# 预测分析

## Predictive Analytics

Master the tools of predictive analytics in this statistics based analytics course.

1533 次查看

edX
• 完成时间大约为 7
• 高级
• 英语, 其他

### 你将学到什么

Understand how to use predictive analytics tools to analyze real-life business problems.

Demonstrate case-based practical problems using predictive analytics techniques to interpret model outputs.

Learn regression, logistic regression, and forecasting using software tools such as MS Excel, SPSS, and SAS.

### 课程概况

Decision makers often struggle with questions such as: What should be the right price for a product? Which customer is likely to default in his/her loan repayment? Which products should be recommended to an existing customer? Finding right answers to these questions can be challenging yet rewarding.

Predictive analytics is emerging as a competitive strategy across many business sectors and can set apart high performing companies. It aims to predict the probability of the occurrence of a future event such as customer churn, loan defaults, and stock market fluctuations – leading to effective business management.

Models such as multiple linear regression, logistic regression, auto-regressive integrated moving average (ARIMA), decision trees, and neural networks are frequently used in solving predictive analytics problems. Regression models help us understand the relationships among these variables and how their relationships can be exploited to make decisions.

This course is suitable for students/practitioners interested in improving their knowledge in the field of predictive analytics. The course will also prepare the learner for a career in the field of data analytics. If you are in the quest for the right competitive strategy to make companies successful, then join us to master the tools of predictive analytics.

### 预备知识

Advanced Statistical Concepts: Descriptive statistics, Probability Distribution, Hypothesis testing, ANOVA
Software Requisites:  SPSS / SAS / STATA

Apple 广告
##### 声明：MOOC中国十分重视知识产权问题，我们发布之课程均源自下列机构，版权均归其所有，本站仅作报道收录并尊重其著作权益。感谢他们对MOOC事业做出的贡献！
• Coursera
• edX
• OpenLearning
• FutureLearn
• iversity
• Udacity
• NovoEd
• Canvas
• Open2Study
• ewant
• FUN
• IOC-Athlete-MOOC
• World-Science-U
• CourseSites
• opencourseworld
• ShareCourse
• gacco