Detecting market bubbles: A generalized LPPLS neural network model☆
- Ma, JT; Li, CC
- 2024
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【Author】 Ma, Juntao; Li, Chenchen
【Source】ECONOMICS LETTERS
【影响因子】1.469
【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.
【Keywords】Bubble detection; LPPLS; Fitting methodology; Neural network; Fine-tuning
【发表时间】2024 NOV
【收录时间】2024-10-25
【文献类型】理论模型
【主题类别】
区块链治理-技术治理-交易预测
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