Learners will analyze real-world datasets, prepare and transform features, and apply regression algorithms to predict numerical outcomes with confidence. By the end of this course, learners will be able to structure datasets for modeling, handle missing and inconsistent data, encode categorical variables appropriately, and evaluate regression models using training and test data.
This course is designed to build practical, job-ready skills in predictive analytics by walking learners through the complete regression workflow. Rather than focusing only on theory, the course emphasizes hands-on data preparation techniques such as imputation, feature replacement, ordinal encoding, and dataset validation. Learners gain a clear understanding of how real-world data issues impact model performance and how to address them systematically.
What makes this course unique is its end-to-end, implementation-driven approach. Each concept is reinforced through realistic data scenarios that mirror industry practices in pricing analytics. By completing this course, learners will be able to confidently design, train, and evaluate regression models, making them well prepared for applied data science, business analytics, and machine learning roles where accurate price prediction is essential.
This module introduces learners to the fundamentals of predicting prices using regression techniques. Learners explore how real-world factors influence pricing, learn to structure datasets correctly for regression analysis, and apply essential data preparation techniques such as indexing, test value setup, and missing-value handling. By the end of the module, learners will be able to transform raw data into a regression-ready format while avoiding common data quality and evaluation pitfalls.
涵盖的内容
8个视频4个作业
显示有关单元内容的信息
8个视频•总计74分钟
Introduction to Predicting Prices Using Regression•10分钟
Proximity to Various Conditions•9分钟
Number of Fire Places•4分钟
Adding the Test Value•10分钟
Index to the ID Column•9分钟
Model on Data Set•11分钟
Missing Value Imputation•8分钟
Substituting Features with Value•12分钟
4个作业•总计60分钟
Understanding the Price Prediction Problem•10分钟
Preparing and Structuring the Dataset•10分钟
Handling Missing and Incomplete Data•10分钟
Foundations of Price Prediction with Regression•30分钟
Feature Engineering and Regression Modeling
第 2 单元•小时 后完成
单元详情
This module focuses on advanced data preparation and modeling techniques required for effective regression-based price prediction. Learners perform feature engineering, convert categorical variables into quantitative and ordinal forms, validate dataset structure, and apply proper train–test splitting to evaluate model performance. The module concludes with executing a regression algorithm to generate and interpret predicted values.
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