학술논문

Towards an Ontological Framework for Integrating Domain Expert Knowledge with Random Forest Classification
Document Type
Conference
Source
2023 IEEE 17th International Conference on Semantic Computing (ICSC) ICSC Semantic Computing (ICSC), 2023 IEEE 17th International Conference on. :221-224 Feb, 2023
Subject
Computing and Processing
Radio frequency
Semantics
Machine learning
Forestry
Manufacturing
Steel
Predictive maintenance
Ontology
Semantic Technologies
Reasoning
Random Forest
Industry 4.0
Language
Abstract
This paper proposes an ontological framework that combines semantic-based methodologies and data-driven random forests (RF) to enable the integration of domain expert knowledge with machine-learning models. To achieve this, the RF classification process is firstly deconstructed and converted into semantic-based rules, which are combined with external rules constructed from the knowledge of domain experts. The combined rule set is applied to an ontological reasoner for inference, producing two classifications: (1) from simulating the selected RF voting strategy, (2) from the knowledge-driven rules, where the latter is prioritised. A case study in the steel manufacturing domain is presented that uses the proposed framework for real-world predictive maintenance purposes. Results are validated and compared to typical machine-learning approaches.