Cristin-resultat-ID: 2279871
Sist endret: 30. juni 2024, 21:56
Resultat
Vitenskapelig foredrag
2024

Harnessing Uncertainty: A New Approach to Real Estate Investment Decision Support

Bidragsytere:
  • Arne Johan Pollestad

Presentasjon

Navn på arrangementet: AREUEA International Conference 2024
Sted: Curaçao
Dato fra: 23. juni 2024
Dato til: 26. juni 2024

Arrangør:

Arrangørnavn: American Real Estate and Urban Economics Association, Maastricht University’s School of Business and Economics, & the University of Curaçao Dr. Moises da Costa Gomez

Om resultatet

Vitenskapelig foredrag
Publiseringsår: 2024

Klassifisering

Vitenskapsdisipliner

Bedriftsøkonomi

Emneord

Verdsetting • Eiendomsøkonomi • Explainable Artificial Intelligence • Maskinlæring

Beskrivelse Beskrivelse

Tittel

Harnessing Uncertainty: A New Approach to Real Estate Investment Decision Support

Sammendrag

This paper investigates the efficiency of AI-uncertainty quantification as a decision support tool to mitigate adverse selection issues for real estate investors. The study is grounded in the premise that investors can use uncertainty estimates from AI models to identify properties with uncertain price predictions, thus enabling them to filter out risky investment prospects and place bids closer to the actual market value. We employ an automated valuation model trained on a dataset of over 50,000 historical house transactions in Oslo, Norway, spanning 2016 to 2022. Through a financial performance simulation, we evaluate three bidding strategies: random selection, human model evaluation, and AI-uncertainty quantification. Our findings reveal that AI-uncertainty quantification outperforms human evaluation in identifying uncertain investment opportunities, yielding higher profit margins and purchase ratios. The results are robust across different sample sizes and models. Explainable AI analysis using SHAP values further reveals the AI model’s ability to identify spatial uncertainty patterns, enhancing its effectiveness in mitigating adverse selection. Our study contributes to the literature on information asymmetry and automated valuation, offering insights into the application of AI to address adverse selection challenges in residential real estate investment.

Bidragsytere

Arne Johan Pollestad

  • Tilknyttet:
    Forfatter
    ved NTNU Handelshøyskolen ved Norges teknisk-naturvitenskapelige universitet
1 - 1 av 1