International audienceIn many real-life applications, the available source training information is either too small or not representative enough of the underlying target test problem. In the past few years, a new line of machine learning research has been developed to overcome such awkward situations, called Domain Adaptation (DA), giving rise to many adaptation algorithms and theoretical results in the form of generalization bounds. In this paper, a novel contribution is proposed in the form of a DA algorithm dealing with string-structured data, inspired from the DA support vector machine (SVM) technique introduced in [Bruzzone et al, PAMI 2010]. To ensure the convergence of SVM-based learning, the similarity functions involved in the proc...
Abstract. In this paper, we address the problem of domain adaptation for binary classification. This...
International audienceWe address domain adaptation (DA) for binary classification in the challenging...
International audienceWe address domain adaptation (DA) for binary classification in the challenging...
International audienceIn many real-life applications, the available source training information is e...
Abstract—In many real-life applications, the available source training information is either too sma...
International audienceIn many real-life applications, the available source training information is e...
International audienceA strong assumption to derive generalization guarantees in the standard PAC fr...
International audienceA strong assumption to derive generalization guarantees in the standard PAC fr...
Abstract—Similarity functions are essential to many learning algorithms. To allow their use in suppo...
International audienceSimilarity functions are essential to many learning algorithms. To allow their...
International audienceSimilarity functions are essential to many learning algorithms. To allow their...
International audienceSimilarity functions are essential to many learning algorithms. To allow their...
In this paper, we propose a new framework called domain adaptation machine (DAM) for the multiple so...
Abstract. Similarity and distance functions are essential to many learn-ing algorithms, thus trainin...
International audienceSimilarity and distance functions are essential to many learning algorithms, t...
Abstract. In this paper, we address the problem of domain adaptation for binary classification. This...
International audienceWe address domain adaptation (DA) for binary classification in the challenging...
International audienceWe address domain adaptation (DA) for binary classification in the challenging...
International audienceIn many real-life applications, the available source training information is e...
Abstract—In many real-life applications, the available source training information is either too sma...
International audienceIn many real-life applications, the available source training information is e...
International audienceA strong assumption to derive generalization guarantees in the standard PAC fr...
International audienceA strong assumption to derive generalization guarantees in the standard PAC fr...
Abstract—Similarity functions are essential to many learning algorithms. To allow their use in suppo...
International audienceSimilarity functions are essential to many learning algorithms. To allow their...
International audienceSimilarity functions are essential to many learning algorithms. To allow their...
International audienceSimilarity functions are essential to many learning algorithms. To allow their...
In this paper, we propose a new framework called domain adaptation machine (DAM) for the multiple so...
Abstract. Similarity and distance functions are essential to many learn-ing algorithms, thus trainin...
International audienceSimilarity and distance functions are essential to many learning algorithms, t...
Abstract. In this paper, we address the problem of domain adaptation for binary classification. This...
International audienceWe address domain adaptation (DA) for binary classification in the challenging...
International audienceWe address domain adaptation (DA) for binary classification in the challenging...