An Optimal House Price Prediction Algorithm: XGBoost
- URL: http://arxiv.org/abs/2402.04082v1
- Date: Tue, 6 Feb 2024 15:36:06 GMT
- Title: An Optimal House Price Prediction Algorithm: XGBoost
- Authors: Hemlata Sharma, Hitesh Harsora, Bayode Ogunleye
- Abstract summary: We use various machine learning techniques to predict house prices.
We identify the key factors that influence housing costs.
XGBoost is the best performing model for house price prediction.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: An accurate prediction of house prices is a fundamental requirement for
various sectors including real estate and mortgage lending. It is widely
recognized that a property value is not solely determined by its physical
attributes but is significantly influenced by its surrounding neighbourhood.
Meeting the diverse housing needs of individuals while balancing budget
constraints is a primary concern for real estate developers. To this end, we
addressed the house price prediction problem as a regression task and thus
employed various machine learning techniques capable of expressing the
significance of independent variables. We made use of the housing dataset of
Ames City in Iowa, USA to compare support vector regressor, random forest
regressor, XGBoost, multilayer perceptron and multiple linear regression
algorithms for house price prediction. Afterwards, we identified the key
factors that influence housing costs. Our results show that XGBoost is the best
performing model for house price prediction.
Related papers
- A Multi-Modal Deep Learning Based Approach for House Price Prediction [19.02810406484948]
We propose a multi-modal deep learning approach that leverages different types of data to learn more accurate representation of the house.
In particular, we learn a joint embedding of raw house attributes, geo-spatial neighborhood, and most importantly from textual description and images representing the house.
Results show that the text embedding of the house advertisement description and image embedding of the house pictures can significantly improve the house price prediction accuracy.
arXiv Detail & Related papers (2024-09-09T05:26:33Z) - Performative Prediction on Games and Mechanism Design [69.7933059664256]
We study a collective risk dilemma where agents decide whether to trust predictions based on past accuracy.
As predictions shape collective outcomes, social welfare arises naturally as a metric of concern.
We show how to achieve better trade-offs and use them for mechanism design.
arXiv Detail & Related papers (2024-08-09T16:03:44Z) - Mind the Gap: A Causal Perspective on Bias Amplification in Prediction & Decision-Making [58.06306331390586]
We introduce the notion of a margin complement, which measures how much a prediction score $S$ changes due to a thresholding operation.
We show that under suitable causal assumptions, the influences of $X$ on the prediction score $S$ are equal to the influences of $X$ on the true outcome $Y$.
arXiv Detail & Related papers (2024-05-24T11:22:19Z) - HireVAE: An Online and Adaptive Factor Model Based on Hierarchical and
Regime-Switch VAE [113.47287249524008]
It is still an open question to build a factor model that can conduct stock prediction in an online and adaptive setting.
We propose the first deep learning based online and adaptive factor model, HireVAE, at the core of which is a hierarchical latent space that embeds the relationship between the market situation and stock-wise latent factors.
Across four commonly used real stock market benchmarks, the proposed HireVAE demonstrate superior performance in terms of active returns over previous methods.
arXiv Detail & Related papers (2023-06-05T12:58:13Z) - Predicting housing prices and analyzing real estate market in the
Chicago suburbs using Machine Learning [0.0]
Post-pandemic markets have experienced volatility in the Chicago suburb area, which have affected house prices greatly.
This study was done on the Naperville/Bolingbrook real estate market to predict property prices based on these housing attributes through machine learning models.
It was found that the XGBoost model performs the best in predicting house prices despite the additional volatility sponsored by post-pandemic conditions.
arXiv Detail & Related papers (2022-10-12T14:41:53Z) - What Image Features Boost Housing Market Predictions? [81.32205133298254]
We propose a set of techniques for the extraction of visual features for efficient numerical inclusion in predictive algorithms.
We discuss techniques such as Shannon's entropy, calculating the center of gravity, employing image segmentation, and using Convolutional Neural Networks.
The set of 40 image features selected here carries a significant amount of predictive power and outperforms some of the strongest metadata predictors.
arXiv Detail & Related papers (2021-07-15T06:32:10Z) - MugRep: A Multi-Task Hierarchical Graph Representation Learning
Framework for Real Estate Appraisal [57.28018917017665]
We propose a Multi-Task Hierarchical Graph Representation Learning (MugRep) framework for accurate real estate appraisal.
By acquiring and integrating multi-trivial urban data, we first construct a rich feature set to comprehensively profile real estate from multiple perspectives.
An evolving real estate transaction graph and a corresponding event graph convolution module are proposed to incorporate asynchronouslytemporal dependencies among real estate transactions.
arXiv Detail & Related papers (2021-07-12T03:51:44Z) - Boosting House Price Predictions using Geo-Spatial Network Embedding [16.877628778633905]
We propose to leverage the concept of graph neural networks to capture the geo-spatial context of the neighborhood of a house.
In particular, we present a novel method, the Geo-Spatial Network Embedding (GSNE), that learns the embeddings of houses and various types of Points of Interest (POIs) in the form of multipartite networks.
arXiv Detail & Related papers (2020-09-01T06:17:21Z) - Machine Learning Approaches to Real Estate Market Prediction Problem: A
Case Study [0.0]
This work develops a property price classification model using a ten year actual dataset, from January 2010 to November 2019.
The developed model can facilitate real estate investors, mortgage lenders and financial institutions to make better informed decisions.
arXiv Detail & Related papers (2020-08-22T22:28:58Z) - Lifelong Property Price Prediction: A Case Study for the Toronto Real
Estate Market [75.28009817291752]
We present Luce, the first life-long predictive model for automated property valuation.
Luce addresses two critical issues of property valuation: the lack of recent sold prices and the sparsity of house data.
We demonstrate the benefit of Luce by applying it to large, real-life datasets obtained from the Toronto real estate market.
arXiv Detail & Related papers (2020-08-12T07:32:16Z) - Housing Market Prediction Problem using Different Machine Learning
Algorithms: A Case Study [0.0]
The housing datasets of 62,723 records from January 2015 to November 2019 are obtained from Florida Volusia County Property Appraiser website.
The XGBoost algorithm performs superior to the other models to predict the housing price.
arXiv Detail & Related papers (2020-06-17T18:16:24Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.