论文标题
多任务深度学习模型和应用的设计观点
Design Perspectives of Multitask Deep Learning Models and Applications
论文作者
论文摘要
近年来,在各种应用程序中,多任务学习取得了巨大的成功。尽管这些年来,单个模型培训已承诺取得出色的成绩,但它忽略了有价值的信息,这些信息可能有助于我们更好地估计一个指标。在与学习相关的任务下,多任务学习能够更好地概括模型。我们试图通过在相关任务和归纳转移学习之间共享功能来增强多任务模型的功能映射。此外,我们的兴趣是学习各种任务之间的任务关系,以从多任务学习中获得更好的收益。在本章中,我们的目标是可视化现有的多任务模型,比较其性能,用于评估多任务模型性能的方法,讨论这些模型在各个领域的设计和实施过程中所面临的问题,以及它们实现的优势和里程碑。
In recent years, multi-task learning has turned out to be of great success in various applications. Though single model training has promised great results throughout these years, it ignores valuable information that might help us estimate a metric better. Under learning-related tasks, multi-task learning has been able to generalize the models even better. We try to enhance the feature mapping of the multi-tasking models by sharing features among related tasks and inductive transfer learning. Also, our interest is in learning the task relationships among various tasks for acquiring better benefits from multi-task learning. In this chapter, our objective is to visualize the existing multi-tasking models, compare their performances, the methods used to evaluate the performance of the multi-tasking models, discuss the problems faced during the design and implementation of these models in various domains, and the advantages and milestones achieved by them