A popular approach in the investigation of the short-term behavior of a non-stationary time series is to assume that the time series decomposes additively into a long-term trend and short-term fluctuations. A first step towards investigating the short-term behavior requires estimation of the trend, typically via smoothing in the time domain. We propose a method for time-domain smoothing, called complexity-regularized regression (CRR). This method extends recent work, which infers a regression function that makes residuals from a model “look random”. Our approach operationalizes non-randomness in the residuals by applying ideas from computational mechanics, in particular the statistical complexity of the residual process. The method is compa...
This paper characterizes the impact of covariates serial dependence on the non-asymptotic estimation...
We propose new estimation methods for time series models, possibly noncausal and/or noninvertible, u...
The problem of time series prediction is studied within the uniform convergence framework of Vapnik ...
In this paper, the background and functioning of a simple but effective continuous time approach for...
Abstract—Analyzing the changes in volatility is an important aspect in financial data analysis leadi...
[1] In this paper, the background and functioning of a simple but effective continuous time approach...
In many physical, social, and economic phenomena, we observe changes in a studied quantity only in d...
Reduced rank regression (RRR) has been extensively employed for modelling economic and financial tim...
Thesis (Ph.D.)--University of Washington, 2018It is well known that small values of unsuspected retu...
Randomness and regularities in finance are usually treated in probabilistic terms. In this paper, we...
The presence of long-range dependence and nonlinear dynamics in stock returns is examined using data...
The application of recurrence quantification analysis (RQA) and state space divergence reconstructio...
We introduce a new method for quantifying pattern-based complex short-time correlations of a time se...
Modeling the dependence between consecutive observations in a time series plays a crucial role in ri...
We show that it is possible to adapt to nonparametric disturbance autocorrelation in time series reg...
This paper characterizes the impact of covariates serial dependence on the non-asymptotic estimation...
We propose new estimation methods for time series models, possibly noncausal and/or noninvertible, u...
The problem of time series prediction is studied within the uniform convergence framework of Vapnik ...
In this paper, the background and functioning of a simple but effective continuous time approach for...
Abstract—Analyzing the changes in volatility is an important aspect in financial data analysis leadi...
[1] In this paper, the background and functioning of a simple but effective continuous time approach...
In many physical, social, and economic phenomena, we observe changes in a studied quantity only in d...
Reduced rank regression (RRR) has been extensively employed for modelling economic and financial tim...
Thesis (Ph.D.)--University of Washington, 2018It is well known that small values of unsuspected retu...
Randomness and regularities in finance are usually treated in probabilistic terms. In this paper, we...
The presence of long-range dependence and nonlinear dynamics in stock returns is examined using data...
The application of recurrence quantification analysis (RQA) and state space divergence reconstructio...
We introduce a new method for quantifying pattern-based complex short-time correlations of a time se...
Modeling the dependence between consecutive observations in a time series plays a crucial role in ri...
We show that it is possible to adapt to nonparametric disturbance autocorrelation in time series reg...
This paper characterizes the impact of covariates serial dependence on the non-asymptotic estimation...
We propose new estimation methods for time series models, possibly noncausal and/or noninvertible, u...
The problem of time series prediction is studied within the uniform convergence framework of Vapnik ...