Informed Machine Learning with Knowledge Landmarks
Chuyi Dai, Witold Pedrycz, Suping Xu, Ding Liu, and Xianmin Wang

TL;DR
This paper introduces Knowledge-Data Machine Learning (KD-ML), integrating numeric data with granular knowledge landmarks to enhance model performance, especially in physics-based tasks.
Contribution
It proposes a novel KD-ML framework with an augmented loss function that combines data fitting and knowledge regularization, improving over purely data-driven models.
Findings
KD-ML outperforms traditional ML on physics benchmarks.
The augmented loss function effectively balances data and knowledge contributions.
Granular knowledge landmarks improve model generalization.
Abstract
Informed Machine Learning has emerged as a viable generalization of Machine Learning (ML) by building a unified conceptual and algorithmic setting for constructing models on a unified basis of knowledge and data. Physics-informed ML involving physics equations is one of the developments within Informed Machine Learning. This study proposes a novel direction of Knowledge-Data ML, referred to as KD-ML, where numeric data are integrated with knowledge tidbits expressed in the form of granular knowledge landmarks. We advocate that data and knowledge are complementary in several fundamental ways: data are precise (numeric) and local, usually confined to some region of the input space, while knowledge is global and formulated at a higher level of abstraction. The knowledge can be represented as information granules and organized as a collection of input-output information granules called…
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