Due to the privacy protection or the difficulty of data collection, we cannot observe individual outputs for each instance, but we can observe aggregated outputs that are summed over multiple instances in a set in some real-world applications. To reduce the labeling cost for training regression models for such aggregated data, we propose an active learning method that sequentially selects sets to be labeled to improve the predictive performance with fewer labeled sets. For the selection measurement, the proposed method uses the mutual information, which quantifies the reduction of the uncertainty of the model parameters by observing the aggregated output. With Bayesian linear basis functions for modeling outputs given an input, which includ...
In recent decades, the availability of a large amount of data has propelled the field of machine lea...
Abstract. In this paper, we introduce a new general strategy for active learning. The key idea of ou...
Hasenjäger M. Active data selection in supervised and unsupervised learning. Bielefeld: Bielefeld Un...
Training machine learning models often requires large labelled datasets, which can be both expensive...
Abstract—Supervised learning is a classic data mining problem where one wishes to be able to predict...
Copyright © 2010 IEEE. Personal use of this material is permitted. Permission from IEEE must be obta...
In this work we proposed a novel transductive method to solve the problem of learning from partially...
In this work we discuss the problem of active learning. We present an approach that is based on A-op...
We study the problem of combining active learning suggestions to identify informative training examp...
Active learning is a promising machine learning paradigm for querying oracles and obtaining actual l...
Traditionally, Bayesian inductive learning involves finding the most probable model from the entire ...
Abstract We discuss a new paradigm for supervised learning that aims at improving the efficiency of ...
In many real world supervised learning problems, it is easy or cheap to acquire unlabelled data, but...
For many types of learners one can compute the statistically 'optimal' way to select data. We revi...
Regression uses supervised machine learning to find a model that combines several independent variab...
In recent decades, the availability of a large amount of data has propelled the field of machine lea...
Abstract. In this paper, we introduce a new general strategy for active learning. The key idea of ou...
Hasenjäger M. Active data selection in supervised and unsupervised learning. Bielefeld: Bielefeld Un...
Training machine learning models often requires large labelled datasets, which can be both expensive...
Abstract—Supervised learning is a classic data mining problem where one wishes to be able to predict...
Copyright © 2010 IEEE. Personal use of this material is permitted. Permission from IEEE must be obta...
In this work we proposed a novel transductive method to solve the problem of learning from partially...
In this work we discuss the problem of active learning. We present an approach that is based on A-op...
We study the problem of combining active learning suggestions to identify informative training examp...
Active learning is a promising machine learning paradigm for querying oracles and obtaining actual l...
Traditionally, Bayesian inductive learning involves finding the most probable model from the entire ...
Abstract We discuss a new paradigm for supervised learning that aims at improving the efficiency of ...
In many real world supervised learning problems, it is easy or cheap to acquire unlabelled data, but...
For many types of learners one can compute the statistically 'optimal' way to select data. We revi...
Regression uses supervised machine learning to find a model that combines several independent variab...
In recent decades, the availability of a large amount of data has propelled the field of machine lea...
Abstract. In this paper, we introduce a new general strategy for active learning. The key idea of ou...
Hasenjäger M. Active data selection in supervised and unsupervised learning. Bielefeld: Bielefeld Un...