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Steelmaking Predictive Analytics Based on Random Forest and Semantic Reasoning
Applied Sciences, Volume: 13, Issue: 23, Start page: 12778
Swansea University Authors: Sadeer Beden, Kayal Lakshmanan, Cinzia Giannetti , Arnold Beckmann
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DOI (Published version): 10.3390/app132312778
Abstract
This paper proposes a human-in-the-loop framework that integrates machine learning models with semantic technologies to aid decision making in the domain of steelmaking. To achieve this, we convert a random forest (RF) into rules in a Semantic Web Rule Language (SWRL) format and represent real-world...
Published in: | Applied Sciences |
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ISSN: | 2076-3417 |
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MDPI AG
2023
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URI: | https://cronfa.swan.ac.uk/Record/cronfa65211 |
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v2 65211 2023-12-04 Steelmaking Predictive Analytics Based on Random Forest and Semantic Reasoning acf0be82092335f6fb65bb51f29c46ac Sadeer Beden Sadeer Beden true false 31fdeba4e76994bc72c5b8954389f8ab Kayal Lakshmanan Kayal Lakshmanan true false a8d947a38cb58a8d2dfe6f50cb7eb1c6 0000-0003-0339-5872 Cinzia Giannetti Cinzia Giannetti true false 1439ebd690110a50a797b7ec78cca600 0000-0001-7958-5790 Arnold Beckmann Arnold Beckmann true false 2023-12-04 SBI This paper proposes a human-in-the-loop framework that integrates machine learning models with semantic technologies to aid decision making in the domain of steelmaking. To achieve this, we convert a random forest (RF) into rules in a Semantic Web Rule Language (SWRL) format and represent real-world data as a knowledge graph in a Resource Description Framework (RDF) format, capturing the meta-data as part of the model. A rule engine is deployed that applies logical inference on the knowledge graph, resulting in a semantically enriched classification. This new classification is combined with external domain-expert knowledge to provide improved, knowledge-guided assistance for the human-in-the-loop system. A case study in the steel manufacturing domain is introduced, where this application is used for real-world predictive analytic purposes. Journal Article Applied Sciences 13 23 12778 MDPI AG 2076-3417 steelmaking; ontology; knowledge graphs; semantic reasoning; machine learning; random forest; predictive analytics 28 11 2023 2023-11-28 10.3390/app132312778 COLLEGE NANME Biosciences COLLEGE CODE SBI Swansea University This work was funded by Swansea University and the Engineering and Physical Sciences Research Council grants EP/T517537/1, EP/V061798/1, EP/S001387/1 & EP/S018107/1. 2024-04-09T15:24:37.5081921 2023-12-04T14:14:12.6737175 Faculty of Science and Engineering School of Biosciences, Geography and Physics - Biosciences Sadeer Beden 1 Kayal Lakshmanan 2 Cinzia Giannetti 0000-0003-0339-5872 3 Arnold Beckmann 0000-0001-7958-5790 4 65211__29196__ac1b8f78b58744c2aac804a6682df7f7.pdf 65211_ABeckmann.pdf 2023-12-04T14:23:07.1577460 Output 1563798 application/pdf Version of Record true © 2023 by the authors. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license. true eng https://creativecommons.org/licenses/by/4.0/ |
title |
Steelmaking Predictive Analytics Based on Random Forest and Semantic Reasoning |
spellingShingle |
Steelmaking Predictive Analytics Based on Random Forest and Semantic Reasoning Sadeer Beden Kayal Lakshmanan Cinzia Giannetti Arnold Beckmann |
title_short |
Steelmaking Predictive Analytics Based on Random Forest and Semantic Reasoning |
title_full |
Steelmaking Predictive Analytics Based on Random Forest and Semantic Reasoning |
title_fullStr |
Steelmaking Predictive Analytics Based on Random Forest and Semantic Reasoning |
title_full_unstemmed |
Steelmaking Predictive Analytics Based on Random Forest and Semantic Reasoning |
title_sort |
Steelmaking Predictive Analytics Based on Random Forest and Semantic Reasoning |
author_id_str_mv |
acf0be82092335f6fb65bb51f29c46ac 31fdeba4e76994bc72c5b8954389f8ab a8d947a38cb58a8d2dfe6f50cb7eb1c6 1439ebd690110a50a797b7ec78cca600 |
author_id_fullname_str_mv |
acf0be82092335f6fb65bb51f29c46ac_***_Sadeer Beden 31fdeba4e76994bc72c5b8954389f8ab_***_Kayal Lakshmanan a8d947a38cb58a8d2dfe6f50cb7eb1c6_***_Cinzia Giannetti 1439ebd690110a50a797b7ec78cca600_***_Arnold Beckmann |
author |
Sadeer Beden Kayal Lakshmanan Cinzia Giannetti Arnold Beckmann |
author2 |
Sadeer Beden Kayal Lakshmanan Cinzia Giannetti Arnold Beckmann |
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Applied Sciences |
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12778 |
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10.3390/app132312778 |
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MDPI AG |
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Faculty of Science and Engineering |
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description |
This paper proposes a human-in-the-loop framework that integrates machine learning models with semantic technologies to aid decision making in the domain of steelmaking. To achieve this, we convert a random forest (RF) into rules in a Semantic Web Rule Language (SWRL) format and represent real-world data as a knowledge graph in a Resource Description Framework (RDF) format, capturing the meta-data as part of the model. A rule engine is deployed that applies logical inference on the knowledge graph, resulting in a semantically enriched classification. This new classification is combined with external domain-expert knowledge to provide improved, knowledge-guided assistance for the human-in-the-loop system. A case study in the steel manufacturing domain is introduced, where this application is used for real-world predictive analytic purposes. |
published_date |
2023-11-28T15:24:33Z |
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11.037166 |