2022
DOI: 10.1007/978-3-031-21441-7_17
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OAK4XAI: Model Towards Out-of-Box eXplainable Artificial Intelligence for Digital Agriculture

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Cited by 4 publications
(3 citation statements)
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“…This approach, exemplified by the Agriculture Computing Ontology (AgriComO), aims to provide not just explanations for results but also a clear understanding of the underlying concepts, algorithms, and values used by the models. By bridging the gap between data analysis and semantic understanding, OAK4XAI empowers users in agriculture to not only trust the models' outputs but also grasp the reasoning behind them [33].…”
Section: Oak4xaimentioning
confidence: 99%
See 1 more Smart Citation
“…This approach, exemplified by the Agriculture Computing Ontology (AgriComO), aims to provide not just explanations for results but also a clear understanding of the underlying concepts, algorithms, and values used by the models. By bridging the gap between data analysis and semantic understanding, OAK4XAI empowers users in agriculture to not only trust the models' outputs but also grasp the reasoning behind them [33].…”
Section: Oak4xaimentioning
confidence: 99%
“…ClAMPs and TNTRules seek to explain model predictions; nevertheless, some constraints and difficulties might not be easily accessible [30]. Although it depends on locating optimum anchors, which may be computationally costly, OAK4XAI seeks to develop succinct and understandable anchors using game theory techniques [33]. Although explanations for highly complicated decision trees may become difficult, TreeSHAPs provide clarity on how tree-based algorithms arrive at predictions [99].…”
Section: Challengesmentioning
confidence: 99%
“…Ngo et al [137] have presented OAK4XAI (model towards out-of-box explainable artificial intelligence), an XAI system for text data analysis that combines domain knowledge semantics via an ontology and knowledge map model. To describe the knowledge mined in agriculture, they developed the agriculture computer ontology (AgriComO), a wellstructured framework suitable for agriculture and computer domains.…”
Section: Smart Agriculturementioning
confidence: 99%