基于注意元学习器的文本隐写分析

Juan Wen, Ziwei Zhang, Y. Yang, Yiming Xue
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引用次数: 4

摘要

文本隐写分析是一种通过统计特征来区分隐写文本和正常文本的技术。目前最先进的文本隐写分析模型有两个局限性。首先,他们需要足够数量的标记数据进行训练。二是缺乏对不同检测任务的泛化能力。在本文中,我们提出了一个用于文本隐写分析的元学习框架,以确保模型在任务之间的快速适应。采用基于BERT的通用特征提取器提取任务间的通用特征,采用基于注意Bi-LSTM的元学习器学习任务表征。在支持集上训练的分类器使用少量样本计算查询集上的预测损失来更新元学习器。大量的实验表明,我们的模型可以通过极少量的样本快速适应不同的隐写分析任务,与最先进的隐写分析模型和其他元学习方法相比,显著提高了检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Few-shot Text Steganalysis Based on Attentional Meta-learner
Text steganalysis is a technique to distinguish between steganographic text and normal text via statistical features. Current state-of-the-art text steganalysis models have two limitations. First, they need sufficient amounts of labeled data for training. Second, they lack the generalization ability on different detection tasks. In this paper, we propose a meta-learning framework for text steganalysis in the few-shot scenario to ensure model fast-adaptation between tasks. A general feature extractor based on BERT is applied to extract universal features among tasks, and a meta-learner based on attentional Bi-LSTM is employed to learn task-specific representations. A classifier trained on the support set calculates the prediction loss on the query set with a few samples to update the meta-learner. Extensive experiments show that our model can adapt fast among different steganalysis tasks through extremely few-shot samples, significantly improving detection performance compared with the state-of-the-art steganalysis models and other meta-learning methods.
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