Detection of Bubbles in Tehran Stock Exchange Using Log-Periodic Power-Low Singularity Model

A. Namaki, Mehrdad Haghgoo
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Abstract

One of the essential factors that lead to severe disruptions in financial markets is price bubbles and subsequent crashes. Numerous models for detecting bubbles have been developed, one of which (LPPLS) has lately attracted considerable interest. This study aims to utilize this model to detect price bubbles in Tehran Stock Exchange's index (TEDPIX). Confidence multi-scale indicators for this model are presented by fitting the LPPLS model to the data of the TSE index from 2009 through 2020. The bubble is detected when the number of fits that are in our filter conditions increases which means the growth of the indicator's value. By applying this method on TSE data two significant crashes in 2013 and 2020 are detected. The proposed technique can be useful for market participants to detect financial crashes and bubbles.
利用对数周期幂-低奇点模型检测德黑兰证券交易所泡沫
导致金融市场严重混乱的一个重要因素是价格泡沫和随后的崩盘。已经开发了许多检测气泡的模型,其中之一(LPPLS)最近引起了相当大的兴趣。本研究旨在利用该模型检测德黑兰证券交易所指数(TEDPIX)的价格泡沫。通过对2009 - 2020年东京证交所指数数据的拟合,给出了该模型的置信度多尺度指标。当我们的过滤条件中的拟合次数增加时,就会检测到气泡,这意味着指标值的增长。将该方法应用于TSE数据,检测出2013年和2020年两次重大崩盘。所提出的技术可以帮助市场参与者发现金融崩溃和泡沫。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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