1 research outputs found
Streaming Label Learning for Modeling Labels on the Fly
It is challenging to handle a large volume of labels in multi-label learning.
However, existing approaches explicitly or implicitly assume that all the
labels in the learning process are given, which could be easily violated in
changing environments. In this paper, we define and study streaming label
learning (SLL), i.e., labels are arrived on the fly, to model newly arrived
labels with the help of the knowledge learned from past labels. The core of SLL
is to explore and exploit the relationships between new labels and past labels
and then inherit the relationship into hypotheses of labels to boost the
performance of new classifiers. In specific, we use the label
self-representation to model the label relationship, and SLL will be divided
into two steps: a regression problem and a empirical risk minimization (ERM)
problem. Both problems are simple and can be efficiently solved. We further
show that SLL can generate a tighter generalization error bound for new labels
than the general ERM framework with trace norm or Frobenius norm
regularization. Finally, we implement extensive experiments on various
benchmark datasets to validate the new setting. And results show that SLL can
effectively handle the constantly emerging new labels and provides excellent
classification performance