The physical and design aspects of buildings, the availability of urban infrastructures and services, and the presence of landscape amenities significantly influence consumer preferences for residential living spaces. Capturing these preferences can provide insights on spatial changes in consumer behavior. To address this challenge, this paper introduces a novel methodological framework that combines Natural Language Processing (NLP) with geospatial data analysis, focusing particularly on insights derived from real estate listings. This innovative approach enables an in-depth examination of urban market dynamics by allowing for a comprehensive analysis that includes temporal shifts and spatial differences. By employing advanced analytical techniques, such as lexical analysis of listings and geospatial exploration, the framework is designed to decode complex market narratives and uncover detailed consumer preferences. The methodological framework of this paper aims to construct a comprehensive model by integrating textual, spatial, and temporal data from listings, thereby offering a complete perspective of the urban real estate market. The integration of these diverse data sources from real estate listings provides critical insights into consumer preferences and market trends, equipping stakeholders with essential information to make informed decisions. Ultimately, this approach not only broadens the understanding of the real estate market but also aids stakeholders in crafting strategic initiatives that align with the sector’s evolving demands. This method facilitates informed decision-making and strategic planning in the real estate domain by leveraging the rich data found in property listings.

Geo-NLP Insights: Unveiling Residential Real Estate Trends Through Textual Analysis / Bottero, Marta; Dell'Anna, Federico; Monaci, Sara; Persico, Simone. - STAMPA. - 14821:(2024), pp. 163-175. (Intervento presentato al convegno 24th International Conference on Computational Science and Its Applications (ICCSA 2024) tenutosi a Hanoi, Vietnam) [10.1007/978-3-031-65308-7_12].

Geo-NLP Insights: Unveiling Residential Real Estate Trends Through Textual Analysis

Bottero, Marta;Dell'Anna, Federico;Monaci, Sara;Persico, Simone
2024

Abstract

The physical and design aspects of buildings, the availability of urban infrastructures and services, and the presence of landscape amenities significantly influence consumer preferences for residential living spaces. Capturing these preferences can provide insights on spatial changes in consumer behavior. To address this challenge, this paper introduces a novel methodological framework that combines Natural Language Processing (NLP) with geospatial data analysis, focusing particularly on insights derived from real estate listings. This innovative approach enables an in-depth examination of urban market dynamics by allowing for a comprehensive analysis that includes temporal shifts and spatial differences. By employing advanced analytical techniques, such as lexical analysis of listings and geospatial exploration, the framework is designed to decode complex market narratives and uncover detailed consumer preferences. The methodological framework of this paper aims to construct a comprehensive model by integrating textual, spatial, and temporal data from listings, thereby offering a complete perspective of the urban real estate market. The integration of these diverse data sources from real estate listings provides critical insights into consumer preferences and market trends, equipping stakeholders with essential information to make informed decisions. Ultimately, this approach not only broadens the understanding of the real estate market but also aids stakeholders in crafting strategic initiatives that align with the sector’s evolving demands. This method facilitates informed decision-making and strategic planning in the real estate domain by leveraging the rich data found in property listings.
2024
9783031653070
9783031653087
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/2992121
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