Title :
GPstruct: Bayesian Structured Prediction Using Gaussian Processes
Author :
Bratieres, Sebastien ; Quadrianto, Novi ; Ghahramani, Zoubin
Author_Institution :
Dept. of Eng., Univ. of Cambridge, Cambridge, UK
Abstract :
We introduce a conceptually novel structured prediction model, GPstruct, which is kernelized, non-parametric and Bayesian, by design. We motivate the model with respect to existing approaches, among others, conditional random fields (CRFs), maximum margin Markov networks (M3N), and structured support vector machines (SVMstruct), which embody only a subset of its properties. We present an inference procedure based on Markov Chain Monte Carlo. The framework can be instantiated for a wide range of structured objects such as linear chains, trees, grids, and other general graphs. As a proof of concept, the model is benchmarked on several natural language processing tasks and a video gesture segmentation task involving a linear chain structure. We show prediction accuracies for GPstruct which are comparable to or exceeding those of CRFs and SVMstruct.
Keywords :
Gaussian processes; Markov processes; Monte Carlo methods; belief networks; data analysis; inference mechanisms; Bayesian structured prediction; CRF; GPstruct; Gaussian processes; M3N; Markov chain Monte Carlo; SVMstruct; conditional random fields; inference procedure; kernelized prediction model; maximum margin Markov networks; nonparametric prediction model; structured prediction model; structured support vector machines; Bayes methods; Gaussian processes; Kernel; Logistics; Markov random fields; Predictive models; Support vector machines; Gaussian processes; Segmentation; Statistical learning, Markov random fields, Gaussion processes, natural language processing, structured prediction; Structured prediction;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2014.2366151