Dynamic dependence networks: Financial time series forecasting and portfolio decisions

We discuss Bayesian forecasting of increasingly high-dimensional time series, a key area of application of stochastic dynamic models in the financial industry and allied areas of business. Novel state-space models characterizing sparse patterns of dependence among multiple time series extend existing multivariate volatility models to enable scaling to higher numbers of individual time series. The theory of these dynamic dependence network models shows how the individual series can be decoupled for sequential analysis and then recoupled for applied forecasting and decision analysis. Decoupling allows fast, efficient analysis of each of the series in individual univariate models that are linked - for later recoupling - through a theoretical multivariate volatility structure defined by a sparse underlying graphical model. Computational advances are especially significant in connection with model uncertainty about the sparsity patterns among series that define this graphical model; Bayesian model averaging using discounting of historical information builds substantially on this computational advance. An extensive, detailed case study showcases the use of these models and the improvements in forecasting and financial portfolio investment decisions that are achievable. Using a long series of daily international currencies, stock indices and commodity prices, the case study includes evaluations of multi-day forecasts and Bayesian portfolio analysis with a variety of practical utility functions, as well as comparisons against commodity trading advisor benchmarks. Copyright © 2016 John Wiley & Sons, Ltd.

[1]  Casper J. Albers,et al.  Multivariate forecasting of road traffic flows in the presence of heteroscedasticity and measurement errors , 2013 .

[2]  M. West,et al.  Dynamic Factor Volatility Modeling: A Bayesian Latent Threshold Approach , 2013 .

[3]  R. Kohn,et al.  Parsimonious Covariance Matrix Estimation for Longitudinal Data , 2002 .

[4]  Adrian E. Raftery,et al.  Prediction under Model Uncertainty Via Dynamic Model Averaging : Application to a Cold Rolling Mill 1 , 2008 .

[5]  Michael A. West,et al.  Time Series: Modeling, Computation, and Inference , 2010 .

[6]  Michael A. West,et al.  Archival Version including Appendicies : Experiments in Stochastic Computation for High-Dimensional Graphical Models , 2005 .

[7]  M. West,et al.  Bayesian Analysis of Latent Threshold Dynamic Models , 2013 .

[8]  Dimitris Korobilis,et al.  Large Time-Varying Parameter VARs , 2012 .

[9]  Mike West,et al.  Dynamic network signal processing using latent threshold models , 2015, Digit. Signal Process..

[10]  Catriona M. Queen,et al.  Forecast covariances in the linear multiregression dynamic model , 2008 .

[11]  Catriona M. Queen,et al.  Multiregression dynamic models , 1993 .

[12]  Michael A. West,et al.  GPU-Accelerated Bayesian Learning and Forecasting in Simultaneous Graphical Dynamic Linear Models , 2016 .

[13]  Douglas M. Bates,et al.  Unconstrained parametrizations for variance-covariance matrices , 1996, Stat. Comput..

[14]  Thomas E. Nichols,et al.  Searching Multiregression Dynamic Models of Resting-State fMRI Networks Using Integer Programming , 2015, 1505.06832.

[15]  M. West,et al.  Bayesian Dynamic Factor Models and Portfolio Allocation , 2000 .

[16]  Catriona M. Queen Using the Multiregression Dynamic Model to Forecast Brand Sales in a Competitive Product Market , 1994 .

[17]  Michael A. West,et al.  Bayesian Forecasting and Dynamic Models (2nd edn) , 1997, J. Oper. Res. Soc..

[18]  Giorgio E. Primiceri Time Varying Structural Vector Autoregressions and Monetary Policy , 2002 .

[19]  M. West,et al.  Bayesian analysis of matrix normal graphical models. , 2009, Biometrika.

[20]  Meng Xie Weighted Bayesian Model Averaging for Portfolio Decisions in Matrix Variate Dynamic Linear Models , 2012 .

[21]  Michael A. West,et al.  Dynamic matrix-variate graphical models , 2007 .

[22]  M. West,et al.  Bayesian forecasting and dynamic models , 1989 .