DASA: Domain adaptation in stacked autoencoders using systematic dropout

Abhijit Guha Roy, D. Sheet
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引用次数: 18

Abstract

Domain adaptation deals with adapting behaviour of machine learning based systems trained using samples in source domain to their deployment in target domain where the statistics of samples in both domains are dissimilar The task of directly training or adapting a learner in the target domain is challenged by lack of abundant labeled samples. In this paper we propose a technique for domain adaptation in stacked autoencoder (SAE) based deep neural networks (DNN) performed in two stages: (i) unsupervised weight adaptation using systematic dropouts in mini-batch training, (ii) supervised fine-tuning with limited number of labeled samples in target domain. We experimentally evaluate performance in the problem of retinal vessel segmentation where the SAE-DNN is trained using large number of labeled samples in the source domain (DRIVE dataset) and adapted using less number of labeled samples in target domain (STARE dataset). The performance of SAE-DNN measured using logloss in source domain is 0.19, without and with adaptation are 0.40 and 0.18, and 0.39 when trained exclusively with limited samples in target domain. The area under ROC curve is observed respectively as 0.90, 0.86, 0.92 and 0.87. The high efficiency of vessel segmentation with DASA strongly substantiates our claim.
基于系统丢包的堆叠自编码器的域自适应
领域自适应是指使用源域样本训练的基于机器学习的系统的行为适应其在目标域的部署,当两个域样本的统计量不同时,在目标域直接训练或适应学习者的任务受到缺乏大量标记样本的挑战。在本文中,我们提出了一种基于堆叠自编码器(SAE)的深度神经网络(DNN)的领域自适应技术,该技术分两个阶段进行:(i)在小批量训练中使用系统dropouts进行无监督权重自适应,(ii)在目标域中使用有限数量的标记样本进行监督微调。我们通过实验评估了SAE-DNN在视网膜血管分割问题中的性能,其中SAE-DNN在源域(DRIVE数据集)使用大量标记样本进行训练,在目标域(STARE数据集)使用较少数量的标记样本进行适应。在源域使用logloss测量的SAE-DNN的性能为0.19,不使用和使用自适应时分别为0.40和0.18,在目标域使用有限样本进行单独训练时为0.39。ROC曲线下面积分别为0.90、0.86、0.92、0.87。DASA的高效血管分割有力地证实了我们的主张。
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