• Post category:StudyBullet-22
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Linear Regression and Logistic Regression for beginners. Understand the difference between Regression & Classification
⏱️ Length: 6.2 total hours
⭐ 4.61/5 rating
πŸ‘₯ 61,420 students
πŸ”„ September 2025 update

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  • Course Overview

  • This course provides a focused, hands-on introduction to Linear and Logistic Regression, foundational predictive models, entirely within the R Studio environment.
  • Designed for beginners, it clarifies the critical distinction between regression (continuous) and classification (categorical) problems for effective model application.
  • You will develop practical skills in using R for essential data analysis, statistical modeling, and interpretative insights, moving from theory to immediate application.
  • Leverage an updated curriculum (September 2025) and a high-rated structure, guiding over 61,000 students through core data science concepts efficiently.
  • Requirements / Prerequisites

  • Basic computer literacy and familiarity with installing software are the primary technical prerequisites.
  • A fundamental grasp of high-school level math and basic statistics, though core concepts are revisited, will be beneficial.
  • No prior R programming experience is needed; this course teaches R from the ground up for data science tasks.
  • An eagerness to learn and apply data-driven problem-solving techniques is the most crucial non-technical requirement.
  • Skills Covered / Tools Used

  • Mastering the efficient workflow and debugging capabilities within the R Studio Integrated Development Environment (IDE).
  • Gaining practical proficiency in core R programming syntax for data manipulation and analytical tasks.
  • Techniques for effective data loading, cleaning, and preliminary data preparation for modeling in R.
  • Methods for feature engineering to create impactful variables and enhance predictive model performance.
  • Applying statistical inference, including hypothesis testing and p-value interpretation, to validate model assumptions and predictor significance.
  • Constructing and interpreting Linear Regression models (`lm()`) for predicting continuous outcomes in R.
  • Building and evaluating Logistic Regression models (`glm()`) for binary classification challenges in R.
  • Utilizing diverse model evaluation metrics (e.g., R-squared, AUC, Confusion Matrix) to rigorously assess model effectiveness.
  • Implementing cross-validation strategies to ensure model robustness and generalizability to new, unseen data.
  • Generating insightful data visualizations using R’s powerful libraries to effectively communicate analytical findings.
  • Translating complex statistical outputs into clear, actionable business intelligence and strategic recommendations.
  • Benefits / Outcomes

  • Confidently build, evaluate, and interpret foundational predictive models (linear and logistic) using R on real-world data.
  • Develop a structured approach to data analysis and problem-solving, from raw data to actionable insights.
  • Establish a robust analytical foundation, preparing you for more advanced machine learning algorithms and complex data science roles.
  • Create practical projects for a data science portfolio, showcasing your R Studio and modeling skills to prospective employers.
  • Empower yourself to make data-driven predictions and strategic decisions across various industries and business functions.
  • Enhance your ability to clearly communicate complex statistical results to both technical and non-technical audiences effectively.
  • PROS

  • Specifically designed for absolute beginners, offering a clear and non-intimidating entry into predictive analytics.
  • Provides hands-on, practical experience with R Studio, ensuring immediate skill application and development.
  • Covers universally applicable and in-demand models essential for any data-driven career path.
  • Benefits from a large, active student community and content consistently updated for relevance (Sept 2025).
  • Offers a time-efficient learning path (6.2 hours) to acquire core data science modeling competencies rapidly.
  • Delivers high-value, professional skills at an accessible price point, democratizing data science education.
  • CONS

  • True mastery requires consistent self-practice and exploration of additional datasets beyond the course curriculum.
Learning Tracks: English,Development,Data Science
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