From Multi-label Learning to Cross-Domain Transfer: A Model-Agnostic Approach
Jesse Read

TL;DR
This paper introduces a model-agnostic transfer learning approach that leverages source-model capacity to create task dependence without relying on label correlations or domain similarity, challenging traditional assumptions.
Contribution
It proposes a novel transfer learning method based on source-model capacity, independent of label dependence or domain similarity, applicable to any base model class.
Findings
Effective transfer learning without domain similarity
Model-agnostic and black-box compatible approach
Challenging traditional assumptions in transfer learning
Abstract
In multi-label learning, a particular case of multi-task learning where a single data point is associated with multiple target labels, it was widely assumed in the literature that, to obtain best accuracy, the dependence among the labels should be explicitly modeled. This premise led to a proliferation of methods offering techniques to learn and predict labels together, for example where the prediction for one label influences predictions for other labels. Even though it is now acknowledged that in many contexts a model of dependence is not required for optimal performance, such models continue to outperform independent models in some of those very contexts, suggesting alternative explanations for their performance beyond label dependence, which the literature is only recently beginning to unravel. Leveraging and extending recent discoveries, we turn the original premise of multi-label…
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Taxonomy
TopicsText and Document Classification Technologies · Domain Adaptation and Few-Shot Learning · Machine Learning and Data Classification
MethodsTest · Balanced Selection
