Autoregressive Kernels For Time Series
Abstract
We propose in this work a new family of kernels for variable-length time series. Our work builds upon the vector autoregressive (VAR) model for multivariate stochastic processes: given a multivariate time series x, we consider the likelihood function pθ(x) of different parameters θ in the VAR model as features to describe x. To compare two time series x and x', we form the product of their features pθ(x) pθ(x') which is integrated out w.r.t θ using a matrix normal-inverse Wishart prior. Among other properties, this kernel can be easily computed when the dimension d of the time series is much larger than the lengths of the considered time series x and x'. It can also be generalized to time series taking values in arbitrary state spaces, as long as the state space itself is endowed with a kernel . In that case, the kernel between x and x' is a a function of the Gram matrices produced by on observations and subsequences of observations enumerated in x and x'. We describe a computationally efficient implementation of this generalization that uses low-rank matrix factorization techniques. These kernels are compared to other known kernels using a set of benchmark classification tasks carried out with support vector machines.
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