Traditional machine learning mainly supervised learning, follows the assumptions of closed-world learning, i.e., for each testing class, a training class is available. However, such machine learning models fail to identify the classes which were not available during training time. These classes can be referred to as unseen classes. Whereas open-world machine learning (OWML) deals with unseen classes. In this paper, first, we present an overview of OWML with importance to the real-world context. Next, different dimensions of open-world machine learning are explored and discussed. The area of OWML gained the attention of the research community in the last decade only. We have searched through different online digital libraries and scrutinized the work done in the last decade. This paper presents a systematic review of various techniques for OWML. It also presents the research gaps, challenges, and future directions in open-world machine learning. This paper will help researchers understand the comprehensive developments of OWML and the likelihood of extending the research in suitable areas. It will also help to select applicable methodologies and datasets to explore this further.
翻译:传统机器学习主要是监督的学习,遵循封闭世界学习的假设,即每个测试班都有一个培训课,然而,这种机器学习模式未能确定培训期间没有的班级,这些班级可称为隐形班级。开放世界机器学习(OWML)涉及无形班级。在本文中,首先,我们介绍对现实世界具有重要意义的OWML概况。接着,探索和讨论开放世界机器学习的不同层面。OWML领域仅在过去10年才引起研究界的注意。我们通过不同的在线数字图书馆搜索了过去十年中完成的工作,并仔细审查了OWML的工作。本文对OWML的各种技术进行了系统审查。文件还介绍了开放世界机器学习的研究差距、挑战和今后的方向。本文将有助于研究人员了解OWML的全面发展以及将研究扩大到适当地区的可能性。它还将帮助选择可适用的方法和数据集,以进一步探讨这个问题。