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      QML-AiNet: An immune network approach to learning qualitative differential equation models

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          Abstract

          Highlights

          • We propose an immune network approach to learning qualitative models.

          • The immune network approach improves the scalability of learning.

          • The mutation operator is modified for searching discrete model space.

          • Promising results are obtained when learning compartmental models.

          Abstract

          In this paper, we explore the application of Opt-AiNet, an immune network approach for search and optimisation problems, to learning qualitative models in the form of qualitative differential equations. The Opt-AiNet algorithm is adapted to qualitative model learning problems, resulting in the proposed system QML-AiNet. The potential of QML-AiNet to address the scalability and multimodal search space issues of qualitative model learning has been investigated. More importantly, to further improve the efficiency of QML-AiNet, we also modify the mutation operator according to the features of discrete qualitative model space. Experimental results show that the performance of QML-AiNet is comparable to QML-CLONALG, a QML system using the clonal selection algorithm (CLONALG). More importantly, QML-AiNet with the modified mutation operator can significantly improve the scalability of QML and is much more efficient than QML-CLONALG.

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          Most cited references30

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          A study on the use of non-parametric tests for analyzing the evolutionary algorithms’ behaviour: a case study on the CEC’2005 Special Session on Real Parameter Optimization

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            Body composition techniques and the four-compartment model in children.

            The purpose of this study was to compare the accuracy, precision, and bias of fat mass (FM) as assessed by dual-energy X-ray absorptiometry (DXA), hydrostatic weighing (HW), air-displacement plethysmography (PM) using the BOD POD body composition system and total body water (TBW) against the four-compartment (4C) model in 25 children (11.4 +/- 1.4 yr). The regression between FM by the 4C model and by DXA deviated significantly from the line of identity (FM by 4C model = 0.84 x FM by DXA + 0.95 kg; R(2) = 0.95), as did the regression between FM by 4C model and by TBW (FM by 4C model = 0. 85 x FM by TBW - 0.89 kg; R(2) = 0.98). The regression between FM by the 4C model and by HW did not significantly deviate from the line of identity (FM by 4C model = 1.09 x FM by HW + 0.94 kg; R(2) = 0. 95) and neither did the regression between FM by 4C (using density assessed by PM) and by PM (FM by 4C model = 1.03 x FM by PM + 0.88; R(2) = 0.97). DXA, HW, and TBW all showed a bias in the estimate of FM, but there was no bias for PM. In conclusion, PM was the only technique that could accurately, precisely, and without bias estimate FM in 9- to 14-yr-old children.
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              Qualitative process theory.

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                Author and article information

                Contributors
                Journal
                Appl Soft Comput
                Appl Soft Comput
                Applied Soft Computing
                Elsevier
                1568-4946
                1872-9681
                1 February 2015
                February 2015
                : 27
                : 148-157
                Affiliations
                [0005]School of Natural and Computing Sciences, University of Aberdeen, Aberdeen AB24 3UE, UK
                Author notes
                [* ]Corresponding author. pang.wei@ 123456abdn.ac.uk
                Article
                S1568-4946(14)00568-7
                10.1016/j.asoc.2014.11.008
                4308000
                40e5aea4-cb5c-4520-89a0-051ad899fd3a
                © 2014 The Authors
                History
                : 8 February 2013
                : 28 June 2014
                : 11 November 2014
                Categories
                Article

                Applied computer science
                qualitative model learning,artificial immune systems,immune network approach,compartmental models,qualitative reasoning,qualitative differential equation

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