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Calibrating emergent phenomena in stock markets with agent based models

机译:基于代理的模型校准股票市场的紧急现象

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Since the 2008 financial crisis, agent-based models (ABMs), which account for out-of-equilibrium dynamics, heterogeneous preferences, time horizons and strategies, have often been envisioned as the new frontier that could revolutionise and displace the more standard models and tools in economics. However, their adoption and generalisation is drastically hindered by the absence of general reliable operational calibration methods. Here, we start with a different calibration angle that qualifies an ABM for its ability to achieve abnormal trading performance with respect to the buy-and-hold strategy when fed with real financial data. Starting from the common definition of standard minority and majority agents with binary strategies, we prove their equivalence to optimal decision trees. This efficient representation allows us to exhaustively test all meaningful single agent models for their potential anomalous investment performance, which we apply to the NASDAQ Composite index over the last 20 years. We uncover large significant predictive power, with anomalous Sharpe ratio and directional accuracy, in particular during the dotcom bubble and crash and the 2008 financial crisis. A principal component analysis reveals transient convergence between the anomalous minority and majority models. A novel combination of the optimal single-agent models of both classes into a two-agents model leads to remarkable superior investment performance, especially during the periods of bubbles and crashes. Our design opens the field of ABMs to construct novel types of advanced warning systems of market crises, based on the emergent collective intelligence of ABMs built on carefully designed optimal decision trees that can be reversed engineered from real financial data.
机译:自2008年金融危机以来,基于代理的模型(ABMS),其考虑了均衡的动态,异构偏好,时间范围和策略,通常被设想为新的前沿,可以彻底改变和取代更标准的模型和经济学工具。然而,由于缺乏一般可靠的操作校准方法,他们的采用和泛化急剧阻碍。在这里,我们从不同的校准角开始,符合ABM的能力,以便在使用真实的财务数据时获得相对于买入和保持策略的异常交易性能。从标准少数民族和多数代理商的共同定义开始,我们证明了他们对最佳决策树的等价。这种有效的代表允许我们彻底测试所有有意义的单一代理模型,以实现其潜在的异常投资绩效,我们在过去20年中申请纳斯达克综合指数。我们揭示了大型显着的预测力,具有异常的夏普比和方向准确性,特别是在Dotcom泡沫和崩溃期间和2008年的金融危机。主要成分分析显示异常少数群体和多数模型之间的瞬态收敛性。两种课程的最佳单孕代模型的新颖结合为双代理模型导致了卓越的卓越的投资性能,特别是在气泡和崩溃时段。我们的设计开启了ABMS的领域,以构建新颖的市场危机类型的市场危机,基于由精心设计的最佳决策树构建的ABM的紧急集体智能,可以逆转从真实的财务数据逆转。

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