| Literature DB >> 28979827 |
Yanbing Xue1, Milos Hauskrecht1.
Abstract
Annotation of classification data by humans can be a time-consuming and tedious process. Finding ways of reducing the annotation effort is critical for building the classification models in practice and for applying them to a variety of classification tasks. In this paper, we develop a new active learning framework that combines two strategies to reduce the annotation effort. First, it relies on label uncertainty information obtained from the human in terms of the Likert-scale feedback. Second, it uses active learning to annotate examples with the greatest expected change. We propose a Bayesian approach to calculate the expectation and an incremental SVM solver to reduce the time complexity of the solvers. We show the combination of our active learning strategy and the Likert-scale feedback can learn classification models more rapidly and with a smaller number of labeled instances than methods that rely on either Likert-scale labels or active learning alone.Entities:
Year: 2017 PMID: 28979827 PMCID: PMC5624557 DOI: 10.1137/1.9781611974973.4
Source DB: PubMed Journal: Proc SIAM Int Conf Data Min