Diffusion Index Forecast with Tensor Data
By: Bin Chen, Yuefeng Han, Qiyang Yu
Potential Business Impact:
Predicts trade better using math tricks.
In this paper, we consider diffusion index forecast with both tensor and non-tensor predictors, where the tensor structure is preserved with a Canonical Polyadic (CP) tensor factor model. When the number of non-tensor predictors is small, we study the asymptotic properties of the least-squared estimator in this tensor factor-augmented regression, allowing for factors with different strengths. We derive an analytical formula for prediction intervals that accounts for the estimation uncertainty of the latent factors. In addition, we propose a novel thresholding estimator for the high-dimensional covariance matrix that is robust to cross-sectional dependence. When the number of non-tensor predictors exceeds or diverges with the sample size, we introduce a multi-source factor-augmented sparse regression model and establish the consistency of the corresponding penalized estimator. Simulation studies validate our theoretical results and an empirical application to US trade flows demonstrates the advantages of our approach over other popular methods in the literature.
Similar Papers
Threshold Tensor Factor Model in CP Form
Methodology
Finds hidden patterns that change over time.
An Efficient and Interpretable Autoregressive Model for High-Dimensional Tensor-Valued Time Series
Methodology
Finds patterns in weather to predict future changes.
Nonparametric estimation of a factorizable density using diffusion models
Statistics Theory
Makes computers create realistic pictures and sounds.