トップページ イベント・広報 R-CCS Cafe 第153回 第1部
第153回 第1部
講演題目
Learning with less labeled data using GANs
開催日 | 2018年11月26日(月) |
---|---|
開催時間 | 14:10 - 14:40 |
開催都市 | 兵庫県神戸市 |
場所 | R-CCS 6階講堂 |
使用言語 | 発表・スライド共に英語 |
登壇者 |
講演要旨
Deep neural network classifiers typically require large labeled datasets to obtain high predictive performance. Obtaining such datasets can be time and cost prohibitive especially for applications where careful expert labeling is required, for instance, in healthcare and medicine. In this talk, we describe two algorithms using GANs that can help reduce this labeling burden. First, we describe a semi-supervised learning algorithm that utilizes GANs to perform manifold regularization. Our method achieves state-of-the-art performance amongst GAN-based semi-supervised learning methods while being much easier to implement. Second, we describe the Adversarially Learned Anomaly Detection (ALAD) algorithm (based on bi-directional GANs) for unsupervised anomaly detection. ALAD uses reconstruction errors based on adversarially learned features to determine if a data sample is anomalous. ALAD achieves state-of-the-art performance on a range of image and tabular datasets while being several hundred-fold faster at test time than the only published GAN-based method.
(2018年10月29日)