Price Formation in Parallel Trading Systems: Evidence from the Fine Wine Market

Marcin Czupryna, M. Jakubczyk, Pawel Oleksy
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引用次数: 2

Abstract

What drives the prices of fine wines is not easy to discern, in view of a multitude of confounding factors characterising the transactions across several markets. At the same time, understanding the quantitative relationships and mechanisms that determine the price level is important for policy making (e.g. predicting the outcomes of regulations) and methodological purposes (which elements to consider in modelling these markets). We examine the price formation of fine wines simultaneously across three markets: an automated electronic exchange (Liv-ex), intermediated auctions, andover-the-counter (OTC).Weuse auniquedataset consisting of 99,769 price data points for Premier Cru Bordeaux fine wines and we examine the price determinants with Bayesian modelling. We ascertain the mean price ranking (OTCmarket being the most expensive and Livex the least, di ering by about 4.5% and -0.8% from the auctions). We also find a slight price decrease for larger transactions (approx. 0.3% reduction for a 10% volume increase) and some platykurtosis in price distribution (greatest in Liv-ex), and observe themost stochastic noise in auctions. In an agent-based simulation, we discover that it is necessary to include trading mechanisms, commissions, and OTC market heterogeneity to reproduce the observed characteristics. Our results indicate which elements should be included in future fine wine markets models.
平行交易系统中的价格形成:来自精品葡萄酒市场的证据
考虑到多个市场的交易中存在诸多令人困惑的因素,推动优质葡萄酒价格的因素并不容易辨别。同时,了解决定价格水平的数量关系和机制对于政策制定(例如预测法规的结果)和方法目的(在这些市场建模中考虑哪些因素)非常重要。我们研究了三个市场上优质葡萄酒的价格形成:自动电子交易(Liv-ex)、中介拍卖和场外交易(OTC)。我们使用了一个由99,769个数据点组成的独特数据集,用于顶级波尔多葡萄酒的价格数据,我们使用贝叶斯建模来检查价格决定因素。我们确定了平均价格排名(OTCmarket是最贵的,Livex是最低的,比拍卖价格分别下降了4.5%和-0.8%)。我们还发现,对于较大的交易,价格会略有下降。成交量增加10%,成交量减少0.3%)和价格分布的一些峰度(在Liv-ex中最大),并观察到拍卖中最随机的噪音。在基于主体的模拟中,我们发现有必要包括交易机制、佣金和场外交易市场异质性来重现所观察到的特征。我们的研究结果表明,哪些因素应该包括在未来的优质葡萄酒市场模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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