Towards ML Models’ Recommendations

Abstract Artificial Intelligence encompasses a range of technologies that replicate human-like cognitive abilities through computer systems, enabling the execution of tasks associated with intelligent beings. A prominent way to achieve this is machine learning (ML), which optimizes system performanc...

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Main Authors: Lara Kallab, Elio Mansour, Richard Chbeir
Format: Article
Language:English
Published: SpringerOpen 2024-10-01
Series:Data Science and Engineering
Subjects:
Online Access:https://doi.org/10.1007/s41019-024-00262-x
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author Lara Kallab
Elio Mansour
Richard Chbeir
author_facet Lara Kallab
Elio Mansour
Richard Chbeir
author_sort Lara Kallab
collection DOAJ
description Abstract Artificial Intelligence encompasses a range of technologies that replicate human-like cognitive abilities through computer systems, enabling the execution of tasks associated with intelligent beings. A prominent way to achieve this is machine learning (ML), which optimizes system performance by employing learning algorithms to create models based on data and its inherent patterns. Today, a multitude of ML models exist having diverse characteristics, including the algorithm type, training dataset, and resultant performance. Such diversity complicates the selection of an appropriate model for a specific use case, answering user demands. This paper presents an approach for ML models retrieval based on the matching between user inputs and ML models criteria, all described in a semantic ML ontology named SML model (Semantic Machine Learning model), which facilitates the process of ML models selection. Our approach is based on similarities measures that we tested and experimented to score the ML models and retrieve the ones matching, at best, user inputs.
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institution Kabale University
issn 2364-1185
2364-1541
language English
publishDate 2024-10-01
publisher SpringerOpen
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series Data Science and Engineering
spelling doaj-art-4fe3d99abc0e48b6a7816c81212dbfc02024-12-08T12:39:04ZengSpringerOpenData Science and Engineering2364-11852364-15412024-10-019440943010.1007/s41019-024-00262-xTowards ML Models’ RecommendationsLara KallabElio MansourRichard Chbeir0University Pau & Pays AdourAbstract Artificial Intelligence encompasses a range of technologies that replicate human-like cognitive abilities through computer systems, enabling the execution of tasks associated with intelligent beings. A prominent way to achieve this is machine learning (ML), which optimizes system performance by employing learning algorithms to create models based on data and its inherent patterns. Today, a multitude of ML models exist having diverse characteristics, including the algorithm type, training dataset, and resultant performance. Such diversity complicates the selection of an appropriate model for a specific use case, answering user demands. This paper presents an approach for ML models retrieval based on the matching between user inputs and ML models criteria, all described in a semantic ML ontology named SML model (Semantic Machine Learning model), which facilitates the process of ML models selection. Our approach is based on similarities measures that we tested and experimented to score the ML models and retrieve the ones matching, at best, user inputs.https://doi.org/10.1007/s41019-024-00262-xMachine learning modelSupervised learningOntologyUser inputSimilarities criteriaML models and user inputs alignment
spellingShingle Lara Kallab
Elio Mansour
Richard Chbeir
Towards ML Models’ Recommendations
Data Science and Engineering
Machine learning model
Supervised learning
Ontology
User input
Similarities criteria
ML models and user inputs alignment
title Towards ML Models’ Recommendations
title_full Towards ML Models’ Recommendations
title_fullStr Towards ML Models’ Recommendations
title_full_unstemmed Towards ML Models’ Recommendations
title_short Towards ML Models’ Recommendations
title_sort towards ml models recommendations
topic Machine learning model
Supervised learning
Ontology
User input
Similarities criteria
ML models and user inputs alignment
url https://doi.org/10.1007/s41019-024-00262-x
work_keys_str_mv AT larakallab towardsmlmodelsrecommendations
AT eliomansour towardsmlmodelsrecommendations
AT richardchbeir towardsmlmodelsrecommendations