I
18
Lec 17, Hypothesis testing- II
19
Lec 18, Hypothesis Testing-III
20
Lec 19, Errors in Hypothesis Testing
21
Lec 20, Hypothesis Testing about the Difference in Two Sample Means
22
Lec 21, Hypothesis testing : Two sample test -II
23
Lec 22, Hypothesis Testing: Two sample test - III
24
Lec 23, ANOVA- I
25
Lec 24, ANOVA- II
26
Lec 25, Post Hoc Analysis(Tukey’s test)
27
Lec 26, Randomize block design (RBD)
28
Lec 27, Two Way ANOVA
29
Lec 28, Linear Regression - I
30
Lec 29, Linear Regression - II
31
Lec 30, Linear Regression-III
32
Lec 31, Estimation, Prediction of Regression Model Residual Analysis
33
Lec 32, Estimation, Prediction of Regression Model Residual Analysis - II
34
Lec 33, MULTIPLE REGRESSION MODEL - I
35
Lec 34, MULTIPLE REGRESSION MODEL-II
36
Lec 35, Categorical variable regression
37
Lec 36, Maximum Likelihood Estimation- I
38
Lec 37, Maximum Likelihood Estimation-II
39
Lec 38, LOGISTIC REGRESSION- I
40
Lec 39, LOGISTIC REGRESSION-II
41
Lec 40, Linear Regression Model Vs Logistic Regression Model
42
Lec 41, Confusion matrix and ROC- I
43
Lec 42, Confusion Matrix and ROC-II
44
Lec 43, Performance of Logistic Model-III
45
Lec 44, Regression Analysis Model Building - I
46
Lec 45, Regression Analysis Model Building (Interaction)- II
47
Lec 46, Chi - Square Test of Independence - I
48
Lec 47, Chi-Square Test of Independence - II
49
Lec 48, Chi-Square Goodness of Fit Test
50
Lec 49, Cluster analysis: Introduction- I
51
Lec 50, Clustering analysis: part II
52
Lec 51, Clustering analysis: Part III
53
Lec 52, Cluster analysis: Part IV
54
Lec 53, Cluster analysis: Part V
55
Lec 54, K- Means Clustering
56
Lec 55, Hierarchical method of clustering -I
57
Lec 56, Hierarchical method of clustering- II
58
Lec 57, Classification and Regression Trees (CART : I)
59
Lec 58, Measures of attribute selection
60
Lec 59, Attribute selection Measures in CART : II
61
Lec 60, Classification and Regression Trees (CART) - III
Description:
COURSE OUTLINE: This course includes examples of analytics in a wide variety of industries, and we hope that students will learn how one can use analytics in their careers and life. One of the most important aspects of this course is that hands-on experience creating analytics models will be shared.
INTENDED AUDIENCE: Management, Industrial Engineering and Computer Science Engineering Students
INDUSTRIES APPLICABLE TO: Any analytics company