Understanding the customers’ perception of the value of constituent characteristics of a good is among the key questions in any pricing strategy. Hedonic pricing allows such an analysis and is frequently applied in economic fields. Although it is regarded as a benchmark in its original form, the availability of new data sources and the development of machine learning techniques created a space for further improvement. In this study, we propose a general framework for applying machine learning tools to enhance the hedonic pricing model in several directions. We do this, first, by adding image and text sources to conventional data and then by applying an advanced nonparametric prediction model. Lastly, we use model agnostic analysis to uncove...
In e-commerce, product presentations, and particularly images, are known to provide important inform...
Econometric hedonic models encounter several theoretical and practical difficulties when applied to ...
In recent years, machine learning has become increasingly important in everyday voice commands and p...
Machine Learning (ML) excels at most predictive tasks but its complex nonparametric structure render...
In the evolving landscape of real estate valuation, the integration of machine learning (ML) algorit...
Based on the theoretical foundation of hedonic methods, positive relationships between various types...
The primary objective of this dissertation is to contribute to the existing literature on econometri...
Pricing is a subjective process that highly depends on person. There is no general rule to price a h...
Abstract: Using a large sample of 46,467 residential properties spanning 1999-2005, we demonstrate u...
textabstractWe create a hedonic price model for house prices for six geographical submarkets in the ...
In the intricate domain of real estate, precise property valuation remains paramount for a spectrum ...
Buildings can be compared to a bundle of goods sold in a market, where each of the building characte...
With the exponential rise in the population, the real estate sector is seeing massive growth. Techno...
Thesis (Ph.D.)--University of Washington, 2017-06Hedonic models are commonly used to recover the imp...
This study proposes a comparison of hedonic pricing models that use attributes obtained by featurizi...
In e-commerce, product presentations, and particularly images, are known to provide important inform...
Econometric hedonic models encounter several theoretical and practical difficulties when applied to ...
In recent years, machine learning has become increasingly important in everyday voice commands and p...
Machine Learning (ML) excels at most predictive tasks but its complex nonparametric structure render...
In the evolving landscape of real estate valuation, the integration of machine learning (ML) algorit...
Based on the theoretical foundation of hedonic methods, positive relationships between various types...
The primary objective of this dissertation is to contribute to the existing literature on econometri...
Pricing is a subjective process that highly depends on person. There is no general rule to price a h...
Abstract: Using a large sample of 46,467 residential properties spanning 1999-2005, we demonstrate u...
textabstractWe create a hedonic price model for house prices for six geographical submarkets in the ...
In the intricate domain of real estate, precise property valuation remains paramount for a spectrum ...
Buildings can be compared to a bundle of goods sold in a market, where each of the building characte...
With the exponential rise in the population, the real estate sector is seeing massive growth. Techno...
Thesis (Ph.D.)--University of Washington, 2017-06Hedonic models are commonly used to recover the imp...
This study proposes a comparison of hedonic pricing models that use attributes obtained by featurizi...
In e-commerce, product presentations, and particularly images, are known to provide important inform...
Econometric hedonic models encounter several theoretical and practical difficulties when applied to ...
In recent years, machine learning has become increasingly important in everyday voice commands and p...