Title :
Bidirectional Active Learning: A Two-Way Exploration Into Unlabeled and Labeled Data Set
Author :
Xiao-Yu Zhang ; Shupeng Wang ; Xiaochun Yun
Author_Institution :
Inst. of Inf. Eng., Beijing, China
Abstract :
In practical machine learning applications, human instruction is indispensable for model construction. To utilize the precious labeling effort effectively, active learning queries the user with selective sampling in an interactive way. Traditional active learning techniques merely focus on the unlabeled data set under a unidirectional exploration framework and suffer from model deterioration in the presence of noise. To address this problem, this paper proposes a novel bidirectional active learning algorithm that explores into both unlabeled and labeled data sets simultaneously in a two-way process. For the acquisition of new knowledge, forward learning queries the most informative instances from unlabeled data set. For the introspection of learned knowledge, backward learning detects the most suspiciously unreliable instances within the labeled data set. Under the two-way exploration framework, the generalization ability of the learning model can be greatly improved, which is demonstrated by the encouraging experimental results.
Keywords :
data handling; generalisation (artificial intelligence); knowledge acquisition; learning (artificial intelligence); active learning queries; backward learning; bidirectional active learning; forward learning; generalization ability; human instruction; knowledge acquisition; labeled data set; machine learning; model construction; model deterioration; selective sampling; two-way exploration; unidirectional exploration framework; unlabeled data set; Data models; Entropy; Labeling; Noise; Reliability; Training; Training data; Active learning; bidirectional exploration; generalization performance; noisy data; selective sampling; selective sampling.;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2015.2401595