种子简介
种子名称:
[FreeCourseLab.com] Udemy - Statistics for Data Science and Business Analysis
文件类型:
视频
文件数目:
64个文件
文件大小:
2.8 GB
收录时间:
2021-2-11 13:36
已经下载:
3次
资源热度:
229
最近下载:
2024-12-23 09:28
下载BT种子文件
下载Torrent文件(.torrent)
立即下载
磁力链接下载
magnet:?xt=urn:btih:fc2af5ec0b1138700fb994541e29dfd33190ce88&dn=[FreeCourseLab.com] Udemy - Statistics for Data Science and Business Analysis
复制链接到迅雷、QQ旋风进行下载,或者使用百度云离线下载。
喜欢这个种子的人也喜欢
种子包含的文件
[FreeCourseLab.com] Udemy - Statistics for Data Science and Business Analysis.torrent
1. Introduction/1. What does the course cover.mp468.64MB
10. Hypothesis testing Introduction/1. The null and the alternative hypothesis.mp492.16MB
10. Hypothesis testing Introduction/4. Establishing a rejection region and a significance level.mp4112.69MB
10. Hypothesis testing Introduction/6. Type I error vs Type II error.mp443.94MB
11. Hypothesis testing Let's start testing!/1. Test for the mean. Population variance known.mp454.3MB
11. Hypothesis testing Let's start testing!/11. Test for the mean. Independent samples (Part 2).mp436.39MB
11. Hypothesis testing Let's start testing!/3. What is the p-value and why is it one of the most useful tools for statisticians.mp455.88MB
11. Hypothesis testing Let's start testing!/5. Test for the mean. Population variance unknown.mp440.26MB
11. Hypothesis testing Let's start testing!/7. Test for the mean. Dependent samples.mp450.45MB
11. Hypothesis testing Let's start testing!/9. Test for the mean. Independent samples (Part 1).mp429.97MB
12. Practical example hypothesis testing/1. Practical example hypothesis testing.mp469.38MB
13. The fundamentals of regression analysis/1. Introduction to regression analysis.mp419.4MB
13. The fundamentals of regression analysis/11. A practical example - Reinforced learning.mp445.88MB
13. The fundamentals of regression analysis/3. Correlation and causation.mp425.58MB
13. The fundamentals of regression analysis/5. The linear regression model made easy.mp450.99MB
13. The fundamentals of regression analysis/7. What is the difference between correlation and regression.mp412.72MB
13. The fundamentals of regression analysis/9. A geometrical representation of the linear regression model.mp44.92MB
14. Subtleties of regression analysis/1. Decomposing the linear regression model - understanding its nuts and bolts.mp442.22MB
14. Subtleties of regression analysis/10. The multiple linear regression model.mp419.11MB
14. Subtleties of regression analysis/12. The adjusted R-squared.mp443.71MB
14. Subtleties of regression analysis/14. What does the F-statistic show us and why do we need to understand it.mp413.91MB
14. Subtleties of regression analysis/3. What is R-squared and how does it help us.mp436.45MB
14. Subtleties of regression analysis/5. The ordinary least squares setting and its practical applications.mp420.05MB
14. Subtleties of regression analysis/7. Studying regression tables.mp436.78MB
15. Assumptions for linear regression analysis/1. OLS assumptions.mp419.39MB
15. Assumptions for linear regression analysis/11. A5. No multicollinearity.mp426.59MB
15. Assumptions for linear regression analysis/3. A1. Linearity.mp412.06MB
15. Assumptions for linear regression analysis/5. A2. No endogeneity.mp432.45MB
15. Assumptions for linear regression analysis/7. A3. Normality and homoscedasticity.mp439.97MB
15. Assumptions for linear regression analysis/9. A4. No autocorrelation.mp425.89MB
16. Dealing with categorical data/1. Dummy variables.mp438.19MB
17. Practical example regression analysis/1. Practical example regression analysis.mp4129.32MB
2. Sample or population data/1. Understanding the difference between a population and a sample.mp458.05MB
3. The fundamentals of descriptive statistics/1. The various types of data we can work with.mp472.6MB
3. The fundamentals of descriptive statistics/11. Histogram charts.mp413.79MB
3. The fundamentals of descriptive statistics/14. Cross tables and scatter plots.mp439.81MB
3. The fundamentals of descriptive statistics/3. Levels of measurement.mp454.38MB
3. The fundamentals of descriptive statistics/5. Categorical variables. Visualization techniques for categorical variables.mp438.48MB
3. The fundamentals of descriptive statistics/8. Numerical variables. Using a frequency distribution table.mp425.84MB
4. Measures of central tendency, asymmetry, and variability/1. The main measures of central tendency mean, median and mode.mp437.12MB
4. Measures of central tendency, asymmetry, and variability/11. Calculating and understanding covariance.mp427.47MB
4. Measures of central tendency, asymmetry, and variability/14. The correlation coefficient.mp429.41MB
4. Measures of central tendency, asymmetry, and variability/3. Measuring skewness.mp419.42MB
4. Measures of central tendency, asymmetry, and variability/6. Measuring how data is spread out calculating variance.mp450.93MB
4. Measures of central tendency, asymmetry, and variability/8. Standard deviation and coefficient of variation.mp445.21MB
5. Practical example descriptive statistics/1. Practical example.mp4160.47MB
6. Distributions/1. Introduction to inferential statistics.mp415.48MB
6. Distributions/11. Standard error.mp422.77MB
6. Distributions/2. What is a distribution.mp461.62MB
6. Distributions/4. The Normal distribution.mp449.86MB
6. Distributions/6. The standard normal distribution.mp422.5MB
6. Distributions/9. Understanding the central limit theorem.mp462.9MB
7. Estimators and estimates/1. Working with estimators and estimates.mp447.84MB
7. Estimators and estimates/10. Calculating confidence intervals within a population with an unknown variance.mp432.19MB
7. Estimators and estimates/12. What is a margin of error and why is it important in Statistics.mp459.2MB
7. Estimators and estimates/3. Confidence intervals - an invaluable tool for decision making.mp449.93MB
7. Estimators and estimates/5. Calculating confidence intervals within a population with a known variance.mp478.22MB
7. Estimators and estimates/7. Confidence interval clarifications.mp457.11MB
7. Estimators and estimates/8. Student's T distribution.mp435.41MB
8. Confidence intervals advanced topics/1. Calculating confidence intervals for two means with dependent samples.mp470.5MB
8. Confidence intervals advanced topics/3. Calculating confidence intervals for two means with independent samples (part 1).mp428.76MB
8. Confidence intervals advanced topics/5. Calculating confidence intervals for two means with independent samples (part 2).mp426.82MB
8. Confidence intervals advanced topics/7. Calculating confidence intervals for two means with independent samples (part 3).mp419.88MB
9. Practical example inferential statistics/1. Practical example inferential statistics.mp4102.59MB