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Research on Statistical Relational Learning and Rough Set in SRL
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作者 Fei Chen Lin Shang Zhaoqian Chen Shifu Chen 《南昌工程学院学报》 CAS 2006年第2期92-96,111,共6页
Statistical relational learning constructs statistical models from relational databases, combining relational learning and statistical learning. Its strong ability and special property make statistical relational lear... Statistical relational learning constructs statistical models from relational databases, combining relational learning and statistical learning. Its strong ability and special property make statistical relational learning become one of the important areas in machine learning research.In this paper,the general concepts and characters of statistical relational learning are presented firstly.Then some major branches of this newly emerging field are discussed,including logic and rule-based approaches,frame and object-oriented approaches,functional programming-based approaches.After that several methods of applying rough set in statistical relational learning are described,such as gRS-ILP and VPRSILP. Finally some applications of statistical relational leaning are briefly introduced and some future directions of statistical relational learning and the application of rough set in this area are pointed out. 展开更多
关键词 statistical relational learning rough set gRS-ILP VPRSILP
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Philosophy of Teaching
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作者 Askerov Shahlar 《Journal of Philosophy Study》 2022年第10期533-539,共7页
Education is a complex system that has evolved over thousands of years to reach its current level.It has many objects and subjects.The education systems of the countries are very diverse.Almost every country has its o... Education is a complex system that has evolved over thousands of years to reach its current level.It has many objects and subjects.The education systems of the countries are very diverse.Almost every country has its own ranking approach,because there is no universally accepted scientific theory of education.The search for effective reform in education continues today,but any reform that is not based on scientific theory cannot solve the problem.There are many problems in the content and management of education.Knowledge assessment is also flawed.No country can build an ideal school.It can be considered that in the last hundred years,education has not developed conceptually in the desired direction.Thus,education aims to train strong personalities,not perfect(wise)people.Although individualistic education may seem beneficial locally,globally it divides humanity and prevents its sustainable and harmonious living.However,in societies made up of perfect people,in principle there will be no division,harmony will exist,because perfect people solve problems not by force,but by reason,prefer cooperation rather than conflict.This means protecting the planet.To make the world a gun-free society,the view of education must change conceptually.This article presents a new philosophical view of teaching knowledge and proposes a new model,criteria,and theory. 展开更多
关键词 teaching model CRITERION assessment of knowledge appropriation(a) quality factor(K) average knowledge ideal school relative learning criterion
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Automated extraction of attributes from natural language attribute-based access control(ABAC)Policies 被引量:3
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作者 Manar Alohaly Hassan Takabi Eduardo Blanco 《Cybersecurity》 CSCD 2019年第1期38-62,共25页
The National Institute of Standards and Technology(NIST)has identified natural language policies as the preferred expression of policy and implicitly called for an automated translation of ABAC natural language access... The National Institute of Standards and Technology(NIST)has identified natural language policies as the preferred expression of policy and implicitly called for an automated translation of ABAC natural language access control policy(NLACP)to a machine-readable form.To study the automation process,we consider the hierarchical ABAC model as our reference model since it better reflects the requirements of real-world organizations.Therefore,this paper focuses on the questions of:how can we automatically infer the hierarchical structure of an ABAC model given NLACPs;and,how can we extract and define the set of authorization attributes based on the resulting structure.To address these questions,we propose an approach built upon recent advancements in natural language processing and machine learning techniques.For such a solution,the lack of appropriate data often poses a bottleneck.Therefore,we decouple the primary contributions of this work into:(1)developing a practical framework to extract authorization attributes of hierarchical ABAC system from natural language artifacts,and(2)generating a set of realistic synthetic natural language access control policies(NLACPs)to evaluate the proposed framework.Our experimental results are promising as we achieved-in average-an F1-score of 0.96 when extracting attributes values of subjects,and 0.91 when extracting the values of objects’attributes from natural language access control policies. 展开更多
关键词 Attribute-based access control(ABAC)policy authoring natural language processing relation extraction clustering deep learning
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Automated extraction of attributes from natural language attribute-based access control(ABAC)Policies
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作者 Manar Alohaly Hassan Takabi Eduardo Blanco 《Cybersecurity》 2018年第1期313-337,共25页
The National Institute of Standards and Technology(NIST)has identified natural language policies as the preferred expression of policy and implicitly called for an automated translation of ABAC natural language access... The National Institute of Standards and Technology(NIST)has identified natural language policies as the preferred expression of policy and implicitly called for an automated translation of ABAC natural language access control policy(NLACP)to a machine-readable form.To study the automation process,we consider the hierarchical ABAC model as our reference model since it better reflects the requirements of real-world organizations.Therefore,this paper focuses on the questions of:how can we automatically infer the hierarchical structure of an ABAC model given NLACPs;and,how can we extract and define the set of authorization attributes based on the resulting structure.To address these questions,we propose an approach built upon recent advancements in natural language processing and machine learning techniques.For such a solution,the lack of appropriate data often poses a bottleneck.Therefore,we decouple the primary contributions of this work into:(1)developing a practical framework to extract authorization attributes of hierarchical ABAC system from natural language artifacts,and(2)generating a set of realistic synthetic natural language access control policies(NLACPs)to evaluate the proposed framework.Our experimental results are promising as we achieved-in average-an F1-score of 0.96 when extracting attributes values of subjects,and 0.91 when extracting the values of objects’attributes from natural language access control policies. 展开更多
关键词 Attribute-based access control(ABAC)policy authoring natural language processing relation extraction clustering deep learning
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