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具有简化功能治疗的肾脏启发式算法,用于分类和时间序列预测。

Kidney-inspired algorithm with reduced functionality treatment for classification and time series prediction.

机构信息

Data Mining and Optimization Research Group (DMO), Centre for Artificial Intelligence Technology, Faculty of Information Science and Technology, National University of Malaysia, Bangi, Selangor, Malaysia.

出版信息

PLoS One. 2019 Jan 4;14(1):e0208308. doi: 10.1371/journal.pone.0208308. eCollection 2019.

Abstract

Optimization of an artificial neural network model through the use of optimization algorithms is the common method employed to search for an optimum solution for a broad variety of real-world problems. One such optimization algorithm is the kidney-inspired algorithm (KA) which has recently been proposed in the literature. The algorithm mimics the four processes performed by the kidneys: filtration, reabsorption, secretion, and excretion. However, a human with reduced kidney function needs to undergo additional treatment to improve kidney performance. In the medical field, the glomerular filtration rate (GFR) test is used to check the health of kidneys. The test estimates the amount of blood that passes through the glomeruli each minute. In this paper, we mimic this kidney function test and the GFR result is used to select a suitable step to add to the basic KA process. This novel imitation is designed for both minimization and maximization problems. In the proposed method, depends on GFR test result which is less than 15 or falls between 15 and 60 or is more than 60 a particular action is performed. These additional processes are applied as required with the aim of improving exploration of the search space and increasing the likelihood of the KA finding the optimum solution. The proposed method is tested on test functions and its results are compared with those of the basic KA. Its performance on benchmark classification and time series prediction problems is also examined and compared with that of other available methods in the literature. In addition, the proposed method is applied to a real-world water quality prediction problem. The statistical analysis of all these applications showed that the proposed method had a ability to improve the optimization outcome.

摘要

通过使用优化算法对人工神经网络模型进行优化是搜索各种现实世界问题最优解的常用方法。一种这样的优化算法是最近在文献中提出的肾脏启发式算法(KA)。该算法模拟了肾脏执行的四个过程:过滤、重吸收、分泌和排泄。然而,肾功能降低的人需要接受额外的治疗来改善肾脏功能。在医学领域,肾小球滤过率(GFR)测试用于检查肾脏健康状况。该测试估计每分钟通过肾小球的血液量。在本文中,我们模拟了这种肾脏功能测试,并用 GFR 结果来选择要添加到基本 KA 过程中的合适步骤。这种新颖的模拟适用于最小化和最大化问题。在所提出的方法中,根据 GFR 测试结果,如果结果小于 15 或在 15 到 60 之间,或者大于 60,则执行特定的操作。根据需要应用这些附加过程,旨在改善搜索空间的探索,并增加 KA 找到最优解的可能性。该方法在测试函数上进行了测试,并将其结果与基本 KA 的结果进行了比较。还检查并比较了其在基准分类和时间序列预测问题上的性能与文献中其他可用方法的性能。此外,该方法还应用于实际的水质预测问题。所有这些应用的统计分析表明,该方法能够改善优化结果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b1d2/6319704/677e45c66573/pone.0208308.g001.jpg

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