Knowledge as Invariance -- History and Perspectives of Knowledge-augmented Machine Learning
Alexander Sagel, Amit Sahu, Stefan Matthes, Holger Pfeifer, and Tianming Qiu, Harald Rue{\ss}, Hao Shen, Julian W\"ormann

TL;DR
This paper discusses the shift in machine learning research towards models that can acquire knowledge independently and maintain invariance, aiming to enhance adaptability and versatility beyond traditional supervised deep learning.
Contribution
It provides an overview of the emerging field focused on knowledge acquisition and invariance in machine learning, highlighting recent approaches and research directions.
Findings
Models with self-acquired knowledge improve adaptability.
Invariance enhances model robustness across domains.
The field is shifting from task-specific to versatile models.
Abstract
Research in machine learning is at a turning point. While supervised deep learning has conquered the field at a breathtaking pace and demonstrated the ability to solve inference problems with unprecedented accuracy, it still does not quite live up to its name if we think of learning as the process of acquiring knowledge about a subject or problem. Major weaknesses of present-day deep learning models are, for instance, their lack of adaptability to changes of environment or their incapability to perform other kinds of tasks than the one they were trained for. While it is still unclear how to overcome these limitations, one can observe a paradigm shift within the machine learning community, with research interests shifting away from increasing the performance of highly parameterized models to exceedingly specific tasks, and towards employing machine learning algorithms in highly diverse…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Topic Modeling · Machine Learning and Data Classification
