Conference Paper/Proceeding/Abstract 1156 views 296 downloads
Towards an Ontological Framework for Integrating Domain Expert Knowledge with Random Forest Classification
2023 IEEE 17th International Conference on Semantic Computing (ICSC)
Swansea University Authors:
Sadeer Beden , Arnold Beckmann
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DOI (Published version): 10.1109/icsc56153.2023.00043
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 se...
| Published in: | 2023 IEEE 17th International Conference on Semantic Computing (ICSC) |
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| Published: |
IEEE
2023
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| Online Access: |
http://dx.doi.org/10.1109/icsc56153.2023.00043 |
| URI: | https://cronfa.swan.ac.uk/Record/cronfa63104 |
| first_indexed |
2023-04-10T07:31:11Z |
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| last_indexed |
2024-11-15T18:00:55Z |
| id |
cronfa63104 |
| recordtype |
SURis |
| fullrecord |
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2023-05-12T10:13:59.9724152 v2 63104 2023-04-10 Towards an Ontological Framework for Integrating Domain Expert Knowledge with Random Forest Classification acf0be82092335f6fb65bb51f29c46ac 0009-0009-7564-7726 Sadeer Beden Sadeer Beden true false 1439ebd690110a50a797b7ec78cca600 0000-0001-7958-5790 Arnold Beckmann Arnold Beckmann true false 2023-04-10 EAAS 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. Conference Paper/Proceeding/Abstract 2023 IEEE 17th International Conference on Semantic Computing (ICSC) IEEE 1 2 2023 2023-02-01 10.1109/icsc56153.2023.00043 http://dx.doi.org/10.1109/icsc56153.2023.00043 COLLEGE NANME Engineering and Applied Sciences School COLLEGE CODE EAAS Swansea University 2023-05-12T10:13:59.9724152 2023-04-10T08:18:57.1081789 Faculty of Science and Engineering School of Mathematics and Computer Science - Computer Science Sadeer Beden 0009-0009-7564-7726 1 Arnold Beckmann 0000-0001-7958-5790 2 63104__27009__2dfb0645d4be4399ae6450f90a8ebe3a.pdf Towards_an_Ontological_Framework - submission.pdf 2023-04-10T08:30:22.6092563 Output 407700 application/pdf Accepted Manuscript true true eng |
| title |
Towards an Ontological Framework for Integrating Domain Expert Knowledge with Random Forest Classification |
| spellingShingle |
Towards an Ontological Framework for Integrating Domain Expert Knowledge with Random Forest Classification Sadeer Beden Arnold Beckmann |
| title_short |
Towards an Ontological Framework for Integrating Domain Expert Knowledge with Random Forest Classification |
| title_full |
Towards an Ontological Framework for Integrating Domain Expert Knowledge with Random Forest Classification |
| title_fullStr |
Towards an Ontological Framework for Integrating Domain Expert Knowledge with Random Forest Classification |
| title_full_unstemmed |
Towards an Ontological Framework for Integrating Domain Expert Knowledge with Random Forest Classification |
| title_sort |
Towards an Ontological Framework for Integrating Domain Expert Knowledge with Random Forest Classification |
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acf0be82092335f6fb65bb51f29c46ac 1439ebd690110a50a797b7ec78cca600 |
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acf0be82092335f6fb65bb51f29c46ac_***_Sadeer Beden 1439ebd690110a50a797b7ec78cca600_***_Arnold Beckmann |
| author |
Sadeer Beden Arnold Beckmann |
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Sadeer Beden Arnold Beckmann |
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Conference Paper/Proceeding/Abstract |
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2023 IEEE 17th International Conference on Semantic Computing (ICSC) |
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2023 |
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Swansea University |
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10.1109/icsc56153.2023.00043 |
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IEEE |
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Faculty of Science and Engineering |
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Faculty of Science and Engineering |
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Faculty of Science and Engineering |
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School of Mathematics and Computer Science - Computer Science{{{_:::_}}}Faculty of Science and Engineering{{{_:::_}}}School of Mathematics and Computer Science - Computer Science |
| url |
http://dx.doi.org/10.1109/icsc56153.2023.00043 |
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| description |
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. |
| published_date |
2023-02-01T05:11:53Z |
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1851096840446935040 |
| score |
11.089551 |

