A Note on Competing Merger Simulation Models in Antitrust Cases: Can the Best Be Identified?

Oliver Budzinski
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引用次数: 6

Abstract

Advanced economic instruments like simulation models are enjoying an increased popularity in practical antitrust. There is hope that they – being quantitative predictive economic evidence – can substitute for qualitative structural analysis and lead to unambiguous results. This paper demonstrates that it can be theoretically impossible to identify the most appropriate simulation model for any given merger proposal. Due to the inevitable necessity to reduce real-world complexity and multi-parameter character of merger cases, the comparative fit of proposed merger simulation models with mutually incompatible predictions can be the same. This is valid even if an ideal antitrust procedure is assumed. This insight is important regarding two aspects. First, the scope for partisan economic evidence cannot be completely eroded in merger control. Second, simulation cannot eliminate or substitute for qualitative reasoning and economically informed common sense.
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反垄断案例中竞争性并购模拟模型:能否识别出最佳模型?
模拟模型等先进的经济工具在实际反垄断中越来越受欢迎。作为定量预测的经济证据,它们有望取代定性的结构分析,并得出明确的结果。本文论证了在理论上不可能为任何给定的并购方案确定最合适的仿真模型。由于降低现实世界的复杂性和并购案例的多参数特征是不可避免的,因此所提出的预测不相容的并购仿真模型的比较拟合可以是相同的。即使假设一个理想的反垄断程序,这也是有效的。这种见解在两个方面很重要。首先,在并购控制中,党派经济证据的范围不可能被完全侵蚀。其次,模拟不能消除或代替定性推理和经济常识。
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