Predicting next items of sequences of symbols has many applications in a wide range of domains. Several sequence prediction models have been proposed such as DG, All-k-order markov and PPM. Recently, a model named Compact Prediction Tree (CPT) has been proposed. It relies on a tree structure and a more complex prediction algorithm to offer considerably more accurate predictions than many state-of-the-art prediction models. However, an important limitation of CPT is its high time and space complexity. In this article, we address this issue by proposing three novel strategies to reduce CPT’s size and prediction time, and increase its accuracy. Experimental results on seven real life datasets show that the resulting model (CPT+) is up to 98 ti...
Structured prediction tasks pose a fundamental trade-off between the need for model com-plexity to i...
AbstractThe problem of predicting an arbitrary sequence x1x2x3 · · · is considered with xt + 1 being...
Motivation: Markov models are very popular for analyzing complex sequences such as protein sequences...
Abstract. Predicting the next item of a sequence over a finite alphabet has important applications i...
This paper is concerned with algorithms for prediction of discrete sequences over a finite alphabet,...
Discovering unseen patterns from web clickstream is an upcoming research area. One of the meaningful...
Sequences of symbols can be used to represent data in many domains such as text documents, activity ...
Sequences of symbols can be used to represent data in many domains such as text documents, activity ...
Building on results from data compression, we prove nearly tight bounds on how well sequences of len...
This article presents the PST R package for categorical sequence analysis with probabilistic suffix ...
We study the problem of learning to predict a spatiotemporal output sequence given an input sequence...
We study the problem of learning to predict a spatiotemporal output sequence given an input sequence...
Sequence-to-sequence constituency parsing casts the tree structured prediction problem as a general ...
This article presents the PST R package for categorical sequence analysis with probabilistic suffix ...
Complex tasks such as sequence labeling, collective classification, and activity recognition involve...
Structured prediction tasks pose a fundamental trade-off between the need for model com-plexity to i...
AbstractThe problem of predicting an arbitrary sequence x1x2x3 · · · is considered with xt + 1 being...
Motivation: Markov models are very popular for analyzing complex sequences such as protein sequences...
Abstract. Predicting the next item of a sequence over a finite alphabet has important applications i...
This paper is concerned with algorithms for prediction of discrete sequences over a finite alphabet,...
Discovering unseen patterns from web clickstream is an upcoming research area. One of the meaningful...
Sequences of symbols can be used to represent data in many domains such as text documents, activity ...
Sequences of symbols can be used to represent data in many domains such as text documents, activity ...
Building on results from data compression, we prove nearly tight bounds on how well sequences of len...
This article presents the PST R package for categorical sequence analysis with probabilistic suffix ...
We study the problem of learning to predict a spatiotemporal output sequence given an input sequence...
We study the problem of learning to predict a spatiotemporal output sequence given an input sequence...
Sequence-to-sequence constituency parsing casts the tree structured prediction problem as a general ...
This article presents the PST R package for categorical sequence analysis with probabilistic suffix ...
Complex tasks such as sequence labeling, collective classification, and activity recognition involve...
Structured prediction tasks pose a fundamental trade-off between the need for model com-plexity to i...
AbstractThe problem of predicting an arbitrary sequence x1x2x3 · · · is considered with xt + 1 being...
Motivation: Markov models are very popular for analyzing complex sequences such as protein sequences...