A Gating Model for Bias Calibration in Generalized Zero-shot Learning.

IF 2.6 4区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH Harvard Educational Review Pub Date : 2022-03-01 DOI:10.1109/TIP.2022.3153138
Gukyeong Kwon, Ghassan Al Regib
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Abstract

Generalized zero-shot learning (GZSL) aims at training a model that can generalize to unseen class data by only using auxiliary information. One of the main challenges in GZSL is a biased model prediction toward seen classes caused by overfitting on only available seen class data during training. To overcome this issue, we propose a two-stream autoencoder-based gating model for GZSL. Our gating model predicts whether the query data is from seen classes or unseen classes, and utilizes separate seen and unseen experts to predict the class independently from each other. This framework avoids comparing the biased prediction scores for seen classes with the prediction scores for unseen classes. In particular, we measure the distance between visual and attribute representations in the latent space and the cross-reconstruction space of the autoencoder. These distances are utilized as complementary features to characterize unseen classes at different levels of data abstraction. Also, the two-stream autoencoder works as a unified framework for the gating model and the unseen expert, which makes the proposed method computationally efficient. We validate our proposed method in four benchmark image recognition datasets. In comparison with other state-of-the-art methods, we achieve the best harmonic mean accuracy in SUN and AWA2, and the second best in CUB and AWA1. Furthermore, our base model requires at least 20% less number of model parameters than state-of-the-art methods relying on generative models.

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广义零点学习中偏差校准的门控模型
广义零点学习(Generalized zero-shot learning,GZSL)的目的是训练一个模型,该模型只需使用辅助信息即可泛化到未见类别数据。GZSL 面临的主要挑战之一是,由于在训练过程中过度拟合仅有的可见类数据,导致模型预测偏向于可见类。为了克服这一问题,我们为 GZSL 提出了一种基于双流自动编码器的门控模型。我们的门控模型会预测查询数据是来自已见类别还是未见类别,并利用已见和未见专家分别独立预测类别。这一框架避免了将有偏差的已见类别预测得分与未见类别预测得分进行比较。我们特别测量了自动编码器潜在空间和交叉重构空间中视觉和属性表征之间的距离。这些距离可作为互补特征,用于描述不同数据抽象层次的未见类别。此外,双流自动编码器是门控模型和未见专家的统一框架,这使得所提出的方法具有很高的计算效率。我们在四个基准图像识别数据集中验证了我们提出的方法。与其他最先进的方法相比,我们在 SUN 和 AWA2 中取得了最佳谐波平均准确率,在 CUB 和 AWA1 中取得了次佳准确率。此外,与依赖生成模型的先进方法相比,我们的基础模型所需的模型参数数量至少减少了 20%。
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来源期刊
Harvard Educational Review
Harvard Educational Review EDUCATION & EDUCATIONAL RESEARCH-
自引率
0.00%
发文量
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期刊介绍: The Harvard Educational Review (HER) accepts contributions from researchers, scholars, policy makers, practitioners, teachers, students, and informed observers in education and related fields. In addition to original reports of research and theory, HER welcomes articles that reflect on teaching and practice in educational settings in the United States and abroad.
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