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Comparative Study on Artificial Intelligence Methods in Housing Price Prediction

Husada, Willy and Reynaldo, Ambrosius Matthew Junius and HOGIANTO, JOSH FELIX and PUTRI, CLARISSA ARISANTI (2025) Comparative Study on Artificial Intelligence Methods in Housing Price Prediction. [UNSPECIFIED]

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        Abstract

        The demand for property, including houses, continues to grow rapidly in Indonesia. The housing price prediction is essential in assisting the stakeholders such as buyers, sellers, and investors to make better decision-making. There are many key factors that influencing the housing prices and it is challenging to identify the most relevant factors. This study provides a comparative analysis of various methods in the housing price prediction that consists of one traditional method, Linear Regression (LR), and three artificial intelligence (AI) methods, including Artificial Neural Network (ANN), Classification and Regression Tree (CART), and Chi-Squared Automatic Interaction Detection (CHAID). The aim is to find the best machine learning method in predicting the housing price in terms of prediction accuracy through the four performance indicators and one combined performance index called the reference index (RI). The main findings of this study is that the AI-based method, the ANN method, has the best accuracy indicated by its highest RI value hence outperforming other methods in predicting the housing prices.

        Item Type: UNSPECIFIED
        Uncontrolled Keywords: artificial intelligence, housing price, machine learning, prediction
        Subjects: T Technology > TA Engineering (General). Civil engineering (General)
        Divisions: Faculty of Civil Engineering and Planning > Civil Engineering Department
        Depositing User: Admin
        Date Deposited: 21 Aug 2025 17:17
        Last Modified: 09 Sep 2025 18:04
        URI: https://repository.petra.ac.id/id/eprint/21764

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