Deep neural models have hitherto achieved significant performances on numerous classification tasks, but meanwhile require sufficient manually annotated data. Since it is extremely time-consuming and expensive to annotate adequate data for each classification task, learning an empirically effective model with generalization on small dataset has received increased attention. Existing efforts mainly focus on transferring task-relevant knowledge from other similar data to tackle the issue. These approaches have yielded remarkable improvements, yet neglecting the fact that the task-irrelevant features could bring out massive negative transfer effects. To date, no large-scale studies have been performed to investigate the impact of task-irrelevant features, let alone the utilization of this kind of features. In this paper, we firstly propose Task-Irrelevant Transfer Learning (TIRTL) to exploit task-irrelevant features, which mainly are extracted from task-irrelevant labels. Particularly, we suppress the expression of task-irrelevant information and facilitate the learning process of classification. We also provide a theoretical explanation of our method. In addition, TIRTL does not conflict with those that have previously exploited task-relevant knowledge and can be well combined to enable the simultaneous utilization of task-relevant and task-irrelevant features for the first time. In order to verify the effectiveness of our theory and method, we conduct extensive experiments on facial expression recognition and digit recognition tasks. Our source code will be also available in the future for reproducibility.
翻译:深心神经模型迄今在众多分类任务方面已经取得了显著的成绩,但同时也需要足够的人工附加说明的数据。由于为每项分类任务说明充分的数据十分耗时和昂贵,因此学习一个经验上有效的模型,对小型数据集进行概括,受到越来越多的关注;目前的努力主要侧重于从其他类似数据中转让任务相关知识,以解决这一问题;这些方法取得了显著的改进,但忽视了与任务相关的特征能够带来大规模负面转移效应的事实。迄今为止,没有进行大规模研究,以调查任务相关特征的影响,更不用说利用这类特征。在本文件中,我们首先提议利用任务相关任务相关转移学习(TIRTL),以利用任务相关特点,这些特点主要取自任务相关标签。特别是,我们压制与任务相关信息的表达,为学习分类过程提供便利。我们还从理论上解释了我们的方法。此外,TIRTL没有与先前利用过任务相关知识的那些特征发生冲突,而且能够很好地结合利用这类特征。我们首先提议与任务相关任务相关的转移学习(TIRTL),以利用任务相关特性来利用任务相关特性来利用任务相关特性,主要从与任务相关联的标签标签和与任务相关特性。我们现有的数字识别。