Here to stay: regression analysis in follow-on cartel damages

Q4 Social Sciences Competition Law Journal Pub Date : 2020-10-01 DOI:10.4337/clj.2020.03.04
Spyros Droukopoulos, B. Veronese, Stefan Witte
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Abstract

Private damage claims that follow after a competition authority's infringement decision require an accurate estimation of the harm caused, in order to avoid under- or over-compensation. The right method for valuation of damage will depend on the specifics of a particular case, and will need to balance the need to allow for a sufficient level of detail, while remaining tractable and practical for the case overall. Regression analysis is often the method that best balances these competing objectives. This article discusses the increasing use of regression analysis in follow-on damage claims in Europe. It outlines possible reasons why this widespread application of regression analysis is not yet extensively reflected in final judgments by national courts, and considers how this may change in the future. It concludes that the regression analysis is here to stay.
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留在这里:卡特尔后续损害的回归分析
竞争主管机构作出侵权决定后提出的私人损害索赔要求准确估计所造成的损害,以避免赔偿不足或过高。正确的损害评估方法将取决于特定案件的具体情况,并且需要在考虑足够详细程度的需要之间取得平衡,同时保持对整个案件的可处理性和实用性。回归分析通常是最能平衡这些竞争目标的方法。本文讨论了回归分析在欧洲后续损害索赔中的日益使用。它概述了回归分析的广泛应用尚未在国家法院的最终判决中得到广泛反映的可能原因,并考虑了这种情况在未来可能发生的变化。它得出的结论是,回归分析将继续存在。
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来源期刊
Competition Law Journal
Competition Law Journal Social Sciences-Law
CiteScore
0.20
自引率
0.00%
发文量
15
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