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study.com Statistics 101
  • Gavin Walton
  • August 18, 2024

What’s up, future statistician? Are you prepared to explore the exciting realm related to mathematics, particularly statistics? Welcome to study.com Statistics 101: Principles of Statistics. Maybe you love math and numbers are your best friends or maybe you are just taking this class because you have to. Well this course is your pass to fluency in stats. What we are going to do is turn this experience for you into something really quite fun. 

Here, you will understand how data sets work, probabilities, hypothesis testing, and more in this class. Well, these are not just random terms that you’ll find in books; these are practical tools that you will find use in real life when reviewing business cycles, conducting your experiments in a lab, or even when making a decision in your own life. So, buckle up! These appear to be rather scary numbers, yet we are about to make them your best buddies.

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What to Know Before Taking study.com Statistics 101📖

Okay, let me tell you what study.com Statistics 101: Principles of Statistics is about. This course is a map of what you need to know regarding statistics and it marks the important features that you should learn. By the end of the program, you’ll be speaking ‘stats’ fluently and will be able to solve any statistical problem that you come across.

Descriptive Statistics: To start with, it will be appropriate to get acquainted with the general notions. As the name implies, descriptive statistics is all about data summarization and data organization. That will enable you to compute measures of central tendency such as mean, median, and mode; and measures of spread such as range and standard deviation. These tools assist you in telling the story with and behind the numbers by making patterns out of the numbers.

Probability: In the next chapter, we will be discussing Probability which is the very core of statistics. This section is intended to explain to you how to compute the probability of the various events. You’ll use the terms random variables, probability distributions, and the law of large numbers among other ideas. This is quite important because probability provides the grounds for making the inputs or forecasts of certain occurrences in line with the data gathered.

Inferential Statistics: Finally, it moves to inferential statistics – a topic that needs prior knowledge in descriptive statistics. This is something that makes all education interesting! You will discover how conclusions regarding the population are made using the sample data. Subjects such as hypothesis, interval estimation, and p-values will become something that you easily recognize. This part is probed a lot in the exam, so try to master these ideas as well as possible.

Regression and Correlation: Ultimately, it will be discussed how measures are connected through regression and correlation methods. You will learn about the construction and use of scatter diagrams, the calculation of the correlation coefficient, and the use of regression lines. These techniques are very powerful in pattern exploitation and the hypothesis of the relationship in data.

This class will arm you with knowledge of statistics and enable you to analyze data by the time you leave this class. Keep in mind, all these concepts that you are going to learn are not only head stuff – these are everyday regulating instruments that you are going to apply in the real world more often than not.

Week-by-Week Study Guide to Ace Statistics 101 Exam 📝

Let’s take each week thoroughly to make it easy for you to pass the study.com Statistics 101: Principles of Statistics. Follow the guidelines of this plan, and you should do very well!

Week 1: Getting Started with Descriptive Statistics

  • Tasks:
    • Watch the introductory videos on descriptive statistics.
    • Read up on measures of central tendency (mean, median, mode) and measures of spread (range, standard deviation).
    • Practice calculating these measures using sample data sets.
    • External Resource: Khan Academy’s Introduction to Statistics
  • Tip: Focus on understanding how to summarize data sets effectively. This will be your foundation for more complex topics.

Week 2: Diving into Probability

  • Tasks:
    • Learn the basics of probability, including definitions and simple probability calculations.
    • Study different types of probability distributions (discrete and continuous).
    • Practice problems involving probability calculations.
    • External Resource: CrashCourse’s Probability
  • Tip: Don’t just memorize formulas—understand the concepts behind them. This will help you tackle tricky questions.

Week 3: Exploring Random Variables and Distributions

  • Tasks:
  • Tip: Use real-world examples to grasp how different distributions apply to various scenarios.

Week 4: Mastering Inferential Statistics

  • Tasks:
    • Study hypothesis testing and confidence intervals.
    • Learn how to perform and interpret t-tests and z-tests.
    • Practice constructing and analyzing confidence intervals.
    • External Resource: Khan Academy’s Inferential Statistics
  • Tip: Pay attention to the logic behind hypothesis testing. Knowing when to reject the null hypothesis is key.

Week 5: Regression and Correlation Analysis

  • Tasks:
    • Watch lessons on scatter plots, correlation coefficients, and linear regression.
    • Learn how to create and interpret regression lines.
    • Practice solving problems involving regression and correlation.
    • External Resource: Khan Academy’s Linear Regression
  • Tip: Practice plotting data points and drawing regression lines. Visualization helps in understanding these concepts better.

Week 6: Comprehensive Review and Practice Tests

  • Tasks:
    • Review all previous topics and revisit any areas where you feel less confident.
    • Take practice tests to familiarize yourself with the exam format and question types.
    • External Resource: Quizlet’s Statistics 101 Flashcards
  • Tip: Time yourself while taking practice tests to improve your speed and accuracy under exam conditions.

Week 7: Final Prep and Relaxation

  • Tasks:
    • Go over your notes and highlight key concepts.
    • Do a final round of practice problems, focusing on weaker areas.
    • Get plenty of rest and keep stress levels low.
    • External Resource: Study.com’s Practice Quizzes and Exams
  • Tip: Don’t cram! A well-rested mind performs better. Trust your preparation and stay calm.

As we know, it means that when you stick to this plan you are likely to succeed in passing the exam and also do it calmly. Now it is time to continue with some of the external resources that can help you comprehend the topic even better. Ready?

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Free External Resources to Study📂

Having a variety of resources can make studying more effective and engaging. Here are some excellent free resources available online to help you understand difficult concepts in study.com Statistics 101: Principles of Statistics.

  1. YouTube Channels and Playlists
  • Khan Academy
    • Statistics and Probability Playlist: Below is the list of plays that I have prepared from simple statistics to the more complex ones. The points are understandable and substantiated by examples which makes following them possible.
    • Khan Academy Statistics Playlist
  • CrashCourse
  • Statistics Playlist: This channel offers engaging and quick lessons on various statistics topics. It’s perfect for quick reviews or getting a different perspective on a topic.
  • CrashCourse Statistics Playlist
  • StatQuest with Josh Starmer
  • Statistics Basics: Josh’s clear and concise explanations make even the most complex concepts easy to understand. His videos are especially good for visual learners.
  • StatQuest Statistics Basics

 

  1. Online Flashcards and Study Guides
  • Quizlet
  • Statistics 101 Flashcards: These flashcards cover key terms and concepts from the course. They’re great for quick reviews and memorization.
  • Quizlet Statistics 101 Flashcards
  • Chegg Study
  • Statistics Study Guides: There is a variety of study guides that Chegg has for students, which give clear descriptions of subjects in statistics. However, there is some content that needs a subscription but there are many free resources as well.
  • Chegg Statistics Study Guides
  • Study.com
  • Course Practice Quizzes: Utilize the practice quizzes available on study.com to test your knowledge and prepare for the exam. These quizzes are tailored to the course material and will give you a good sense of what to expect on the exam.
  • Study.com Practice Quizzes
  1. Free E-Books and Online Textbooks
  • OpenStax
  • Introductory Statistics: OpenStax offers a free textbook that is reviewed by other educators and professionals as well and includes a great number of concepts regarding statistics. It is helpful for further elaboration and as a medium of practice problems in the tests.
  • OpenStax Introductory Statistics
  • MIT OpenCourseWare
  • Introduction to Probability and Statistics: This free course material includes lecture notes, assignments, and exams from a full semester statistics course at MIT.
  • MIT OpenCourseWare Statistics
  1. Interactive Websites
  • Stat Trek
  • Statistics Tutorial: This online source provides lessons, quizzes, and other reliable tools like calculators for learning all the aspects of statistics.
  • Stat Trek Statistics Tutorial
  • Wolfram Alpha
  • Computational Engine: Use Wolfram Alpha to compute probabilities, generate distributions, and perform various statistical calculations. It’s an excellent tool for checking your work and exploring different statistical scenarios.
  • Wolfram Alpha

Utilizing these external resources will give you a broader understanding and reinforce the material covered in your study.com Statistics 101: Principles of Statistics course. Up next, we’ll dive into some key topics you should focus on to ensure you’re well-prepared for the exam. Ready to tackle the tough stuff? Let’s go!

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Key Topics to Focus On🔑

To ace your study.com Statistics 101: Principles of Statistics exam, focusing on key topics is crucial. Here, we break down some of the most important concepts with explanations, comparisons, and examples to make them easier to understand.

  • Measures of Central Tendency: Mean, Median, and Mode
Measure
Definition
When to Use
Example
Mean
The sum of all data points is divided by the number of data points.
Use when data is symmetrically distributed without outliers.
Average score of students in a class.
Median
The middle value is when data points are ordered from least to greatest.
Use when data is skewed or has outliers.
Median income of households in a city.
Mode
The most frequently occurring value in a data set.
Use when data has repeating values.
The most common shoe size sold in a store.
  • Probability Distributions: Discrete vs. Continuous
Characteristic
Discrete Distribution
Continuous Distribution
Definition
Probability distribution of a discrete random variable (countable outcomes).
Probability distribution of a continuous random variable (uncountable outcomes).
Example
Rolling a die (outcomes: 1, 2, 3, 4, 5, 6).
Measuring height (outcomes: any value within a range).
Graph
Probability Mass Function (PMF)
Probability Density Function (PDF)
Usage
Number of customers visiting a store.
Time is taken to serve a customer.
  • Hypothesis Testing: Null and Alternative Hypotheses
Term
Definition
Example
Null Hypothesis (H0)
A statement that there is no effect or no difference; is the hypothesis that the study seeks to disprove.
H0: The new drug has no effect on blood pressure.
Alternative Hypothesis (HA)
A statement that there is an effect or a difference; is what the study aims to prove.
HA: The new drug lowers blood pressure.
  • Example: Testing a new teaching method:
    • H0: The new teaching method does not improve student performance.
    • HA: The new teaching method improves student performance.
  • Correlation vs. Causation
Aspect
Correlation
Causation
Definition
A statistical measure that indicates the extent to which two variables fluctuate together.
A relationship between two variables where one variable causes a change in another.
Example
Ice cream sales and drowning incidents are correlated because both increase in summer.
Smoking causes an increase in the risk of lung cancer.
Key Point
Correlation does not imply causation.
Causation implies a direct effect.
  • Real-World Example:
    • Correlation: There is a correlation between coffee consumption and heart rate.
    • Causation: Consuming caffeine increases heart rate.

Familiarity with these topics and their usage will go a long way in improving your confidence as well as efficiency in this study.com Statistics 101: Principles of Statistics exam. Coming up now, let us give some answers to some questions that people may have in their minds. Ready to tackle them? Let’s go!

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FAQ❓

Q: What is the difference between a population and a sample?

A: Population refers to all the members of a given group whereas a sample is a part of the population on which statistical analysis is carried out.

Q: When should I use the mean and when should I use the median to report the center of the data?

A: Employ the mean for data that are uniformly distributed and contain no extreme values of meat. It is applied when dealing with skewed data and data that contains large numbers of outliers.

Q: Explain Hypothesis testing and the difference between Type I and Type II Errors.

A: Type I Error: Adopting false null hypothesis or in other words negative hypothesis. Type II Error: A type II error is committed when the null hypothesis is not rejected when it is in fact false.

Q: What is p-value and how will you explain the result that is expressed in terms of this value?

A: A p-value gives the likelihood of obtaining results if indeed there is no relationship between the variables a null hypothesis holds. When the obtained p-value is less than 0. 05 most often results in the rejection of the null hypothesis.

Q: How do I determine if two of the variables are dependent on each other?

A: Identify and compute coefficients of the correlation. Closely to 1 or -1 means a close relationship while the number close to zero shows no relationship.

Q: What is the major difference between a discrete and a continuous random variable?

A: The discrete variable has countable values which means it takes individual values on counting (number of students). The continuous variables have an area that they cover and hold innumerable values (for instance, height).

Q: What is the meaning of the Central Limit Theorem and why is it relevant?

A: Before that, there was a fundamental theorem known as the Central Limit Theorem that provides a rationale for making tentative decisions regarding populations through the use of the sample means as assumptions indicate that, the sampling distribution of sample mean approximated that of a normal distribution the larger the sample size, the better.

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Statistics 101: Final Summary 📄

Congratulations on getting to the end of this detailed guide on how to conquer “study.com Statistics 101: Principles of Statistics.” This course is specifically developed to teach students about statistics and simplify the way these concepts are taught. Sticking to the strategies and materials highlighted in the study schedule, you have all the chances to succeed in the exam. Note the following, statistics is not merely an arithmetic tool, it is all about dealing with data and decision-making from a data perspective. 

It is recommended to stay as close as possible to the schedule, make use of external material, and adhere to the primary topics marked. It is OK to go over the tough issues again and safely ask for assistance if required. The FAQ section is there to help mitigate any concerns, thus helping you achieve your way through any dilemmas. As much as possible, be positive and exercise or rehearse on a daily basis. If you set your mind on it and work hard, not only will you pass the exam but you will also be of enormous benefit to yourself knowledge-wise for the rest of your academic years. Happy studying!

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