A novel class of applications of predictive clustering trees is addressed, namely ranking. Predictive clustering trees, as implemented in Clus, allow for predicting multiple target variables. This approach makes sense especially if the target variables are not independent of each other. This is typically the case in ranking, where the (relative) performance of several approaches on the same task has to be predicted from a given description of the task. We propose to use predictive clustering trees for ranking. As compared to existing ranking approaches which are instance-based, our approach also allows for an explanation of the predicted rankings. We illustrate our approach on the task of ranking machine learning algorithms, where the (rela...
Regression inference in network data is a challenging task in machine learning and data mining. Netw...
Instance ranking is a subfield of supervised machine learning and is concerned with inferring predic...
In this paper, as a novel approach, we learn Markov chain transition probabilities for ranking of mu...
The predictive clustering approach to rule learning presented in the thesis is based on ideas from t...
Rankings and partial rankings are ubiquitous in data analysis, yet there is relatively little work i...
The research describes the use of both descriptive and predictive algorithms for better accurate pre...
In this paper, we address the task of learning models for predicting structured outputs. We consider...
Rankings and partial rankings are ubiquitous in data analysis, yet there is relatively little work o...
We present a novel framework that applies a meta-learning approach to clustering algorithms. Given a...
Predictive clustering is a new supervised learning framework derived from traditional clustering. Th...
We address the task of learning ensembles of predictive models for structured output prediction (SOP...
In this work we are interested in prediction accuracy of nearest neighbour method for predicting str...
Abstract. A common way of doing algorithm selection is to train a machine learning model and predict...
Preference rankings usually depend on the characteristics of both the individuals judging a set of o...
Abstract. Regression inference in network data is a challenging task in machine learning and data mi...
Regression inference in network data is a challenging task in machine learning and data mining. Netw...
Instance ranking is a subfield of supervised machine learning and is concerned with inferring predic...
In this paper, as a novel approach, we learn Markov chain transition probabilities for ranking of mu...
The predictive clustering approach to rule learning presented in the thesis is based on ideas from t...
Rankings and partial rankings are ubiquitous in data analysis, yet there is relatively little work i...
The research describes the use of both descriptive and predictive algorithms for better accurate pre...
In this paper, we address the task of learning models for predicting structured outputs. We consider...
Rankings and partial rankings are ubiquitous in data analysis, yet there is relatively little work o...
We present a novel framework that applies a meta-learning approach to clustering algorithms. Given a...
Predictive clustering is a new supervised learning framework derived from traditional clustering. Th...
We address the task of learning ensembles of predictive models for structured output prediction (SOP...
In this work we are interested in prediction accuracy of nearest neighbour method for predicting str...
Abstract. A common way of doing algorithm selection is to train a machine learning model and predict...
Preference rankings usually depend on the characteristics of both the individuals judging a set of o...
Abstract. Regression inference in network data is a challenging task in machine learning and data mi...
Regression inference in network data is a challenging task in machine learning and data mining. Netw...
Instance ranking is a subfield of supervised machine learning and is concerned with inferring predic...
In this paper, as a novel approach, we learn Markov chain transition probabilities for ranking of mu...