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Towards Automatic Construction of Multi-Network Models for Heterogeneous Multi-Task Learning

机译:用于自动构建异构多任务学习的多网络模型

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摘要

Multi-task learning, as it is understood nowadays, consists of using one single model to carry out several similar tasks. From classifying hand-written characters of different alphabets to figuring out how to play several Atari games using reinforcement learning, multi-task models have been able to widen their performance range across different tasks, although these tasks are usually of a similar nature. In this work, we attempt to expand this range even further, by including heterogeneous tasks in a single learning procedure. To do so, we firstly formally define a multi-network model, identifying the necessary components and characteristics to allow different adaptations of said model depending on the tasks it is required to fulfill. Secondly, employing the formal definition as a starting point, we develop an illustrative model example consisting of three different tasks (classification, regression, and data sampling). The performance of this illustrative model is then analyzed, showing its capabilities. Motivated by the results of the analysis, we enumerate a set of open challenges and future research lines over which the full potential of the proposed model definition can be exploited.
机译:如今所理解的多任务学习包括使用一个单一模型来执行几个类似的任务。通过对不同字母的手写字符进行分类,以弄清楚如何使用强化学习播放几个Atari游戏,多任务模型能够在不同的任务中扩大它们的性能范围,尽管这些任务通常是类似的性质。在这项工作中,我们尝试进一步扩展这个范围,包括在单一学习过程中的异构任务。为此,我们首先正式定义了多网络模型,识别必要的组件和特征,以便根据需要满足的任务来允许对所述模型的不同调整。其次,使用正式定义作为起点,我们开发了一个由三个不同任务(分类,回归和数据采样)组成的说明性模型示例。然后分析该说明性模型的性能,显示其能力。通过分析结果的推动,我们枚举了一套开放的挑战和未来的研究界,可以利用所提出的模型定义的全部潜力。

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