Comparative Analysis of Various Machine Learning and Deep Learning Approaches for Car Resale Price Prediction in the Turkish Market
With escalating environmental concerns worldwide, the shift towards second-hand car markets has emerged as an eco-friendly alternative to reduce the carbon footprint associated with manufacturing new vehicles. However, the lack of accurate and efficient price prediction mechanisms may impede the gro...
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Veröffentlicht in: | Niğde Ömer Halisdemir Üniversitesi mühendislik bilimleri dergisi 2023-12 |
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Format: | Artikel |
Sprache: | tur |
Online-Zugang: | Volltext |
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Zusammenfassung: | With escalating environmental concerns worldwide, the shift towards second-hand car markets has emerged as an eco-friendly alternative to reduce the carbon footprint associated with manufacturing new vehicles. However, the lack of accurate and efficient price prediction mechanisms may impede the growth and efficiency of these markets. This study, focusing on the Turkish second-hand car market, contributes towards addressing this gap by introducing a unique, comprehensive dataset gathered from various online markets across Turkey, thereby offering a broad spectrum of data pertaining to different vehicle types, specifications, and resale conditions. The study employs both classical machine learning methods, specifically decision trees, and deep learning models to predict used car prices. This comparative analysis aims to assess the potential of these methods in improving the predictability and transparency of resale price determination. Despite the superior performance of decision tree models, the study found that deep learning techniques achieved comparable results, indicating their potential for further optimization and enhancement. The accurate prediction of resale prices could streamline the operations of second-hand car markets, increasing their appeal to potential buyers and sellers. This could, in turn, contribute to environmental sustainability by encouraging the usage of pre-owned vehicles, which can substantially reduce the demand for new cars and thereby lower the environmental impact associated with their production.
Çevresel kaygıların yoğunlaşmasıyla birlikte, ikinci el araç piyasaları, yeni araçların üretimindeki karbon ayak izini azaltma konusunda çevre dostu bir alternatif olarak ön plana çıkmıştır. Ancak, etkili ve doğru fiyat tahmin mekanizmalarının yetersizliği, bu piyasaların büyüme ve verimliliği üzerinde engelleyici bir etkiye sahip olabilir. Bu çalışma, bu sorunu çözme hedefine yönelik olarak, özellikle Türk ikinci el araç piyasası üzerinde durmuştur ve Türkiye genelindeki farklı online pazarlardan derlenen geniş bir veri seti sunmuştur. Bu veri seti, çeşitli araç türleri, özellikleri ve yeniden satış koşulları hakkında geniş kapsamlı bilgiler sağlamaktadır. Çalışmada, ikinci el araç fiyatlarının tahmininde hem klasik makine öğrenmesi yöntemleri -özellikle karar ağaçları- hem de derin öğrenme modelleri kullanılmıştır. Bu karşılaştırmalı analizin amacı, bu metodların yeniden satış fiyatının belirlenmesinde tahmin gücünü ve şeffaflığı n |
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ISSN: | 2564-6605 2564-6605 |
DOI: | 10.28948/ngumuh.1353526 |