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Dive into the research topics where Vassilis Kalofolias is active.

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Featured researches published by Vassilis Kalofolias.


IEEE Journal of Selected Topics in Signal Processing | 2016

Fast Robust PCA on Graphs

Nauman Shahid; Nathanael Perraudin; Vassilis Kalofolias; Gilles Puy; Pierre Vandergheynst

Mining useful clusters from high dimensional data have received significant attention of the computer vision and pattern recognition community in the recent years. Linear and nonlinear dimensionality reduction has played an important role to overcome the curse of dimensionality. However, often such methods are accompanied with three different problems: high computational complexity (usually associated with the nuclear norm minimization), nonconvexity (for matrix factorization methods), and susceptibility to gross corruptions in the data. In this paper, we propose a principal component analysis (PCA) based solution that overcomes these three issues and approximates a low-rank recovery method for high dimensional datasets. We target the low-rank recovery by enforcing two types of graph smoothness assumptions, one on the data samples and the other on the features by designing a convex optimization problem. The resulting algorithm is fast, efficient, and scalable for huge datasets with O(n log(n)) computational complexity in the number of data samples. It is also robust to gross corruptions in the dataset as well as to the model parameters. Clustering experiments on 7 benchmark datasets with different types of corruptions and background separation experiments on 3 video datasets show that our proposed model outperforms 10 state-of-the-art dimensionality reduction models. Our theoretical analysis proves that the proposed model is able to recover approximate low-rank representations with a bounded error for clusterable data.


international conference on acoustics, speech, and signal processing | 2016

Song recommendation with non-negative matrix factorization and graph total variation

Kirell Benzi; Vassilis Kalofolias; Xavier Bresson; Pierre Vandergheynst

This work formulates a novel song recommender system as a matrix completion problem that benefits from collaborative filtering through Non-negative Matrix Factorization (NMF) and content-based filtering via total variation (TV) on graphs. The graphs encode both playlist proximity information and song similarity, using a rich combination of audio, meta-data and social features. As we demonstrate, our hybrid recommendation system is very versatile and incorporates several well-known methods while outperforming them. Particularly, we show on real-world data that our model overcomes w.r.t. two evaluation metrics the recommendation of models solely based on low-rank information, graph-based information or a combination of both.


international conference on acoustics, speech, and signal processing | 2017

Learning time varying graphs

Vassilis Kalofolias; Andreas Loukas; Dorina Thanou; Pascal Frossard

We consider the problem of inferring the hidden structure of high-dimensional time-varying data. In particular, we aim at capturing the dynamic relationships by representing data as valued nodes in a sequence of graphs. Our approach is motivated by the observation that imposing a meaningful graph topology can help solving the generally ill-posed and challenging problem of structure inference. To capture the temporal evolution in the sequence of graphs, we introduce a new prior that asserts that the graph edges change smoothly in time. We propose a primal-dual optimization algorithm that scales linearly with the number of allowed edges and can be easily parallelized. Our new algorithm is shown to outperform standard graph learning and other baseline methods both on a synthetic and a real dataset.


international conference on acoustics, speech, and signal processing | 2016

PCA using graph total variation

Nauman Shahid; Nathanael Perraudin; Vassilis Kalofolias; Benjamin Ricaud; Pierre Vandergheynst

Mining useful clusters from high dimensional data has received significant attention of the signal processing and machine learning community in the recent years. Linear and non-linear dimensionality reduction has played an important role to overcome the curse of dimensionality. However, often such methods are accompanied with problems such as high computational complexity (usually associated with the nuclear norm minimization), non-convexity (for matrix factorization methods) or susceptibility to gross corruptions in the data. In this paper we propose a convex, robust, scalable and efficient Principal Component Analysis (PCA) based method to approximate the low-rank representation of high dimensional datasets via a two-way graph regularization scheme. Compared to the exact recovery methods, our method is approximate, in that it enforces a piecewise constant assumption on the samples using a graph total variation and a piecewise smoothness assumption on the features using a graph Tikhonov regularization. Futhermore, it retrieves the low-rank representation in a time that is linear in the number of data samples. Clustering experiments on 3 benchmark datasets with different types of corruptions show that our proposed model outperforms 7 state-of-the-art dimensionality reduction models.


arXiv: Information Theory | 2014

GSPBOX: A toolbox for signal processing on graphs.

Nathanael Perraudin; Johan Paratte; David I Shuman; Vassilis Kalofolias; Pierre Vandergheynst; David K. Hammond


Journal of Machine Learning Research | 2016

How to learn a graph from smooth signals

Vassilis Kalofolias


neural information processing systems | 2014

Matrix Completion on Graphs

Vassilis Kalofolias; Xavier Bresson; Michael M. Bronstein; Pierre Vandergheynst


international conference on computer vision | 2015

Robust Principal Component Analysis on Graphs

Nauman Shahid; Vassilis Kalofolias; Xavier Bresson; Michael M. Bronstein; Pierre Vandergheynst


Linear Algebra and its Applications | 2012

Computing symmetric nonnegative rank factorizations

Vassilis Kalofolias; Efstratios Gallopoulos


international conference on artificial intelligence and statistics | 2016

How to Learn a Graph from Smooth Signals

Vassilis Kalofolias

Collaboration


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Pierre Vandergheynst

École Polytechnique Fédérale de Lausanne

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Nathanael Perraudin

École Polytechnique Fédérale de Lausanne

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Xavier Bresson

École Polytechnique Fédérale de Lausanne

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Nauman Shahid

École Polytechnique Fédérale de Lausanne

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Andreas Loukas

École Polytechnique Fédérale de Lausanne

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Benjamin Ricaud

École Polytechnique Fédérale de Lausanne

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Dorina Thanou

École Polytechnique Fédérale de Lausanne

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Gilles Puy

École Polytechnique Fédérale de Lausanne

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Johan Paratte

École Polytechnique Fédérale de Lausanne

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