Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Multiscale multifractal multiproperty analysis of financial time series based on Rényi entropy

View through CrossRef
This paper introduces a multiscale multifractal multiproperty analysis based on Rényi entropy (3MPAR) method to analyze short-range and long-range characteristics of financial time series, and then applies this method to the five time series of five properties in four stock indices. Combining the two analysis techniques of Rényi entropy and multifractal detrended fluctuation analysis (MFDFA), the 3MPAR method focuses on the curves of Rényi entropy and generalized Hurst exponent of five properties of four stock time series, which allows us to study more universal and subtle fluctuation characteristics of financial time series. By analyzing the curves of the Rényi entropy and the profiles of the logarithm distribution of MFDFA of five properties of four stock indices, the 3MPAR method shows some fluctuation characteristics of the financial time series and the stock markets. Then, it also shows a richer information of the financial time series by comparing the profile of five properties of four stock indices. In this paper, we not only focus on the multifractality of time series but also the fluctuation characteristics of the financial time series and subtle differences in the time series of different properties. We find that financial time series is far more complex than reported in some research works using one property of time series.
Title: Multiscale multifractal multiproperty analysis of financial time series based on Rényi entropy
Description:
This paper introduces a multiscale multifractal multiproperty analysis based on Rényi entropy (3MPAR) method to analyze short-range and long-range characteristics of financial time series, and then applies this method to the five time series of five properties in four stock indices.
Combining the two analysis techniques of Rényi entropy and multifractal detrended fluctuation analysis (MFDFA), the 3MPAR method focuses on the curves of Rényi entropy and generalized Hurst exponent of five properties of four stock time series, which allows us to study more universal and subtle fluctuation characteristics of financial time series.
By analyzing the curves of the Rényi entropy and the profiles of the logarithm distribution of MFDFA of five properties of four stock indices, the 3MPAR method shows some fluctuation characteristics of the financial time series and the stock markets.
Then, it also shows a richer information of the financial time series by comparing the profile of five properties of four stock indices.
In this paper, we not only focus on the multifractality of time series but also the fluctuation characteristics of the financial time series and subtle differences in the time series of different properties.
We find that financial time series is far more complex than reported in some research works using one property of time series.

Related Results

Tool Embodiment Is Reflected in Movement Multifractal Nonlinearity
Tool Embodiment Is Reflected in Movement Multifractal Nonlinearity
Recent advances in neuroscience have linked dynamical systems theory to cognition. The main contention is that extended cognition relies on a unitary brain-body-tool system showing...
Analysis of Vector-Field Multifractal Cascades
Analysis of Vector-Field Multifractal Cascades
Multifractals provide a powerful framework to describe systems that exhibit variability over a wide range of scales together with strong intermittency. By encoding scale-dependent ...
Multiscale Phosphorus Loss in Farmland Driven by Precipitation: Effects of Farmland Type
Multiscale Phosphorus Loss in Farmland Driven by Precipitation: Effects of Farmland Type
Abstract Precipitation is the primary driver of phosphorus loss from farmland. However, the multi-temporal and spatial characteristics, as well a...
Multifractal Multiscale Analysis of Human Movements during Cognitive Tasks
Multifractal Multiscale Analysis of Human Movements during Cognitive Tasks
Continuous adaptations of the movement system to changing environments or task demands rely on superposed fractal processes exhibiting power laws, that is, multifractality. The est...
Multifractal Nonlinearity in Behavior During a Computer Task with Increasing Difficulty: What Does It Teach Us?
Multifractal Nonlinearity in Behavior During a Computer Task with Increasing Difficulty: What Does It Teach Us?
The complex systems approach to cognitive–motor processing values multifractal nonlinearity as a key formalism in understanding internal interactions across multiple scales that pr...
Frequency of Common Chromosomal Abnormalities in Patients with Idiopathic Acquired Aplastic Anemia
Frequency of Common Chromosomal Abnormalities in Patients with Idiopathic Acquired Aplastic Anemia
Objective: To determine the frequency of common chromosomal aberrations in local population idiopathic determine the frequency of common chromosomal aberrations in local population...
Spatiotemporal multifractal characteristics of electromagnetic radiation in response to deep coal rock bursts
Spatiotemporal multifractal characteristics of electromagnetic radiation in response to deep coal rock bursts
Abstract. Dynamic collapses of deeply mined coal rocks are severe threats to miners, in order to predict the collapses more accurately using electromagnetic radiation (EMR), we inv...

Back to Top