Offered By: IBMSkillsNetwork
Partial Dependence Plot Applied to House Pricing Models
Partial Dependence Plots (PDPs), is a common techniques to interpret machine learning models by visualizing feature impacts on predictions. This lab explores the relationships between features such as rooms, distance, and landsize in the Melbourne Housing dataset, as well as age and fare in the Titanic dataset, translating complex model predictions into clear insights. Data scientists and stakeholders can leverage PDPs to gain a deeper understanding of model behavior, enhancing both technical analysis and informed business decision-making.
Continue readingGuided Project
Data Science
At a Glance
Partial Dependence Plots (PDPs), is a common techniques to interpret machine learning models by visualizing feature impacts on predictions. This lab explores the relationships between features such as rooms, distance, and landsize in the Melbourne Housing dataset, as well as age and fare in the Titanic dataset, translating complex model predictions into clear insights. Data scientists and stakeholders can leverage PDPs to gain a deeper understanding of model behavior, enhancing both technical analysis and informed business decision-making.
Exploring Partial Dependence Plots with Python: A Guided Journey
Understanding how machine learning models make predictions is essential, especially in fields where data-driven decisions can significantly impact outcomes. In this hands-on guided project, you will explore the power of Partial Dependence Plots (PDPs) using Python and scikit-learn, focusing on two real-world datasets: the Titanic dataset for survival prediction and the Melbourne Housing dataset for price estimation.
Throughout this project, you will not only build predictive models but also learn to interpret their outputs, revealing how features such as age, fare, rooms, distance, and land size influence predictions. By visualizing these relationships through PDPs, you will gain insights into model behavior, enabling you to communicate findings effectively to stakeholders.
In just 30 minutes, you will develop a practical understanding of PDPs and their role in explaining machine learning models, equipping you with the skills to navigate the intersection of AI and real-world applications.
You can take it here: https://cognitiveclass.ai/courses/med-prediction-with-explainable-ai-partial-dependence-plot
What You'll Learn
By the end of this project, you will have mastered:
- Interpreting machine learning models using Partial Dependence Plots (PDPs) to visualize feature impacts.
- Analyzing the influence of key features in both classification (Titanic dataset) and regression (Melbourne Housing dataset) contexts.
- Applying Gradient Boosting Classifier and Regressor models to real-world datasets.
What You'll Need
To get started with this guided project, you should have:
- A basic understanding of Python programming.
- Access to modern web browsers like Chrome, Edge, Firefox, Internet Explorer, or Safari.
Ready to unlock the insights hidden within your data? Start this guided project now and empower yourself to interpret complex algorithms, transforming raw data into actionable insights for decision-making in various domains.
Estimated Effort
30 Minutes
Level
Beginner
Skills You Will Learn
Data Visualization, Explainable AI, Machine Learning, Pandas, Python, Scikit-learn
Language
English
Course Code
GPXX0KWTEN