This repository contains the analysis and machine learning model implementation for the laptop-pricing dataset. The goal is to predict various price of laptops having various attributes using different machine learning techniques.
- Data Import and Cleaning
- Exploratory Data Analysis (EDA)
- Model Evaluation
- Over-fitting, Under-fitting, and Model Selection
- Ridge Regression
- Grid Search
- Programming Language: Python
- Libraries: Pandas, NumPy, Scikit-Learn, Matplotlib, Seaborn
- Tools: Jupyter Notebook
To get started with this project, clone the repository and install the necessary dependencies:
git clone https://github.com/burhanahmed1/LaptopPricing-MachineLearning-Analysis.git
cd LaptopPricing-MachineLearning-Analysis
pip install -r requirements.txt
Open the Jupyter notebook:
jupyter notebook LaptopPricing-ML.ipynb
The dataset used in this analysis is LaptopPricing.csv, which contains various features related to laptops such as CPU_frequency, RAM_GB, Storage_GB_SSD , CPU_core , OS , GPU, Category and price.
R^2 scores of the Linear Regression model created using different degrees of polynomial features, ranging from 1 to 5.
R^2 values of Ridge Regression model for training and testing sets with respect to the values of alpha.
Contributions are welcome! Please fork this repository and submit pull requests.
This project is licensed under the MIT License.