House Price Prediction system

Devesh Bhandari

Devesh Bhandari

Bengaluru, Karnataka

My name is Devesh Bhandari and my teammate VS Lavan and We are student at Christ University. This challenge is focused on house price prediction in India, where the goal is to accurately predict the prices of properties using 12 influencing factors. ...learn more

Project status: Under Development

oneAPI, Artificial Intelligence, Cloud

Intel Technologies
oneAPI

Code Samples [1]Links [1]

Overview / Usage

My name is Devesh Bhandari and my teammate VS Lavan and We are student at Christ University. This challenge is focused on house price prediction in India, where the goal is to accurately predict the prices of properties using 12 influencing factors. Buyers consider various factors besides the size of the house, which makes predicting house prices a complex task. The dataset used for this competition has been collected from various property aggregators across India. As a data scientist.

Methodology / Approach

For this project, I have utilized the K-Nearest Neighbors (KNN) regression algorithm to predict house prices. KNN is a non-parametric algorithm that uses the distance between instances to predict the output value. In the context of this project, the KNN regressor analyzes the 12 influencing factors provided in the dataset to determine the nearest neighbors to a given property, and then predicts the price of the property based on the prices of its neighbors.

This project is optimized for Intel extension for scikit-learn, which is a version of scikit-learn optimized for Intel architecture. This means that the project has been specifically designed to run efficiently on Intel hardware, potentially improving performance and reducing runtime.

Repository

https://github.com/devu2601/House-price-prediction-system

Collaborators

1 Result

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