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Regression & Forecasting for Data Scientists using Python

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Regression & Forecasting for Data Scientists using Python

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Gain insight into a topic and learn the fundamentals.
4.5

43 reviews

Intermediate level

Recommended experience

1 week to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

Gain insight into a topic and learn the fundamentals.
4.5

43 reviews

Intermediate level

Recommended experience

1 week to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

What you'll learn

  • Develop expertise in time series analysis, forecasting, and linear regression

    Analyze techniques for exploratory data analysis, trend identification

  • Understand various time-series models and implement them using Python

    Prepare and preprocess data for accurate linear regression modeling

  • Build and interpret linear regression models for informed decision-making

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Assessments

21 assignments

Taught in English

There are 4 modules in this course

Course Description: This course provides comprehensive training in regression analysis and forecasting techniques for data science, emphasizing Python programming. You will master time-series analysis, forecasting, linear regression, and data preprocessing, enabling you to make data-driven decisions across industries.

Learning Objectives: β€’ Develop expertise in time series analysis, forecasting, and linear regression. β€’ Gain proficiency in Python programming for data analysis and modeling. β€’ Analyze the techniques for exploratory data analysis, trend identification, and seasonality handling. β€’ Figure out various time-series models and implement them using Python. β€’ Prepare and preprocess data for accurate linear regression modeling. β€’ Predict and interpret linear regression models for informed decision-making. There are Four Modules in this Course: Module 1: Time-Series Analysis and Forecasting Module description: The Time-Series Analysis and Forecasting module provides a comprehensive exploration of techniques to extract insights and predict trends from sequential data. You will master fundamental concepts such as trend identification, seasonality, and model selection. With hands-on experience in leading software, they will learn to build, validate, and interpret forecasting models. By delving into real-world case studies and ethical considerations, participants will be equipped to make strategic decisions across industries using the power of time-series analysis. This module is a valuable asset for professionals seeking to harness the potential of temporal data. You will develop expertise in time series analysis and forecasting. Discover techniques for exploratory data analysis, time series decomposition, trend analysis, and handling seasonality. Acquire the skill to differentiate between different types of patterns and understand their implications in forecasting. Module 2: Time-Series Models Module description: Time-series models are powerful tools designed to uncover patterns and predict future trends within sequential data. By analyzing historical patterns, trends, and seasonal variations, these models provide insights into data behavior over time. Utilizing methods like ARIMA, exponential smoothing, and state-space models, they enable accurate forecasting, empowering decision-makers across various fields to make informed choices based on data-driven predictions. You will acquire the ability to build forecasting models for future predictions based on historical data. Discover various forecasting methods, such as ARIMA models and seasonal forecasting techniques, and implement them using Python programming. Develop the ability to formulate customized time-series forecasting strategies based on data characteristics. Module 3: Linear Regression - Data Preprocessing Module description: The Linear Regression - Data Preprocessing module is a fundamental course that equips participants with essential skills for preparing and optimizing data before applying linear regression techniques. Through hands-on learning, participants will understand the importance of data quality, addressing missing values, outlier detection, and feature scaling. You will learn how to transform raw data into a clean, normalized format by delving into real-world datasets, ensuring accurate and reliable linear regression model outcomes. This module is crucial to building strong foundational knowledge in predictive modeling and data analysis. You will gain insights into various regression techniques such as linear regression, polynomial regression, and logistic regression, and their implementation using Python programming. Identify missing data and outliers within datasets and implement appropriate strategies to handle them effectively. Recognize the significance of feature scaling and selection and learn how to apply techniques such as standardization and normalization to improve model convergence and interpretability. Module 4: Linear Regression - Model Creation Module description: The Linear Regression - Model Creation module offers a comprehensive understanding of building predictive models through linear regression techniques. You will learn to choose and engineer relevant features, apply regression algorithms, and interpret model coefficients. By exploring real-world case studies, you will gain insights into model performance evaluation and acquire how to fine-tune parameters for optimal results. This module empowers you to create robust linear regression models for data-driven decision-making in diverse fields. You will understand how to identify and select relevant features from datasets for inclusion in linear regression models. Acquire the skills to interpret model coefficients, recognize their significance, and deliver the implications of these coefficients to non-technical stakeholders. Discover how to fine-tune model parameters, and regularization techniques, and perform cross-validation to enhance model generalization. Target Learner: This course is designed for aspiring data scientists, analysts, and professionals seeking to enhance their skills in regression analysis, forecasting, and Python programming. It is suitable for those looking to harness the power of temporal data and predictive modeling in their careers. Learner Prerequisites: β€’ Basic knowledge of Python programming. β€’ Familiarity with fundamental data analysis concepts. β€’ Understanding statistical concepts is beneficial but not mandatory. Reference Files: You will have access to code files in the Resources section and lab files in the Lab Manager section. Course Duration: 5 hours 44 minutes Total Duration: Approximately 4 weeks β€’ Module 1: Time-Series Analysis and Forecasting (1 week) β€’ Module 2: Time-Series Models (1 week) β€’ Module 3: Linear Regression - Data Preprocessing (1 week) β€’ Module 4: Linear Regression - Model Creation (1 week)

The Time-Series Analysis and Forecasting module provides a comprehensive exploration of techniques to extract insights and predict trends from sequential data. You will master fundamental concepts such as trend identification, seasonality, and model selection. With hands-on experience in leading software, you will learn to build, validate, and interpret forecasting models. By delving into real-world case studies and ethical considerations, you will be equipped to make strategic decisions across industries using the power of time-series analysis. This module is a valuable asset for professionals seeking to harness the potential of temporal data. You will develop expertise in time series analysis and forecasting. Discover techniques for exploratory data analysis, time series decomposition, trend analysis, and handling seasonality. Acquire the skill to differentiate between different types of patterns and understand their implications in forecasting.

What's included

18 videos5 readings5 assignments1 discussion prompt1 ungraded lab

18 videosβ€’Total 92 minutes
  • Introduction to Regression & Forecasting for Data Scientists using Pythonβ€’2 minutes
  • Introduction to Time-Series Basicsβ€’2 minutes
  • Time-Series Forecasting Use Cases and stepsβ€’7 minutes
  • Forecasting Model Creationβ€’5 minutes
  • Time-Series Basic Notationsβ€’8 minutes
  • Installing Anaconda and Jupyter Notebookβ€’5 minutes
  • Data Loading in Python Part 1β€’6 minutes
  • Data Loading in Python Part 2β€’5 minutes
  • Data Loading in Python Part 3β€’5 minutes
  • Feature Engineering in Python Part 1β€’8 minutes
  • Feature Engineering in Python Part 2β€’5 minutes
  • Visualization in Python Part 1β€’8 minutes
  • Visualization in Python Part 2β€’8 minutes
  • Visualization in Python Part 3β€’8 minutes
  • Time-Series Power Transformationβ€’3 minutes
  • Moving Averageβ€’5 minutes
  • Exponential Smoothingβ€’2 minutes
  • Conclusion to Time - Series Analysis and Forecastingβ€’1 minute
5 readingsβ€’Total 28 minutes
  • Course Introductionβ€’5 minutes
  • Course Syllabusβ€’5 minutes
  • Python for Data Analysisβ€’6 minutes
  • Feature Engineering Techniques for Time-Series Dataβ€’6 minutes
  • Time Series Transformation Techniquesβ€’6 minutes
5 assignmentsβ€’Total 32 minutes
  • Graded Quiz: Time-Series Analysis and Forecastingβ€’20 minutes
  • Practice Quiz: Time - Series Basicsβ€’3 minutes
  • Practice Quiz: Time-Series Data Loading and Feature Engineeringβ€’3 minutes
  • Practice Quiz: Time-Series Visualizationβ€’3 minutes
  • Practice Quiz: Time - Series Transformationβ€’3 minutes
1 discussion promptβ€’Total 10 minutes
  • Time-Series Analysis and Forecastingβ€’10 minutes
1 ungraded labβ€’Total 30 minutes
  • Ungraded Lab: Time Series Analysis and Forecastingβ€’30 minutes

Time-series models are powerful tools designed to uncover patterns and predict future trends within sequential data. By analyzing historical patterns, trends, and seasonal variations, these models provide insights into data behavior over time. Utilizing methods like ARIMA, exponential smoothing, and state-space models, they enable accurate forecasting, empowering decision-makers across various fields to make informed choices based on data-driven predictions.

What's included

22 videos3 readings6 assignments1 discussion prompt1 ungraded lab

22 videosβ€’Total 112 minutes
  • Introduction to Time-Series Modelsβ€’2 minutes
  • Test Train Split in Python Part 1β€’6 minutes
  • Test Train Split in Python Part 2β€’5 minutes
  • Walk Forward Validationβ€’3 minutes
  • NaΓ―ve (Persistence) Model in Python Part 1β€’7 minutes
  • NaΓ―ve (Persistence) Model in Python Part 2β€’6 minutes
  • Auto-regression basicsβ€’3 minutes
  • Auto-regression model creation Part 1β€’5 minutes
  • Auto-regression model creation Part 2β€’5 minutes
  • With Validation in Pythonβ€’7 minutes
  • Moving average model basicsβ€’5 minutes
  • Moving average model in python Part 1β€’5 minutes
  • Moving average model in python Part 2β€’5 minutes
  • ACF and PACFβ€’7 minutes
  • ARIMA Model Basicsβ€’4 minutes
  • ARIMA Model in Python Part 1β€’7 minutes
  • ARIMA Model in Python Part 2β€’6 minutes
  • ARIMA Model validation in pythonβ€’5 minutes
  • SARIMA Modelβ€’6 minutes
  • SARIMA Model in Python Part 1β€’5 minutes
  • SARIMA Model in Python Part 2β€’5 minutes
  • Conclusion to Time-Series Modelsβ€’2 minutes
3 readingsβ€’Total 18 minutes
  • Evaluating Time Series Forecasting Modelsβ€’6 minutes
  • Choosing the Right Forecasting Methodβ€’6 minutes
  • Understanding ACF and PACF Plotsβ€’6 minutes
6 assignmentsβ€’Total 35 minutes
  • Graded Quiz: Time-Series Modelsβ€’20 minutes
  • Practice Quiz: NaΓ―ve (Persistence) Modelβ€’3 minutes
  • Practice Quiz: Auto Regression Modelβ€’3 minutes
  • Practice Quiz: Moving Average Modelβ€’3 minutes
  • Practice Quiz: ARIMA Modelβ€’3 minutes
  • Practice Quiz: Time-Series Modelsβ€’3 minutes
1 discussion promptβ€’Total 10 minutes
  • Time-Series Modelsβ€’10 minutes
1 ungraded labβ€’Total 30 minutes
  • Ungraded Labs: Time Series Modelsβ€’30 minutes

The Linear Regression: Data Preprocessing module is a fundamental course that equips you with essential skills for preparing and optimizing data before applying linear regression techniques. Hands-on learning will teach you the importance of data quality, addressing missing values, outlier detection, and feature scaling. You will learn how to transform raw data into a clean, normalized format by delving into real-world datasets, ensuring accurate and reliable linear regression model outcomes. This module is crucial to building strong foundational knowledge in predictive modeling and data analysis.

What's included

16 videos3 readings5 assignments1 discussion prompt1 ungraded lab

16 videosβ€’Total 76 minutes
  • Introduction to Linear Regression - Data Preprocessingβ€’2 minutes
  • The dataset and data dictionary Part 1β€’5 minutes
  • The dataset and data dictionary Part 2β€’5 minutes
  • Importing data in Pythonβ€’3 minutes
  • Univariant analysis and EDD in Python Part 1β€’5 minutes
  • Univariant analysis and EDD in Python Part 2β€’4 minutes
  • Outlier treatment in Pythonβ€’6 minutes
  • Missing value imputation in pythonβ€’4 minutes
  • Seasonality in dataβ€’4 minutes
  • Bi-Variant Analysis and Variable Transformation Part 1β€’7 minutes
  • Bi-Variant Analysis and Variable Transformation Part 2β€’7 minutes
  • Handling quantitative dataβ€’6 minutes
  • Dummy variable creation in pythonβ€’5 minutes
  • Correlation analysisβ€’6 minutes
  • Correlation analysis in pythonβ€’6 minutes
  • Conclusion to Linear Regression - Data Preprocessingβ€’1 minute
3 readingsβ€’Total 25 minutes
  • Handling Outliers in Time Series Dataβ€’8 minutes
  • Bivariate Analysisβ€’7 minutes
  • Lagged Correlation: Analyzing Time-Series Dependenciesβ€’10 minutes
5 assignmentsβ€’Total 32 minutes
  • Practice Quiz: EDD and Outlier β€’3 minutes
  • Practice Quiz: Missing Valuesβ€’3 minutes
  • Practice Quiz: Bi-variant Analysisβ€’3 minutes
  • Practice Quiz: Correlation Analysisβ€’3 minutes
  • Graded Assessment: Linear Regression - Data Preprocessingβ€’20 minutes
1 discussion promptβ€’Total 10 minutes
  • Linear Regression - Data Preprocessingβ€’10 minutes
1 ungraded labβ€’Total 30 minutes
  • Ungraded Labs: Linear Progression Data Preprocessingβ€’30 minutes

The Linear Regression - Model Creation module offers a comprehensive understanding of building predictive models through linear regression techniques. You will learn to select and engineer relevant features, apply regression algorithms, and interpret model coefficients. By exploring real-world case studies, you will gain insights into model performance evaluation and learn how to fine-tune parameters for optimal results. This module empowers you to create robust linear regression models for data-driven decision-making in diverse fields.

What's included

15 videos3 readings5 assignments1 discussion prompt1 ungraded lab

15 videosβ€’Total 68 minutes
  • Introduction to Linear Regression - Model Creationβ€’1 minute
  • OLS methodβ€’8 minutes
  • Accessing Accuracy of Predicted Coefficients Part 1β€’7 minutes
  • Accessing Accuracy of Predicted Coefficients Part 2β€’5 minutes
  • RSE and R - Squareβ€’6 minutes
  • Simple Linear Regression in Python Part 1β€’5 minutes
  • Simple Linear Regression in Python Part 2β€’5 minutes
  • Multiple-Linear Regressionβ€’5 minutes
  • Multiple-linear regression Part 1β€’6 minutes
  • Multiple-linear regression Part 2β€’4 minutes
  • F-Statisticsβ€’5 minutes
  • Results of Categorical Variablesβ€’4 minutes
  • Test-train Split in pythonβ€’5 minutes
  • Conclusion to Linear Regression - Model Creationβ€’1 minute
  • Conclusion to Regression & Forecasting for Data Scientists using Pythonβ€’1 minute
3 readingsβ€’Total 25 minutes
  • Understanding OLS Methodβ€’7 minutes
  • Applied Linear Statistical Modelsβ€’8 minutes
  • Understanding Test-Trainβ€’10 minutes
5 assignmentsβ€’Total 32 minutes
  • Graded Quiz: Linear Regression - Model Creationβ€’20 minutes
  • Practice Quiz: Basics Equationβ€’3 minutes
  • Practice Quiz: Simple Linear Regressionβ€’3 minutes
  • Practice Quiz: Multiple-linear regressionβ€’3 minutes
  • Practice Quiz: Test-Trainβ€’3 minutes
1 discussion promptβ€’Total 10 minutes
  • Linear Regression - Model Creationβ€’10 minutes
1 ungraded labβ€’Total 30 minutes
  • Ungraded Labs: Linear Regression - Model Creationβ€’30 minutes

Instructor

EDUCBA
1,591 Coursesβ€’326,930 learners

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Reviewed on Feb 8, 2024

The course covered a wide range of topics with depth and clarity.

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Reviewed on Feb 12, 2024

The course provided a comprehensive overview. Concepts were explained clearly with examples that made it easy to understand.

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The course is really good I really enjoyed it and learned a lot.

Frequently asked questions

Linear Regression: Use when you expect a linear relationship between the independent and dependent variables.

Polynomial Regression: Suitable when the relationship appears to be polynomial, like quadratic or cubic.

Lasso or Ridge Regression: Helpful when dealing with multicollinearity or to prevent overfitting in high-dimensional datasets.

Mean Absolute Error (MAE): Measures the average absolute differences between predicted and actual values.

Mean Squared Error (MSE): Calculates the average of squared differences between predicted and actual values.

Root Mean Squared Error (RMSE): The square root of MSE, providing a more interpretable error metric.

Data Preprocessing: Clean and preprocess your time series data, handle missing values, and ensure it's in a suitable format (e.g., pandas DataFrame).

Train-Test Split: Split your data into training and testing sets to evaluate model performance.

Feature Engineering: Create relevant features, such as lag values, rolling statistics, and seasonality indicators.

Model Selection: Experiment with different forecasting models, such as ARIMA, Exponential Smoothing, or machine learning models, based on your data characteristics.

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