نتایج جستجو برای: latent variable

تعداد نتایج: 308175  

2008
James Henderson Paola Merlo Gabriele Musillo Ivan Titov

We propose a solution to the challenge of the CoNLL 2008 shared task that uses a generative history-based latent variable model to predict the most likely derivation of a synchronous dependency parser for both syntactic and semantic dependencies. The submitted model yields 79.1% macroaverage F1 performance, for the joint task, 86.9% syntactic dependencies LAS and 71.0% semantic dependencies F1....

2014
Stefanos Eleftheriadis Ognjen Rudovic Maja Pantic

We propose a view-constrained latent variable model for multi-view facial expression classification. In this model, we first learn a discriminative manifold shared by multiple views of facial expressions, followed by the expression classification in the shared manifold. For learning, we use the expression data from multiple views, however, the inference is performed using the data from a single...

2016
Cuong Hoang Stella Frank Khalil Sima'an

This paper describes Scorpio, the ILLCUvA Adaptation System submitted to the IT-DOMAIN translation task at WMT 2016, which participated with the language pair of English-Dutch. This system consolidates the ideas in our previous work on latent variable models for adaptation, and demonstrates their effectiveness in a competitive setting.

Journal: :CoRR 2017
Matteo Zanotto Riccardo Volpi Alessandro Maccione Luca Berdondini Diego Sona Vittorio Murino

The retina is a complex nervous system which encodes visual stimuli before higher order processing occurs in the visual cortex. In this study we evaluated whether information about the stimuli received by the retina can be retrieved from the firing rate distribution of Retinal Ganglion Cells (RGCs), exploiting High-Density 64x64 MEA technology. To this end, we modeled the RGC population activit...

2009
Michael C. Edwards R. J. Wirth

Many constructs developmental scientists study cannot be directly observed. In such cases, scales are created that reflect the construct of interest. Observed behaviors are taken as manifestations of an unobserved common cause. As crucial as measurement is to understanding many psychological phenomenon, it is perhaps even more important when the goal of research is to understand how a construct...

2006
Ricardo Silva

In previous work, we have developed a principled way of learning the causal structure of linear latent variable models (Silva et al., 2006). However, we have considered the case for models with pure measures only. Pure measures are observed variables that measure no more than one latent variable. This paper presents theoretical extensions that justify the selection of some types of impure measu...

2016
Ieva Kazlauskaite Carl Henrik Ek Neill D. F. Campbell

In this paper we present a model that is capable of learning alignments between high-dimensional data by exploiting low-dimensional structures. Specifically, our method uses a Gaussian process latent variable model (GP-LVM) to learn alignments and latent representations simultaneously. The results show that our model performs alignment implicitly and improves the smoothness of the low dimension...

2014
Heydar Maboudi Afkham Carl Henrik Ek Stefan Carlsson

In this paper, we discuss the properties of a class of latent variable models that assumes each labeled sample is associated with set of different features, with no prior knowledge of which feature is the most relevant feature to be used. Deformable-Part Models (DPM) can be seen as good example of such models. While Latent SVM framework (LSVM) has proven to be an efficient tool for solving thes...

2009
Salil Deena Aphrodite Galata

In this work, synthesis of facial animation is done by modelling the mapping between facial motion and speech using the shared Gaussian process latent variable model. Both data are processed separately and subsequently coupled together to yield a shared latent space. This method allows coarticulation to be modelled by having a dynamical model on the latent space. Synthesis of novel animation is...

2017
Yuqi Gu Gongjun Xu

Cognitive Diagnosis Models (CDMs) are useful statistical tools in cognitive diagnosis assessment. However, as many other latent variable models, the CDMs often suffer from the non-identifiability issue. This work gives the sufficient and necessary condition for the identifiability of the basic DINA model, which not only addresses the open problem in Xu and Zhang (2016, Psychomatrika, 81:625-649...

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