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Dive into the research topics where Fabio Vitale is active.

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Featured researches published by Fabio Vitale.


Theoretical Computer Science | 2011

Predicting the labels of an unknown graph via adaptive exploration

Nicolò Cesa-Bianchi; Claudio Gentile; Fabio Vitale

Motivated by a problem of targeted advertising in social networks, we introduce a new model of online learning on labeled graphs where the graph is initially unknown and the algorithm is free to choose which vertex to predict next. For this learning model, we define an appropriate measure of regularity of a graph labeling called the merging degree. In general, the merging degree of a graph is small when its vertices can be partitioned into a few well-separated clusters within which labels are roughly constant. For the special case of binary labeled graphs, the merging degree is a more refined measure than the cutsize. After observing that natural nonadaptive exploration/prediction strategies, like depth-first with majority vote, do not behave satisfactorily on graphs with small merging degree, we introduce an efficiently implementable adaptive strategy whose cumulative loss is controlled by the merging degree. A matching lower bound shows that in the case of binary labels our analysis cannot be improved.


algorithmic learning theory | 2009

Learning unknown graphs

Nicolò Cesa-Bianchi; Claudio Gentile; Fabio Vitale

Motivated by a problem of targeted advertising in social networks, we introduce and study a new model of online learning on labeled graphs where the graph is initially unknown, and the algorithm is free to choose the next vertex to predict. After observing that natural nonadaptive exploration/prediction strategies (like depth-first with majority vote) badly fail on simple binary labeled graphs, we introduce an adaptive strategy that performs well under the hypothesis that the vertices of the unknown graph (i.e., the members of the social network) can be partitioned into a few well-separated clusters within which labels are roughly constant (i.e., members in the same cluster tend to prefer the same products). Our algorithm is efficiently implementable and provably competitive against the best of these partitions.


conference on learning theory | 2010

Active Learning on Trees and Graphs

Nicolò Cesa-Bianchi; Claudio Gentile; Fabio Vitale; Giovanni Zappella


international conference on machine learning | 2010

Random spanning trees and the prediction of weighted graphs

Nicolò Cesa-Bianchi; Claudio Gentile; Fabio Vitale; Giovanni Zappella


neural information processing systems | 2011

See the Tree Through the Lines: The Shazoo Algorithm

Fabio Vitale; Nicolò Cesa-Bianchi; Claudio Gentile; Giovanni Zappella


conference on learning theory | 2009

Fast and optimal prediction on a labeled tree

Nicolò Cesa-Bianchi; Claudio Gentile; Fabio Vitale


conference on learning theory | 2012

A Correlation Clustering Approach to Link Classification in Signed Networks

Nicolò Cesa-Bianchi; Claudio Gentile; Fabio Vitale; Giovanni Zappella


neural information processing systems | 2012

A Linear Time Active Learning Algorithm for Link Classification

Nicolò Cesa-Bianchi; Claudio Gentile; Fabio Vitale; Giovanni Zappella


Journal of Machine Learning Research | 2013

Random spanning trees and the prediction ofweighted graphs

Nicolò Cesa-Bianchi; Claudio Gentile; Fabio Vitale; Giovanni Zappella


neural information processing systems | 2007

On higher-order perceptron algorithms

Claudio Gentile; Fabio Vitale; Cristian Brotto

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Mark Herbster

University College London

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