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Semi-Supervised Multi-Modal Clustering and Classification with Incomplete Modalities

机译:半监督多模群群集和不完整模式的分类

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In this paper, we propose a novel Semi-supervised Learning with Incomplete Modality (SLIM) method considering the modal consistency and complementarity simultaneously, and Kernel SLIM (SLIM-K) based on matrix completion for further solving the modal incompleteness. As is well known, most realistic data have multi-modal representations, multi-modal learning refers to the process of learning a precise model for complete modalities. However, due to the failures of data collection, self-deficiencies, or other various reasons, multi-modal examples are usually with incomplete modalities, which generate utility obstacle using previous methods. In this paper, SLIM integrates the intrinsic consistency and extrinsic complementary information for prediction and cluster simultaneously. In detail, SLIM forms different modal classifiers and clustering learner consistently in a unified framework, while using the extrinsic complementary information from unlabeled data against the insufficiencies brought by the incomplete modal issue. Moreover, in order to deal with missing modality in essence, we propose the SLIM-K, which takes the complemented kernel matrix into the classifiers and the cluster learner respectively. Thus, SLIM-K can solve the defects of missing modality in result. Finally, we give the discussion of generalization of incomplete modalities. Experiments on 13 benchmark multi-modal datasets and two real-world incomplete multi-modal datasets validate the effectiveness of our methods.
机译:在本文中,我们提出了一种新的半监督学习,与不完全的模态(SLIM)方法同时考虑模态一致性和互补性,基于矩阵完成,以进一步解决模态不完整性。众所周知,大多数现实数据具有多模态表示,多模态学习是指学习完整模式的精确模型的过程。但是,由于数据收集,自我缺陷或其他各种原因的故障,多模态示例通常具有不完整的方式,使用先前的方法生成实用障碍物。在本文中,SLIM同时整合了内在一致性和外在互补信息的预测和集群。详细地,苗条在统一的框架中一致地形成不同的模态分类器和聚类学习者,同时使用来自未完成模态问题所带来的不标记数据的外在互补信息。此外,为了实质上处理缺少的模态,我们提出了SLIM-k,它分别将互补的内核矩阵带入分类器和群集学习者。因此,SLIM-K可以解决结果中缺少模态的缺陷。最后,我们讨论了不完整方式的概括。在13个基准多模态数据集和两个实际不完整的多模数数据集上的实验验证了我们方法的有效性。

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