Please use this identifier to cite or link to this item:
|Title:||Pricing Models for German Wine: Hedonic Regression vs. Machine Learning||Authors:||Niklas, Britta
|Issue Date:||2020||Publisher:||Cambridge University Press||Source:||Journal of Wine Economics||Journal:||Journal of Wine Economics||Abstract:||This article examines whether there are different hedonic price models for different German wines by grape variety, and identifies influential factors that focus on weather variables and direct and indirect quality measures for wine prices. A log linear regression model is first applied only for Riesling, and then machine learning is used to find hedonic price models for Riesling, Silvaner, Pinot Blanc, and Pinot Noir. Machine learning exhibits slightly greater explanatory power, suggests adding additional variables, and allows for a more detailed interpretation of results. Gault&Millau points are shown to have a significant positive impact on German wine prices. The log linear approach suggests a huge effect of different quality categories on the wine prices for Riesling with the highest price premiums for Auslese and “Beerenauslese/Trockenbeerenauslese/Eiswein (Batbaice),” while the machine learning model shows, that additionally the alcohol level has a positive effect on wines in the quality categories “QbA,” “Kabinett,” and “Spätlese,” and a mostly negative one in the categories “Auslese” and “Batbaice.” Weather variables exert different affects per grape variety, but all grape varieties have problems coping with rising maximum temperatures in the winter and with rising minimum and maximum temperatures in the harvest season.||URI:||http://hdl.handle.net/20.500.11790/1375||ISSN:||1931-4361||DOI:||10.1017/jwe.2020.16||Rights:||info:eu-repo/semantics/closedAccess|
|Appears in Collections:||Informationstechnologie und Informationsmanagement|
Show full item record
checked on Sep 20, 2020
Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.