International audienceMany machine learning algorithms are based on the assumption that training examples are drawn independently. However, this assumption does not hold anymore when learning from a networked sample because two or more training examples may share some common objects, and hence share the features of these shared objects. We show that the classic approach of ignoring this problem potentially can have a harmful effect on the accuracy of statistics, and then consider alternatives. One of these is to only use independent examples, discarding other information. However, this is clearly suboptimal. We analyze sample error bounds in this networked setting, providing significantly improved results. An important component of our appr...
Experiments in captivity have provided evidence for social learning, but it remains challenging to d...
Convergence bounds are one of the main tools to obtain information on the performance of a distribu...
In many real world applications, the number of examples to learn from is plentiful, but we can only ...
In this work, we try to answer the question: given a network of observations which are not independe...
Networked data, in which every training example involves two objects and may share some common objec...
Over the last decades, the amount of available data has grown rapidly. Data mining is the field stud...
The learning of a pattern classification rule rests on acquiring information to constitute a decisio...
Network data are ubiquitous in modern machine learning, with tasks of interest including node classi...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
The problem of learning by examples in ultrametric committee machines (UCMs) is studied within the f...
Co-training can learn from datasets having a small number of labelled examples and a large number of...
jon~dcs.rhbnc.ac.uk In this paper the problem of learning appropriate domain-specific bias is addres...
We analyse on-line learning of a linearly separable rule with a simple perceptron. Example inputs ar...
In this paper we analyse the effect of introducing a structure in the input distribution on the gene...
Machine learning models are typically configured by minimizing the training error over a given train...
Experiments in captivity have provided evidence for social learning, but it remains challenging to d...
Convergence bounds are one of the main tools to obtain information on the performance of a distribu...
In many real world applications, the number of examples to learn from is plentiful, but we can only ...
In this work, we try to answer the question: given a network of observations which are not independe...
Networked data, in which every training example involves two objects and may share some common objec...
Over the last decades, the amount of available data has grown rapidly. Data mining is the field stud...
The learning of a pattern classification rule rests on acquiring information to constitute a decisio...
Network data are ubiquitous in modern machine learning, with tasks of interest including node classi...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
The problem of learning by examples in ultrametric committee machines (UCMs) is studied within the f...
Co-training can learn from datasets having a small number of labelled examples and a large number of...
jon~dcs.rhbnc.ac.uk In this paper the problem of learning appropriate domain-specific bias is addres...
We analyse on-line learning of a linearly separable rule with a simple perceptron. Example inputs ar...
In this paper we analyse the effect of introducing a structure in the input distribution on the gene...
Machine learning models are typically configured by minimizing the training error over a given train...
Experiments in captivity have provided evidence for social learning, but it remains challenging to d...
Convergence bounds are one of the main tools to obtain information on the performance of a distribu...
In many real world applications, the number of examples to learn from is plentiful, but we can only ...