Classification is a fundamental topic in the literature of data mining and all recent hot topics like active learning and transfer learning all rely on the concept of classification. Probabilistic information becomes more prevalent nowadays and can be found easily in many applications like crowdsourcing and pattern recognition. In this paper, we focus on a dataset which contains probabilistic information for classification. Based on this probabilistic dataset, we propose a classifier and give a theoretical bound linking the error rate of our classifier and the number of instances needed for training. Interestingly, we find that our theoretical bound is asymptotically at least no worse than the previously best-known bounds developed based on...
Multi-label classification is a critical problem in many areas of data analysis such as image labeli...
In this paper, we theoretically study the problem of binary classification in the presence of random...
We propose and analyze a distribution learning algorithm for variable memory length Markov processes...
Classification is a fundamental topic in the literature of data mining and all recent hot topics lik...
Probabilistic networks (Bayesian networks) are suited as statistical pattern classifiers when the fe...
In classification problems, it is preferred to attack the discrimination problem directly rather tha...
Multi-label classification is supervised learning, where an instance may be assigned with multiple c...
This paper presents an approach to learning from noisy data that views the problem as one of reasoni...
In this paper we propose a probabilistic classification algorithm that learns a set of kernel functi...
Probabilistic label learning is a challenging task that arises from recent real-world problems withi...
National audienceIn this paper we propose a probabilistic classification algorithm that learns a set...
In this paper, we theoretically study the problem of binary classification in the presence of random...
International audienceA new supervised learning algorithm using naïve Bayesian classifier is present...
Social scientists often classify text documents to use the resulting labels as an outcome or a predi...
Multi-label classification is a critical problem in many areas of data analysis such as image labeli...
Multi-label classification is a critical problem in many areas of data analysis such as image labeli...
In this paper, we theoretically study the problem of binary classification in the presence of random...
We propose and analyze a distribution learning algorithm for variable memory length Markov processes...
Classification is a fundamental topic in the literature of data mining and all recent hot topics lik...
Probabilistic networks (Bayesian networks) are suited as statistical pattern classifiers when the fe...
In classification problems, it is preferred to attack the discrimination problem directly rather tha...
Multi-label classification is supervised learning, where an instance may be assigned with multiple c...
This paper presents an approach to learning from noisy data that views the problem as one of reasoni...
In this paper we propose a probabilistic classification algorithm that learns a set of kernel functi...
Probabilistic label learning is a challenging task that arises from recent real-world problems withi...
National audienceIn this paper we propose a probabilistic classification algorithm that learns a set...
In this paper, we theoretically study the problem of binary classification in the presence of random...
International audienceA new supervised learning algorithm using naïve Bayesian classifier is present...
Social scientists often classify text documents to use the resulting labels as an outcome or a predi...
Multi-label classification is a critical problem in many areas of data analysis such as image labeli...
Multi-label classification is a critical problem in many areas of data analysis such as image labeli...
In this paper, we theoretically study the problem of binary classification in the presence of random...
We propose and analyze a distribution learning algorithm for variable memory length Markov processes...