ontology reasoning
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2021 ◽  
Vol 11 (21) ◽  
pp. 10450
Author(s):  
Watanee Jearanaiwongkul ◽  
Chutiporn Anutariya ◽  
Teeradaj Racharak ◽  
Frederic Andres

A great deal of information related to rice cultivation has been published on the web. Conventionally, this information is studied by end-users to identify pests, and to prevent production losses from rice diseases. Despite its benefits, such information has not yet been encoded in a machine-processable form. This research closes the gap by modeling the knowledge-bases using ontologies and semantic technologies. Our modeled ontologies are externalized from existing reliable sources only, and offer axioms that describe abnormal appearances in rice diseases (and insects) and the corresponding controls. In addition, we developed an expert system called RiceMan, based on our ontologies, to support technical and non-technical users for diagnosing problems from observed abnormalities. We also introduce a composition procedure that aggregates users’ observation data with others for realizing spreadable diseases. This procedure, together with ontology reasoning, lies at the heart of our methodology. Finally, we evaluate our methodology practically with four groups of stakeholders in Thailand: senior agronomists, junior agronomists, agricultural students, and ontology specialists. Both ontologies and RiceMan are evaluated to verify their correctness, usefulness, and usability in various aspects. Our experimental results show that ontology reasoning is a promising approach for this domain problem.


2021 ◽  
Vol 118 ◽  
pp. 417-431
Author(s):  
Hadda Ben Elhadj ◽  
Farag Sallabi ◽  
Amira Henaien ◽  
Lamia Chaari ◽  
Khaled Shuaib ◽  
...  

2021 ◽  
Vol 103 ◽  
pp. 107158
Author(s):  
Ignacio Huitzil ◽  
Miguel Molina-Solana ◽  
Juan Gómez-Romero ◽  
Fernando Bobillo

2020 ◽  
Vol 1651 ◽  
pp. 012090
Author(s):  
Liming Chen ◽  
Baoxin Xiu ◽  
Zhaoyun Ding ◽  
Xianqiang Zhu
Keyword(s):  

2020 ◽  
Vol 68 ◽  
Author(s):  
Patrick Hohenecker ◽  
Thomas Lukasiewicz

The ability to conduct logical reasoning is a fundamental aspect of intelligent human behavior, and thus an important problem along the way to human-level artificial intelligence. Traditionally, logic-based symbolic methods from the field of knowledge representation and reasoning have been used to equip agents with capabilities that resemble human logical reasoning qualities. More recently, however, there has been an increasing interest in using machine learning rather than logic-based symbolic formalisms to tackle these tasks. In this paper, we employ state-of-the-art methods for training deep neural networks to devise a novel model that is able to learn how to effectively perform logical reasoning in the form of basic ontology reasoning. This is an important and at the same time very natural logical reasoning task, which is why the presented approach is applicable to a plethora of important real-world problems. We present the outcomes of several experiments, which show that our model is able to learn to perform highly accurate ontology reasoning on very large, diverse, and challenging benchmarks. Furthermore, it turned out that the suggested approach suffers much less from different obstacles that prohibit logic-based symbolic reasoning, and, at the same time, is surprisingly plausible from a biological point of view.


Author(s):  
Minu Rajasekaran Indra ◽  
Nagarajan Govindan ◽  
Ravi Kumar Divakarla Naga Satya ◽  
Sundarsingh Jebaseelan Somasundram David Thanasingh

Author(s):  
Patrick Hohenecker ◽  
Thomas Lukasiewicz

The ability to conduct logical reasoning is a fundamental aspect of intelligent human behavior, and thus an important problem along the way to human-level artificial intelligence. Traditionally, logic-based symbolic methods from the field of knowledge representation and reasoning have been used to equip agents with capabilities that resemble human logical reasoning qualities. More recently, however, there has been an increasing interest in using machine learning rather than logic-based symbolic formalisms to tackle these tasks. In this paper, we employ state-of-the-art methods for training deep neural networks to devise a novel model that is able to learn how to effectively perform logical reasoning in the form of basic ontology reasoning.


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