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Yi Deng

Researcher at Florida International University

Publications -  76
Citations -  1763

Yi Deng is an academic researcher from Florida International University. The author has contributed to research in topics: Petri net & Software system. The author has an hindex of 23, co-authored 76 publications receiving 1701 citations. Previous affiliations of Yi Deng include University of Pittsburgh & University of Miami.

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Survey of data management and analysis in disaster situations

TL;DR: The current knowledge in the management and analysis of data in disaster situations is surveyed, as well as the challenges and future research directions are presented.
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Reachability analysis of real-time systems using time Petri nets

TL;DR: This paper presents a new reachability based analysis technique for TPNs for timing property analysis and verification that effectively addresses the problem and shows how to apply it to timing property verification of the TPN model of a command and control (C2) system.
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A formal architectural model for logical agent mobility

TL;DR: This paper proposes a two-layer approach for the formal modeling of logical agent mobility (LAM) using predicate/transition (PrT) nets and presents a case study of modeling and analyzing an information retrieval system with mobile agents.
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An approach for modeling and analysis of security system architectures

TL;DR: This work presents a methodology for modeling security system architecture and for verifying whether required security constraints are assured by the composition of the components and introduces the concept of security constraint patterns, which formally specify the generic form of security policies that all implementations of the system architecture must enforce.
Proceedings ArticleDOI

An instant and accurate size estimation method for joins and selections in a retrieval-intensive environment

TL;DR: This paper proposes a novel strategy for estimating the size of the resulting relation after an equi-join and selection using a regression model, with no run-time overheads in page faults and space, and with negligible CPU overhead.