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learning mixtures of ranking models | |
consistency of spectral partitioning of uniform hypergraphs under | |
optimal rates for $k$-nn density and mode estimation | |
bayesian inference for structured spike and slab priors | |
grouping-based low-rank video completion and 3d reconstruction | |
tightening after relax: minimax-optimal sparse pca in polynomial | |
belief propagation recursive neural networks | |
communication efficient distributed machine learning with the | |
on the statistical consistency of plug-in classifiers for | |
distributed context-aware bayesian posterior sampling via | |
neurons as monte carlo samplers: bayesian +inference and learning | |
feedback detection for live predictors | |
serialrank: spectral ranking using seriation | |
multi-class deep boosting | |
bandit convex optimization: towards tight bounds | |
concavity of reweighted kikuchi approximation | |
a framework for studying synaptic plasticity with neural spike | |
efficient structured matrix rank minimization | |
large-scale l-bfgs using mapreduce | |
a framework for testing identifiability of bayesian models of | |
dynamic topic modeling via rank factor analysis | |
global sensitivity analysis for map inference in graphical models | |
computing nash equilibria in generalized interdependent security | |
robust kernel density estimation by scaling and projection in | |
projective dictionary pair learning for pattern classification | |
blossom tree graphical models | |
capturing semantically meaningful word dependencies with an | |
reputation-based user filtering in crowd-sourcing systems | |
distance-based network recovery under feature correlation | |
zeta hull pursuits: learning non-convex data hulls | |
optimizing f-measures by cost-sensitive classification | |
submodular attribute selection for action recognition in video | |
online decision-making in general combinatorial spaces | |
robust logistic regression and classification | |
saga: a fast incremental gradient method with support for | |
provable submodular minimization using wolfe's algorithm | |
deep fragment embeddings for bidirectional image sentence mapping | |
learning shuffle ideals under restricted distributions | |
stochastic proximal gradient descent with acceleration techniques | |
efficient learning by implicit exploration in bandit problems with | |
inferring sparse representations of continuous signals with | |
a statistical decision-theoretic framework for social choice | |
unsupervised transcription of piano music | |
bounded regret for finite-armed structured bandits | |
tight continuous relaxation of the balanced k-cut problem | |
diverse sequential subset selection for supervised video | |
discrete graph hashing | |
learning to discover efficient mathematical identities | |
a boosting framework on grounds of online learning | |
multilabel structured output learning with random spanning trees of | |
stochastic variational inference for hidden markov models | |
fast multivariate spatio-temporal analysis via low rank tensor | |
convolutional neural network architectures for matching natural | |
message passing inference for large scale graphical models with | |
weakly-supervised discovery of visual pattern configurations | |
a complete variational tracker | |
probabilistic low-rank matrix completion on finite alphabets | |
improved multimodal deep learning with variation of information | |
oracle sparse pca and its inference | |
deep recursive neural networks for compositionality in language | |
bayesian nonlinear support vector machines and discriminative | |
efficient partial monitoring with prior information | |
structure learning of antiferromagnetic ising models | |
scalable methods for nonnegative matrix factorizations of | |
learning multiple tasks in parallel with a shared annotator | |
a wild bootstrap for degenerate kernel tests | |
communication-efficient distributed dual coordinate ascent | |
learning generative models with visual attention | |
shape and illumination from shading using the generic viewpoint | |
articulated pose estimation by a graphical model with image | |
unsupervised learning of an efficient short-term memory network | |
two-layer feature reduction for sparse-group lasso via | |
latent support measure machines for bag-of-words data | |
approximating hierarchical mv-sets for hierarchical clustering | |
local decorrelation for improved pedestrian detection | |
dependent nonparametric trees for dynamic hierarchical clustering | |
exact post model selection inference for marginal screening | |
generalized higher-order orthogonal iteration for tensor | |
on the computational efficiency of training neural networks | |
extracting certainty from uncertainty: transductive pairwise | |
joint training of a convolutional network and a graphical model for | |
online combinatorial optimization with stochastic decision sets and | |
fast kernel learning for multidimensional pattern extrapolation | |
randomized experimental design for causal graph discovery | |
pre-training of recurrent neural networks via linear autoencoders | |
sampling for inference in probabilistic models with fast bayesian | |
making pairwise binary graphical models attractive | |
incremental local gaussian regression | |
do deep nets really need to be deep? | |
mind the nuisance: gaussian process classification using privileged | |
new rules for domain independent lifted map inference | |
graphical models for recovering probabilistic and causal queries | |
the residual bootstrap for high-dimensional regression with | |
flexible transfer learning under support and model shift | |
top rank optimization in linear time | |
optimization methods for sparse pseudo-likelihood graphical model | |
tight bounds for influence in diffusion networks and application to | |
speeding-up graphical model optimization via a coarse-to-fine | |
spectral clustering of graphs with the bethe hessian | |
online and stochastic gradient methods for non-decomposable loss | |
a multi-world approach to question answering about real-world | |
general stochastic networks for classification | |
modeling sequences with a predictive gating network | |
combinatorial pure exploration of multi-armed bandits | |
ranking via robust binary classification | |
sequence to sequence learning with neural networks | |
simultaneous model selection and optimization through | |
fast and robust least squares estimation in corrupted linear models | |
parallel direction method of multipliers | |
transportability from multiple environments with limited | |
spectral methods for supervised topic models | |
a differential equation for modeling nesterov's accelerated | |
diverse randomized agents vote to win | |
learning mixtures of submodular functions for image collection | |
augmentative message passing for traveling salesman problem and | |
cone-constrained principal component analysis | |
elementary estimators for graphical models | |
active learning and best-response dynamics | |
a probabilistic framework for multimodal retrieval using | |
learning to optimize via information-directed sampling | |
simple map inference via low-rank relaxations | |
log-hilbert-schmidt metric between positive definite operators on | |
learning a concept hierarchy from multi-labeled documents | |
low rank approximation lower bounds in row-update streams | |
weighted importance sampling for off-policy learning with linear | |
a safe screening rule for sparse logistic regression | |
analysis of learning from positive and unlabeled data | |
multivariate regression with calibration | |
analysis of brain states from multi-region lfp time-series | |
mcmc sampling in hdps using sub-clusters | |
extremal mechanisms for local differential privacy | |
a representation theory for ranking functions | |
predictive entropy search for efficient global optimization of | |
estimation with norm regularization | |
beyond the birkhoff polytope: convex relaxations for vector | |
scaling-up importance sampling for markov logic networks | |
shaping social activity by incentivizing users | |
automatic discovery of cognitive skills to improve the prediction | |
efficient inference of continuous markov random fields with | |
clustering from labels and time-varying graphs | |
probabilistic ode solvers with runge-kutta means | |
best-arm identification in linear bandits | |
convex optimization procedure for clustering: theoretical revisit | |
greedy algorithms for finding diverse subsets in | |
a provable svd-based algorithm for learning topics in dominant | |
parallel double greedy submodular maximization | |
information-based learning by agents in unbounded state spaces | |
dimensionality reduction with subspace structure preservation | |
rates of convergence for nearest neighbor classification | |
graph clustering with missing data: convex algorithms and analysis | |
sensory integration and density estimation | |
nonparametric bayesian inference on multivariate exponential | |
trajectory optimization under unknown dynamics for policy search | |
fast sampling-based inference in balanced neuronal networks | |
optimal teaching for limited-capacity human learners | |
a filtering approach to stochastic variational inference | |
analysis of variational bayesian latent dirichlet allocation: | |
asynchronous anytime sequential monte carlo | |
optimal neural codes for control and estimation | |
conditional swap regret and conditional correlated equilibrium | |
multi-scale graphical models for spatio-temporal processes | |
a multiplicative model for learning distributed text-based | |
quantized kernel learning for feature matching | |
active regression by stratification | |
signal aggregate constraints in additive factorial hmms, with | |
positive curvature and hamiltonian monte carlo | |
on prior distributions and approximate inference for structured | |
non-convex robust pca | |
multi-resolution cascades for multiclass object detection | |
learning chordal markov networks by dynamic programming | |
on integrated clustering and outlier detection | |
an accelerated proximal coordinate gradient method | |
the linear convergence rate of decomposable submodular function | |
on multiplicative multitask feature learning | |
semi-separable hamiltonian monte carlo for inference in bayesian | |
multiscale fields of patterns | |
deep networks with internal selective attention through feedback | |
zero-shot recognition with unreliable attributes | |
joint task learning via deep neural networks with application to | |
the large margin mechanism for differentially private maximization | |
recursive context propagation network for semantic scene labeling | |
clustered factor analysis of multineuronal spike data | |
learning deep features for scene recognition using places database | |
on iterative hard thresholding methods for high-dimensional | |
provable tensor factorization with missing data | |
robust bayesian max-margin clustering | |
improved distributed principal component analysis | |
metric learning for temporal sequence alignment | |
generalized dantzig selector: application to the k-support norm | |
finding a sparse vector in a subspace: linear sparsity using | |
a synaptical story of persistent activity with graded lifetime in a | |
self-adaptable patterns for feature coding | |
from map to marginals: variational inference in bayesian submodular | |
hardness of parameter estimation in graphical models | |
delay-tolerant algorithms for asynchronous distributed online | |
generative adversarial nets | |
sparse dependent bayesian structure learning | |
localized data fusion for kernel k-means clustering with | |
an autoencoder approach to learning bilingual word representations | |
streaming, memory limited algorithms for community detection | |
content-based recommendations with poisson factorization | |
spectral methods for indian buffet process inference | |
learning to search in branch and bound algorithms | |
factoring variations in natural images with deep gaussian mixture | |
iterative neural autoregressive distribution estimator nade-k | |
minimax-optimal inference from partial rankings | |
discovering, learning and exploiting relevance | |
self-paced learning with diversity | |
spatio-temporal representations of uncertainty in spiking neural | |
smoothed gradients for stochastic variational inference | |
multi-step stochastic admm in high dimensions: applications to | |
spike frequency adaptation implements anticipative tracking in | |
feedforward learning of mixture models | |
mode estimation for high dimensional discrete tree graphical models | |
on communication cost of distributed statistical estimation and | |
distributed estimation, information loss and exponential families | |
distributed parameter estimation in probabilistic graphical models | |
on the information theoretic limits of learning ising models | |
fairness in multi-agent sequential decision-making | |
probabilistic differential dynamic programming | |
proximal quasi-newton for computationally intensive | |
clamping variables and approximate inference | |
spectral k-support norm regularization | |
exponential concentration of a density functional estimator | |
multitask learning meets tensor factorization: task imputation via | |
near-optimal-sample estimators for spherical gaussian mixtures | |
inferring synaptic conductances from spike trains with a | |
effective deep face representation comes from both identification | |
just-in-time learning for fast and flexible inference | |
pac-bayesian auc classification and scoring | |
on the relations of lfps & neural spike trains | |
optimal decision-making with time-varying evidence reliability | |
sparse polynomial learning and graph sketching | |
decoupled variational gaussian inference | |
bregman alternating direction method of multipliers | |
biclustering by message passing | |
expectation backpropagation: parameter-free training of multilayer | |
universal option models | |
latent case model: a generative approach for case-based reasoning | |
automated variational inference for gaussian process models | |
unsupervised learning by deep scattering contractions | |
learning time-varying coverage functions | |
discriminative unsupervised feature learning with convolutional | |
neural word embedding as implicit matrix factorization | |
searching for higgs boson decay modes with deep learning | |
rounding-based moves for metric labeling | |
nonparametric pairwise similarity for clustering | |
spectral methods meet em: a provably optimal algorithm for | |
bayes-adaptive simulation-based search with value function | |
a dual algorithm for olfactory computation in the locust brain | |
dfacto: distributed factorization of tensors | |
distributed balanced clustering via mapping coresets | |
efficient sampling for learning sparse additive models in high | |
predicting useful neighborhoods for lazy local learning | |
multi-scale spectral decomposition of massive graphs | |
large-margin convex polytope machine | |
parallel successive convex approximation for nonsmooth nonconvex | |
a drifting-games analysis for online learning and applications to | |
beyond disagreement-based agnostic active learning | |
convex deep learning via normalized kernels | |
subspace embeddings for the polynomial kernel | |
poisson process jumping between an unknown number of rates: | |
identifying and attacking the saddle point problem in | |
conditional random field autoencoders for unsupervised structured | |
local linear convergence of forward--backward under partial | |
learning from weakly supervised data by the expectation loss svm | |
learning the learning rate for prediction with expert advice | |
distributed variational inference in sparse gaussian process | |
efficient minimax strategies for square loss games | |
consistency of weighted majority votes | |
time--data tradeoffs by smoothing | |
a state-space model for decoding auditory attentional modulation | |
deep learning for real-time atari game play using offline | |
bayesian sampling using stochastic gradient thermostats | |
discovering structure in high-dimensional data through correlation | |
recovery of coherent data via low-rank dictionary pursuit | |
on the number of linear regions of deep neural networks | |
two-stream convolutional networks for action recognition in videos | |
optimizing energy production using policy search and predictive | |
separable deep convolutional neural network for image deconvolution | |
design principles of the hippocampal cognitive map | |
augur: data-parallel probabilistic modelling | |
asymmetric lsh (alsh) for sublinear time maximum inner product | |
deterministic symmetric positive semidefinite matrix completion | |
kernel mean estimation via spectral filtering | |
expectation-maximization for learning determinantal point processes | |
do convnets learn correspondence? | |
causal inference through a witness protection program | |
sparse space-time deconvolution for calcium image analysis | |
causal strategic inference in networked microfinance economies | |
stochastic network design in bidirected trees | |
algorithms for cvar optimization in mdps | |
from large-scale object classifiers to large-scale object | |
orbit regularization | |
robust classification under sample selection bias | |
deep symmetry networks | |
object localization based on structural svm using privileged | |
fast prediction for large-scale kernel machines | |
the limits of squared euclidean distance regularization | |
extreme bandits | |
from stochastic mixability to fast rates | |
stochastic multi-armed-bandit problem with non-stationary rewards | |
constant nullspace strong convexity and fast convergence of | |
semi-supervised learning with deep generative models | |
restricted boltzmann machines modeling human choice | |
learning convolution filters for inverse covariance estimation of | |
optimal regret minimization in posted-price auctions with strategic | |
attentional neural network: feature selection using cognitive | |
a block-coordinate descent approach for large-scale sparse inverse | |
quantized estimation of gaussian sequence models in euclidean balls | |
exploiting linear structure within convolutional networks for | |
altitude training: strong bounds for single-layer dropout | |
greedy subspace clustering | |
consistent binary classification with generalized performance | |
learning mixed multinomial logit model from ordinal data | |
exploiting easy data in online optimization | |
algorithm selection by rational metareasoning as a model of human | |
efficient optimization for average precision svm | |
compressive sensing of signals from a gmm with sparse precision | |
large scale canonical correlation analysis with iterative least | |
parallel feature selection inspired by group testing | |
partition-wise linear models | |
recursive inversion models for permutations | |
the noisy power method: a meta algorithm with applications | |
multivariate f-divergence estimation with confidence | |
fundamental limits of online and distributed algorithms for | |
stochastic gradient descent, weighted sampling, and the randomized | |
gibbs-type indian buffet processes | |
depth map prediction from a single image using a multi-scale deep | |
testing unfaithful gaussian graphical models | |
hamming ball auxiliary sampling for factorial hidden markov models | |
difference of convex functions programming for reinforcement | |
permutation diffusion maps (pdm) with application to the image | |
fast training of pose detectors in the fourier domain | |
sparse pca via covariance thresholding | |
the infinite mixture of infinite gaussian mixtures | |
scalable inference for neuronal connectivity from calcium imaging | |
incremental clustering: the case for extra clusters | |
general table completion using a bayesian nonparametric model | |
accelerated mini-batch randomized block coordinate descent method | |
distributed power-law graph computing: theoretical and empirical | |
online optimization for max-norm regularization | |
covariance shrinkage for autocorrelated data | |
deep learning multi-view representation for face recognition | |
low-dimensional models of neural population activity in sensory | |
tight convex relaxations for sparse matrix factorization | |
scalable kernel methods via doubly stochastic gradients | |
divide-and-conquer learning by anchoring a conical hull | |
magnitude-sensitive preference formation` | |
low-rank time-frequency synthesis | |
learning with pseudo-ensembles | |
efficient minimax signal detection on graphs | |
sparse random feature algorithm as coordinate descent in hilbert | |
a latent source model for online collaborative filtering | |
coresets for k-segmentation of streaming data | |
mondrian forests: efficient online random forests | |
scalable non-linear learning with adaptive polynomial expansions | |
near-optimal density estimation in near-linear time using | |
variational gaussian process state-space models | |
sequential monte carlo for graphical models | |
learning with fredholm kernels | |
projecting markov random field parameters for fast mixing | |
learning distributional representations for structured output | |
an integer polynomial programming based framework for lifted map | |
optimistic planning in markov decision processes using a generative | |
sparse multi-task reinforcement learning | |
encoding high dimensional local features by sparse coding based | |
deconvolution of high dimensional mixtures via boosting, with | |
learning on graphs using orthonormal representation is | |
raam: the benefits of robustness in approximating aggregated mdps | |
learning from latent and observable patterns on multi-relational | |
a statistical model for tensor pca | |
quantifying the transferability of features in deep neural networks | |
on sparse gaussian chain graph models | |
robust tensor decomposition with gross corruption | |
quic & dirty: a quadratic approximation approach for dirty | |
scale adaptive blind deblurring | |
constrained convex minimization via model-based excessive gap | |
real-time decoding of an integrate and fire encoder | |
advances in learning bayesian networks of bounded treewidth | |
pewa: patch-based exponentially weighted aggregation for image | |
extracting latent structure from multiple interacting neural | |
extended and unscented gaussian processes | |
primitives for dynamic big model parallelism | |
decomposing parameter estimation problems | |
median selection subset aggregation for parallel inference | |
model-based reinforcement learning and the eluder dimension | |
feature cross-substitution in adversarial classification | |
exclusive feature learning on arbitrary structures | |
using convolutional neural networks to recognize rhythm +stimuli | |
convolutional kernel networks | |
discriminative metric learning by neighborhood gerrymandering | |
repeated contextual auctions with strategic buyers | |
a unified semantic embedding with discriminative / generative | |
controlling privacy in recommender systems | |
gaussian process volatility model | |
beta-negative binomial process and exchangeable +random partitions | |
near-optimal sample compression for nearest neighbors | |
learning to think like a drug dealer: efficient optimization | |
analog memories in a balanced rate-based network of e-i neurons | |
optimal prior-dependent neural population coding under shared input | |
recurrent models of visual attention | |
a bayesian model for identifying hierarchically organised states in | |
tree-structured gaussian process approximations | |
spectral learning of mixture of hidden markov models | |
the blinded bandit: learning with adaptive feedback | |
near-optimal reinforcement learning in factored mdps | |
generalized unsupervised manifold alignment |
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