Detecting market bubbles: A generalized LPPLS neural network model

IF 2.1 4区 经济学 Q2 ECONOMICS
Juntao Ma, Chenchen Li
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引用次数: 0

Abstract

To enhance bubble detection capabilities, we introduce two significant improvements to the Log-Periodic Power Law Singularity (LPPLS) model: (1) a novel fitting approach, which yields more accurate predictions of critical price distributions within a single sample window; (2) a restructured neural network approach further enhances the estimations of the probability distributions of the critical points across both time and price dimensions, and it can be fine-tuned with real-world data. The simulation and practical applications to typical asset price bubbles in cryptocurrencies, commodities, and equity indices demonstrate that our refined model, the Generalized-LPPLS Neural Network (G-LPPLS-NN), outperforms all other models we examined in terms of predictive accuracy for critical point distributions.
检测市场泡沫:广义 LPPLS 神经网络模型
为了增强泡沫检测能力,我们对对数周期幂律奇点(LPPLS)模型进行了两项重大改进:(1)采用新颖的拟合方法,在单个样本窗口内对临界价格分布进行更准确的预测;(2)采用重组神经网络方法,进一步增强对临界点在时间和价格两个维度上的概率分布的估计,并可根据实际数据进行微调。对加密货币、大宗商品和股票指数等典型资产价格泡沫的模拟和实际应用表明,我们的改进模型--广义 LPPLS 神经网络(G-LPPLS-NN)--在临界点分布的预测准确性方面优于我们研究的所有其他模型。
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来源期刊
Economics Letters
Economics Letters ECONOMICS-
CiteScore
3.20
自引率
5.00%
发文量
348
审稿时长
30 days
期刊介绍: Many economists today are concerned by the proliferation of journals and the concomitant labyrinth of research to be conquered in order to reach the specific information they require. To combat this tendency, Economics Letters has been conceived and designed outside the realm of the traditional economics journal. As a Letters Journal, it consists of concise communications (letters) that provide a means of rapid and efficient dissemination of new results, models and methods in all fields of economic research.
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