Learning Heterogeneous Similarity Measures for Hybrid-Recommendations in Meta-Mining
Phong Nguyen, Jun Wang, Melanie Hilario, Alexandros Kalousis

TL;DR
This paper introduces a novel metric-learning recommender system for meta-mining that effectively models similarities among datasets and workflows, addressing cold-start issues and enhancing recommendation accuracy.
Contribution
It proposes a new approach that learns homogeneous and heterogeneous similarity metrics for datasets and workflows, extending meta-mining to a recommendation system framework.
Findings
Learned metrics improve recommendation quality.
Method effectively handles cold-start problems.
Demonstrated on biological microarray datasets.
Abstract
The notion of meta-mining has appeared recently and extends the traditional meta-learning in two ways. First it does not learn meta-models that provide support only for the learning algorithm selection task but ones that support the whole data-mining process. In addition it abandons the so called black-box approach to algorithm description followed in meta-learning. Now in addition to the datasets, algorithms also have descriptors, workflows as well. For the latter two these descriptions are semantic, describing properties of the algorithms. With the availability of descriptors both for datasets and data mining workflows the traditional modelling techniques followed in meta-learning, typically based on classification and regression algorithms, are no longer appropriate. Instead we are faced with a problem the nature of which is much more similar to the problems that appear in…
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Taxonomy
TopicsMachine Learning and Data Classification · Data Mining Algorithms and Applications · Gene expression and cancer classification
