Regression uses supervised machine learning to find a model that combines several independent variables to predict a dependent variable based on ground truth (labeled) data, i.e., tuples of independent and dependent variables (labels). Similarly, aggregation also combines several independent variables to a dependent variable. The dependent variable should preserve properties of the independent variables, e.g., the ranking or relative distance of the independent variable tuples, and/or represent a latent ground truth that is a function of these independent variables. However, ground truth data is not available for finding the aggregation model. Consequently, aggregation models are data agnostic or can only be derived with unsupervised machin...
Distributed learning paradigms, such as federated and decentralized learning, allow for the coordina...
AbstractEnsembles of artificial neural networks show improved generalization capabilities that outpe...
Conference: The paper is selected from International Conference "Classification, Forecasting, Data M...
Regression uses supervised machine learning to find a model that combines several independent variab...
In this paper, we introduce a new learning strategy based on a seminal idea of Mojirsheibani (1999, ...
In this paper we present a general treatment of the preference aggregation problem, in which multipl...
Abstract—Supervised learning is a classic data mining problem where one wishes to be able to predict...
Ranking alternatives is fundamental to effective decision making. However, creating an overall ranki...
Nowadays, many machine learning procedures are available on the shelve and may be used easily to cal...
The rawly collected training data often comes with separate noisy labels collected from multiple imp...
International audienceMany decision problems cannot be solved exactly and use several estimation alg...
International audienceIn this study, we investigate whether the aggregation of saliency maps allows ...
The thesis discuses reliability estimation of individual predictions in the supervised learning fram...
Due to the privacy protection or the difficulty of data collection, we cannot observe individual out...
Abstract The need to meaningfully combine sets of rankings often comes up when one deals with ranked...
Distributed learning paradigms, such as federated and decentralized learning, allow for the coordina...
AbstractEnsembles of artificial neural networks show improved generalization capabilities that outpe...
Conference: The paper is selected from International Conference "Classification, Forecasting, Data M...
Regression uses supervised machine learning to find a model that combines several independent variab...
In this paper, we introduce a new learning strategy based on a seminal idea of Mojirsheibani (1999, ...
In this paper we present a general treatment of the preference aggregation problem, in which multipl...
Abstract—Supervised learning is a classic data mining problem where one wishes to be able to predict...
Ranking alternatives is fundamental to effective decision making. However, creating an overall ranki...
Nowadays, many machine learning procedures are available on the shelve and may be used easily to cal...
The rawly collected training data often comes with separate noisy labels collected from multiple imp...
International audienceMany decision problems cannot be solved exactly and use several estimation alg...
International audienceIn this study, we investigate whether the aggregation of saliency maps allows ...
The thesis discuses reliability estimation of individual predictions in the supervised learning fram...
Due to the privacy protection or the difficulty of data collection, we cannot observe individual out...
Abstract The need to meaningfully combine sets of rankings often comes up when one deals with ranked...
Distributed learning paradigms, such as federated and decentralized learning, allow for the coordina...
AbstractEnsembles of artificial neural networks show improved generalization capabilities that outpe...
Conference: The paper is selected from International Conference "Classification, Forecasting, Data M...