Welcome to the Ball State University course “Statistical Methods for Data Science.” As the title suggests, this course provides fundamental concepts and methods for data-generating mechanisms such as probability models and inferential methods such as estimation and hypothesis testing. scientists. You will need the right tools and analytics methods to make good sense of data and to make data-driven decisions. We are going to take a systematic approach to build a strong foundation on probability and probability models, large sample theory as a bridge between probability theory and inference, and basic inferential processes. Please note that as data scientists, it is important for us to be able to connect data and learn how the world around us works. To accomplish this challenging task, we will learn how we can connect data through probability theory and statistical models and take actionable decisions, confirm a hypothesis, or make predictions.
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7 项作业
了解顶级公司的员工如何掌握热门技能

该课程共有5个模块
Welcome! In part 1 of this module you will complete a recommended reading about the course and post on a discussion board entry to introduce yourself to your classmates. In part 2 of this module, we will review probability theory and its applications to real-world problem-solving. Probability is a measure of the chance of occurrence of a future event. For example, what is the probability that you will see two heads when you toss two coins? It is ¼, right? Why do you care about learning probability? Here is a quote by the ancient Greek philosopher Democritus “Everything existing in the universe is the fruit of chance”. Thus, it is important for us to have basic probability knowledge. In data science, probability helps us understand how data is generated and plays a major role in inference and prediction.In this module, we will review three definitions of probability, probability laws, conditional probability, and Bayes' rule. Knowledge of conditional probability is essential in most practical problems. Bayes' rule provides a mechanism for determining conditional probabilities when prior probabilities are given.
涵盖的内容
12个视频7篇阅读材料1个作业1次同伴评审1个非评分实验室
12个视频• 总计49分钟
- Ball State University Coursera Open Content Course• 2分钟
- Welcome to DSCI 602• 3分钟
- Module 1 Overview• 2分钟
- Probability Definition• 4分钟
- Probability Laws• 5分钟
- Conditional Probability• 4分钟
- Example - Bus Ridership Part A• 3分钟
- Example - Bus Ridership Part B• 3分钟
- Example - Bus Ridership Part C• 7分钟
- Bayes Rule• 5分钟
- Example - Bayes Rule Part A• 7分钟
- Example - Bayes Rule Part B• 4分钟
7篇阅读材料• 总计120分钟
- Learn More About This Course!• 6分钟
- Read the Course Syllabus• 11分钟
- IMPORTANT NOTE for Fall 2024• 10分钟
- Module 1 Learning Guide• 2分钟
- Module 1 Supplemental Materials• 60分钟
- Module 1 Lecture Notes• 30分钟
- Module 1 Summary• 1分钟
1个作业• 总计60分钟
- Module 1 Graded Quiz• 60分钟
1次同伴评审• 总计60分钟
- Step 2: Module 1 - Reflective Practice Assignment• 60分钟
1个非评分实验室• 总计60分钟
- Step 1: Module 1 - Reflective Practice Assignment Lab• 60分钟
In this module, we will talk about random variables which are basically a mapping or correspondence between the sample space of a random experiment and the real number system.
涵盖的内容
10个视频6篇阅读材料2个作业1个非评分实验室
10个视频• 总计59分钟
- Module 3 Overview• 1分钟
- What are Random Variables?• 6分钟
- Discrete Random Variables• 7分钟
- Expexted Value and Variance of a Discrete Random Variable (Example)• 7分钟
- Expexted Value and Variance of a Discrete Random Variable (Simulation Example)• 7分钟
- Continuous Random Variables• 7分钟
- Expexted Value and Variance of a Continuous Random Variable (Example)• 6分钟
- Expexted Value and Variance of a Discrete Random Variable (Example Using R)• 5分钟
- Additional Properties Part I• 7分钟
- Additional Properties Part II• 6分钟
6篇阅读材料• 总计186分钟
- Module 3 Learning Guide• 3分钟
- Module 3 Supplement• 90分钟
- Expexted Value and Variance of a Discrete Random Variable (Example)• 30分钟
- Expexted Value and Variance of a Continuous Random Variable (Example)• 30分钟
- Module 3 Lecture Notes• 30分钟
- Module 3 Summary• 3分钟
2个作业• 总计120分钟
- Module 3 Ungraded Practice Quiz• 60分钟
- Module 3 Graded Quiz• 60分钟
1个非评分实验室• 总计60分钟
- Module 3 R Code Examples• 60分钟
In this module, we will learn about discrete probability distributions based on what is known as Bernoulli Trials. You will learn about Bernoulli, Binomial, Geometric, and Negative Binomial Distributions. These distributions are widely used in numerous applications including health and biomedical sciences, social sciences, environmental sciences, finance and business, and education among others.
涵盖的内容
10个视频6篇阅读材料2个作业
10个视频• 总计58分钟
- Module 4 Overview• 1分钟
- PMF and CDF of a Discrete Random Variable• 6分钟
- Bernoulli Trial and Distribution• 6分钟
- Binomial Distribution• 6分钟
- A Parking Space Problem Part I (Example)• 7分钟
- A Parking Space Problem Part II (Example)• 6分钟
- Geometric Distribution• 6分钟
- Negative Binomial Distribution• 7分钟
- A Parking Space Problem Part III (Example)• 7分钟
- Negative Binomial Distribution (Example)• 5分钟
6篇阅读材料• 总计156分钟
- Module 4 Learning Guide• 3分钟
- Module 4 Supplement• 60分钟
- A Parking Space Problem (Example)• 30分钟
- A Parking Space Problem (Example)• 30分钟
- Module 4 Lecture Notes• 30分钟
- Module 4 Summary• 3分钟
2个作业• 总计120分钟
- Module 4: Ungraded Practice quiz• 60分钟
- Module 4 Graded Quiz• 60分钟
This module covers continuous probability distributions. In the real world, not all random variables are discrete. For example, daily rainfall amount, the lifetime of an equipment, biological measures such as the body mass index or BMI and Cholesterol levels, and various test scores take values in intervals and are called continuous random variables.
涵盖的内容
11个视频8篇阅读材料1个作业1个编程作业1次同伴评审1个非评分实验室
11个视频• 总计64分钟
- Module 6 Overview• 2分钟
- PDF and CDF of a CRV Part I• 6分钟
- PDF and CDF of a CRV Part II• 7分钟
- PDF and CDF of a CRV (Example - Part I)• 7分钟
- PDF and CDF of a CRV (Example - Part II)• 7分钟
- The Uniform Distribution• 8分钟
- The Uniform Distribution (Example Part I)• 7分钟
- The Uniform Distribution (Example Part II)• 5分钟
- The Normal Distribution• 6分钟
- The Standard Normal Distribution• 5分钟
- The Normal Distribution (Example)• 5分钟
8篇阅读材料• 总计246分钟
- Module 6 Learning Guide• 3分钟
- Module 6 Supplement• 60分钟
- PDF and CDF of a CRV (Example - pdf file)• 30分钟
- The Uniform Distribution (Example - pdf file)• 30分钟
- The Normal Distribution (Example - pdf file)• 30分钟
- Module 6 Lecture Notes• 30分钟
- Module 6 Summary• 3分钟
- Module 6 Practice Problems• 60分钟
1个作业• 总计60分钟
- Module 6 Graded Quiz• 60分钟
1个编程作业• 总计180分钟
- Module 6: Graded RStudio Lab • 180分钟
1次同伴评审• 总计60分钟
- Step 2: Module 6 Reflective Assignment - Continuous Probability Distributions Part I• 60分钟
1个非评分实验室• 总计60分钟
- Step 1: Module 6 - Reflective Practice Assignment Lab• 60分钟
In this module, we will revisit Normal distribution and its attractive properties. You will see how the law of large numbers can be used to approximate the distributions of sum or average of sample data.
涵盖的内容
14个视频5篇阅读材料1个作业1个编程作业1次同伴评审2个非评分实验室
14个视频• 总计80分钟
- Module 9 Overview• 1分钟
- Introduction to the Second Part of the Course• 5分钟
- Properties of Normal Distribution Part I• 7分钟
- Properties of Normal Distribution Part II• 6分钟
- Example - Cumulative Round Off Error• 5分钟
- Chi-squared Distribution Part I• 8分钟
- Chi-squared Distribution Part II• 6分钟
- Example - Error in Pin Replacement• 7分钟
- Example - Visualize Chi-squared distribution• 7分钟
- Example - Quantile of a Chi-squared distribution• 7分钟
- The Students' t Distribution• 6分钟
- The F Distribution• 7分钟
- Example t and F distribution visualization• 5分钟
- Congratulations!• 1分钟
5篇阅读材料• 总计123分钟
- Module 9 Learning Guide• 2分钟
- Module 9 Supplement• 30分钟
- Module 9 Lecture Notes• 30分钟
- Module 9 Summary• 1分钟
- Module 9 Practice Problems• 60分钟
1个作业• 总计60分钟
- Module 9 Graded Quiz• 60分钟
1个编程作业• 总计180分钟
- Module 9: RStudio Graded Lab • 180分钟
1次同伴评审• 总计60分钟
- Step 2: Module 9 Reflection Assignment• 60分钟
2个非评分实验室• 总计120分钟
- Module 9 R Code Examples • 60分钟
- Step 1: Module 9 Reflection Assignment• 60分钟
攻读学位
课程 是 Ball State University提供的以下学位课程的一部分。如果您被录取并注册,您已完成的课程可计入您的学位学习,您的学习进度也可随之转移。
攻读学位
课程 是 Ball State University提供的以下学位课程的一部分。如果您被录取并注册,您已完成的课程可计入您的学位学习,您的学习进度也可随之转移。
Ball State University
Master of Science in Data Science
学位 · 24 months
必须成功申请并注册。资格要求适用。各院校会根据您现有的学分情况,确定完成本课程后可计入学位要求的学分。单击特定课程了解更多信息。
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Ball State Online offers more than 110 online programs in high-demand fields and consistently lands in the Top 20 of the U.S. News & World Report “Best Online Programs” and “Best Online Programs for Veterans” national ranking for several of its online bachelor’s and graduate degrees. Ball State focuses on the student experience, placing emphasis on personal attention from faculty and immersive learning.
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