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Featured researches published by Ruipeng Liu.


Physica A-statistical Mechanics and Its Applications | 2012

Understanding the source of multifractality in financial markets

Jozef Barunik; Tomaso Aste; T. Di Matteo; Ruipeng Liu

In this paper, we use the generalized Hurst exponent approach to study the multi-scaling behavior of different financial time series. We show that this approach is robust and powerful in detecting different types of multi-scaling. We observe a puzzling phenomenon where an apparent increase in multifractality is measured in time series generated from shuffled returns, where all time-correlations are destroyed, while the return distributions are conserved. This effect is robust and it is reproduced in several real financial data including stock market indices, exchange rates and interest rates. In order to understand the origin of this effect we investigate different simulated time series by means of the Markov switching multifractal model, autoregressive fractionally integrated moving average processes with stable innovations, fractional Brownian motion and Levy flights. Overall we conclude that the multifractality observed in financial time series is mainly a consequence of the characteristic fat-tailed distribution of the returns and time-correlations have the effect to decrease the measured multifractality.


Physica A-statistical Mechanics and Its Applications | 2007

True and apparent scaling: The proximity of the Markov-switching multifractal model to long-range dependence

Ruipeng Liu; T. Di Matteo; Thomas Lux

In this paper, we consider daily financial data of a collection of different stock market indices, exchange rates, and interest rates, and we analyze their multi-scaling properties by estimating a simple specification of the Markov-switching multifractal (MSM) model. In order to see how well the estimated model captures the temporal dependence of the data, we estimate and compare the scaling exponents H(q) (for q=1,2) for both empirical data and simulated data of the MSM model. In most cases the multifractal model appears to generate ‘apparent’ long memory in agreement with the empirical scaling laws.


European Journal of Finance | 2015

Non-homogeneous volatility correlations in the bivariate multifractal model

Ruipeng Liu; Thomas Lux

In this paper, we consider an extension of the recently proposed bivariate Markov-switching multifractal model of Calvet, Fisher, and Thompson [2006. “Volatility Comovement: A Multifrequency Approach.” Journal of Econometrics 131: 179–215]. In particular, we allow correlations between volatility components to be non-homogeneous with two different parameters governing the volatility correlations at high and low frequencies. Specification tests confirm the added explanatory value of this specification. In order to explore its practical performance, we apply the model for computing value-at-risk statistics for different classes of financial assets and compare the results with the baseline, homogeneous bivariate multifractal model and the bivariate DCC-GARCH of Engle [2002. “Dynamic Conditional Correlation: A Simple Class of Multivariate Generalized Autoregressive Conditional Heteroskedasticity Models.” Journal of Business & Economic Statistics 20 (3): 339–350]. As it turns out, the multifractal model with heterogeneous volatility correlations provides more reliable results than both the homogeneous benchmark and the DCC-GARCH model.


Complex Systems | 2007

Multi-scaling modelling in financial markets

Ruipeng Liu; Tomaso Aste; T. Di Matteo

In the recent years, a new wave of interest spurred the involvement of complexity in finance which might provide a guideline to understand the mechanism of financial markets, and researchers with different backgrounds have made increasing contributions introducing new techniques and methodologies. In this paper, Markov-switching multifractal models (MSM) are briefly reviewed and the multi-scaling properties of different financial data are analyzed by computing the scaling exponents by means of the generalized Hurst exponent H(q). In particular we have considered H(q) for price data, absolute returns and squared returns of different empirical financial time series. We have computed H(q) for the simulated data based on the MSM models with Binomial and Lognormal distributions of the volatility components. The results demonstrate the capacity of the multifractal (MF) models to capture the stylized facts in finance, and the ability of the generalized Hurst exponents approach to detect the scaling feature of financial time series.


Archive | 2011

The Efficient Market Hypothesis Re-Visited: New Evidence from 100 US Firms

Paresh Kumar Kumar Narayan; Ruipeng Liu

In this paper, we test the efficient market hypothesis for 100 US firms listed on the New York Stock Exchange. To test the unit root null hypothesis, we develop a generalized autoregressive heteroskedasticity (GARCH) model that not only caters for the GARCH errors but also allows for two endogenous structural breaks in the data series. We study the size and power properties of the proposed GARCH structural break unit root test and find that it statistically performs well in finite samples. We find that only 22% of firms have a stationary stock price series.


Energy Economics | 2015

A unit root model for trending time-series energy variables

Paresh Kumar Kumar Narayan; Ruipeng Liu


Applied Energy | 2011

Are Shocks to Commodity Prices Persistent

Paresh Kumar Kumar Narayan; Ruipeng Liu


Journal of International Financial Markets, Institutions and Money | 2016

A GARCH Model for Testing Market Efficiency

Paresh Kumar Kumar Narayan; Ruipeng Liu; Joakim Westerlund


Economic Modelling | 2013

Determinants of stock price bubbles

Paresh Kumar Kumar Narayan; Sagarika Mishra; Susan Sunila Sharma; Ruipeng Liu


Journal of International Financial Markets, Institutions and Money | 2018

A new GARCH model with higher moments for stock return predictability

Paresh Kumar Kumar Narayan; Ruipeng Liu

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Tomaso Aste

University College London

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Youwei Li

Queen's University Belfast

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