09-15-2024, 12:44 AM
Applied Statistics Real World Problem Solving
Published 8/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.20 GB | Duration: 3h 1m
Applied Statistics Real World Problem Solving
[b]What you'll learn[/b]
Understand and differentiate data types in statistics: Gain a comprehensive understanding of various data types and their applications in business statistics.
Apply measures of central tendency and dispersion: Learn how to calculate and interpret mean, median, mode, standard deviation, and more.
Perform hypothesis testing and confidence intervals: Master the skills needed to conduct hypothesis tests and calculate confidence intervals using real-world da
Analyze relationships between variables: Develop the ability to use correlation coefficients, scatter plots, and advanced statistical techniques to identify and
[b]Requirements[/b]
Basic understanding of mathematics: A fundamental knowledge of mathematics is helpful but not mandatory.
Interest in data analysis: A keen interest in learning how to analyze and interpret data effectively.
No programming experience needed: You will learn everything you need to know about applied statistics without any prior programming experience.
[b]Description[/b]
Applied Statistics: Real World Problem Solving is a comprehensive course designed to equip you with the statistical tools and techniques needed to analyze real-world data and make informed decisions. Whether you're a business analyst, data scientist, or simply looking to enhance your data analysis skills, this course will provide you with a solid foundation in applied statistics.Key Topics Covered:Introduction to Business Statistics: Understand the basics of data types and their relevance in business, along with the differences between quantitative and qualitative data.Measures of Central Tendency: Learn about mean, median, and mode, and their importance in summarizing data.Measures of Dispersion: Explore standard deviation, mean deviation, and quantile deviation to understand data variability.Distributions and the Central Limit Theorem: Dive into different types of distributions and grasp the central limit theorem's significance.Sampling and Z-Scores: Understand the concepts of sampling from a uniform distribution and calculating Z-scores.Hypothesis Testing: Learn about p-values, hypothesis testing, t-tests, confidence intervals, and ANOVA.Correlation: Study the Pearson correlation coefficient and its advantages and challenges.Advanced Statistical Concepts: Differentiate between correlation and causation, and perform in-depth hypothesis testing.Data Cleaning and Preprocessing: Master techniques for cleaning and preprocessing data, along with plotting histograms and detecting outliers.Statistical Analysis and Visualization: Summarize data with summary statistics, visualize relationships between variables using pair plots, and handle high correlations using heat maps.What You'll Gainractical Skills: Apply statistical techniques to real-world problems, making data-driven decisions in your professional field.Advanced Understanding: Develop a deep understanding of statistical concepts, from basic measures of central tendency to advanced hypothesis testing.Hands-On Experience: Engage in practical exercises and projects to solidify your knowledge and gain hands-on experience.Who This Course Is For:Business Analysts: Looking to enhance their data analysis skills.Data Scientists: Seeking to apply statistical techniques to solve complex problems.Students and Professionals: Interested in mastering applied statistics for career advancement.Prerequisites:Basic Understanding of Mathematics: No prior programming experience needed.Interest in Data Analysis: A keen interest in learning how to analyze and interpret data effectively.By the end of this course, you will be equipped with the skills and knowledge to tackle real-world data problems using applied statistics. Enroll now and take the first step towards becoming proficient in statistical analysis!
Overview
Section 1: Introduction to Business Statistics
Lecture 1 Introduction to Data Types and Business Statistics
Lecture 2 Quantitative vs Qualitative Data: A Comparative Analysis
Lecture 3 Measures of Central Tendency: Mean, Median, and Mode
Section 2: Measures of Dispersion and Distributions
Lecture 4 Understanding Measures of Dispersion
Lecture 5 Introduction to Distributions and the Central Limit Theorem
Lecture 6 Sampling and Z-Scores
Section 3: Hypothesis Testing and Correlation
Lecture 7 Hypothesis Testing and P-Value Interpretation
Lecture 8 T-tests, Confidence Intervals, and ANOVA
Lecture 9 Pearson Correlation Coefficient Explained
Section 4: Advanced Statistical Concepts
Lecture 10 Advanced Hypothesis Testing and Correlation Analysis
Lecture 11 Data Cleaning and Preprocessing Techniques
Lecture 12 Visualizing Data with Histograms and Box Plots
Section 5: Statistical Analysis and Visualization
Lecture 13 Summary Statistics and Variable Relationships
Lecture 14 Correlation and Pair Plots
Lecture 15 Handling High Correlation and Using Heat Maps
Lecture 16 Practical Exercises: Pearson Correlation and Hypothesis Testing
Business analysts: Professionals looking to enhance their data analysis skills for better decision-making.,Students and professionals: Those interested in mastering applied statistics for career advancement.,Researchers: Academics and researchers needing to apply statistical methods to their work for accurate results.,Data scientists: Individuals seeking to apply statistical techniques to solve complex problems.
[b]What you'll learn[/b]
Understand and differentiate data types in statistics: Gain a comprehensive understanding of various data types and their applications in business statistics.
Apply measures of central tendency and dispersion: Learn how to calculate and interpret mean, median, mode, standard deviation, and more.
Perform hypothesis testing and confidence intervals: Master the skills needed to conduct hypothesis tests and calculate confidence intervals using real-world da
Analyze relationships between variables: Develop the ability to use correlation coefficients, scatter plots, and advanced statistical techniques to identify and
[b]Requirements[/b]
Basic understanding of mathematics: A fundamental knowledge of mathematics is helpful but not mandatory.
Interest in data analysis: A keen interest in learning how to analyze and interpret data effectively.
No programming experience needed: You will learn everything you need to know about applied statistics without any prior programming experience.
[b]Description[/b]
Applied Statistics: Real World Problem Solving is a comprehensive course designed to equip you with the statistical tools and techniques needed to analyze real-world data and make informed decisions. Whether you're a business analyst, data scientist, or simply looking to enhance your data analysis skills, this course will provide you with a solid foundation in applied statistics.Key Topics Covered:Introduction to Business Statistics: Understand the basics of data types and their relevance in business, along with the differences between quantitative and qualitative data.Measures of Central Tendency: Learn about mean, median, and mode, and their importance in summarizing data.Measures of Dispersion: Explore standard deviation, mean deviation, and quantile deviation to understand data variability.Distributions and the Central Limit Theorem: Dive into different types of distributions and grasp the central limit theorem's significance.Sampling and Z-Scores: Understand the concepts of sampling from a uniform distribution and calculating Z-scores.Hypothesis Testing: Learn about p-values, hypothesis testing, t-tests, confidence intervals, and ANOVA.Correlation: Study the Pearson correlation coefficient and its advantages and challenges.Advanced Statistical Concepts: Differentiate between correlation and causation, and perform in-depth hypothesis testing.Data Cleaning and Preprocessing: Master techniques for cleaning and preprocessing data, along with plotting histograms and detecting outliers.Statistical Analysis and Visualization: Summarize data with summary statistics, visualize relationships between variables using pair plots, and handle high correlations using heat maps.What You'll Gainractical Skills: Apply statistical techniques to real-world problems, making data-driven decisions in your professional field.Advanced Understanding: Develop a deep understanding of statistical concepts, from basic measures of central tendency to advanced hypothesis testing.Hands-On Experience: Engage in practical exercises and projects to solidify your knowledge and gain hands-on experience.Who This Course Is For:Business Analysts: Looking to enhance their data analysis skills.Data Scientists: Seeking to apply statistical techniques to solve complex problems.Students and Professionals: Interested in mastering applied statistics for career advancement.Prerequisites:Basic Understanding of Mathematics: No prior programming experience needed.Interest in Data Analysis: A keen interest in learning how to analyze and interpret data effectively.By the end of this course, you will be equipped with the skills and knowledge to tackle real-world data problems using applied statistics. Enroll now and take the first step towards becoming proficient in statistical analysis!
Overview
Section 1: Introduction to Business Statistics
Lecture 1 Introduction to Data Types and Business Statistics
Lecture 2 Quantitative vs Qualitative Data: A Comparative Analysis
Lecture 3 Measures of Central Tendency: Mean, Median, and Mode
Section 2: Measures of Dispersion and Distributions
Lecture 4 Understanding Measures of Dispersion
Lecture 5 Introduction to Distributions and the Central Limit Theorem
Lecture 6 Sampling and Z-Scores
Section 3: Hypothesis Testing and Correlation
Lecture 7 Hypothesis Testing and P-Value Interpretation
Lecture 8 T-tests, Confidence Intervals, and ANOVA
Lecture 9 Pearson Correlation Coefficient Explained
Section 4: Advanced Statistical Concepts
Lecture 10 Advanced Hypothesis Testing and Correlation Analysis
Lecture 11 Data Cleaning and Preprocessing Techniques
Lecture 12 Visualizing Data with Histograms and Box Plots
Section 5: Statistical Analysis and Visualization
Lecture 13 Summary Statistics and Variable Relationships
Lecture 14 Correlation and Pair Plots
Lecture 15 Handling High Correlation and Using Heat Maps
Lecture 16 Practical Exercises: Pearson Correlation and Hypothesis Testing
Business analysts: Professionals looking to enhance their data analysis skills for better decision-making.,Students and professionals: Those interested in mastering applied statistics for career advancement.,Researchers: Academics and researchers needing to apply statistical methods to their work for accurate results.,Data scientists: Individuals seeking to apply statistical techniques to solve complex problems.