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Alternating Transfer Functions to Prevent Overfitting in Non-Linear Regression with Neural Networks 交替传递函数防止神经网络非线性回归过拟合
Pub Date : 2023-10-31 DOI: 10.1080/0952813x.2023.2270995
Philipp Seitz, Jan Schmitt
In nonlinear regression with machine learning methods, neural networks (NNs) are ideally suited due to their universal approximation property, which states that arbitrary nonlinear functions can thereby be approximated arbitrarily well. Unfortunately, this property also poses the problem that data points with measurement errors can be approximated too well and unknown parameter subspaces in the estimation can deviate far from the actual value (so-called overfitting). Various developed methods aim to reduce overfitting through modifications in several areas of the training. In this work, we pursue the question of how an NN behaves in training with respect to overfitting when linear and nonlinear transfer functions (TF) are alternated in different hidden layers (HL). The presented approach is applied to a generated dataset and contrasted to established methods from the literature, both individually and in combination. Comparable results are obtained, whereby the common use of purely nonlinear transfer functions proves to be not recommended generally.
在机器学习方法的非线性回归中,神经网络(nn)由于其普遍近似性质而非常适合,这表明任意非线性函数可以因此被任意地近似。不幸的是,这一特性也带来了一个问题,即具有测量误差的数据点可能被逼近得太好,估计中的未知参数子空间可能偏离实际值很远(所谓的过拟合)。各种已开发的方法旨在通过对训练的几个方面进行修改来减少过拟合。在这项工作中,我们研究了当线性和非线性传递函数(TF)在不同的隐藏层(HL)中交替时,神经网络在训练中如何处理过拟合的问题。所提出的方法应用于生成的数据集,并与文献中建立的方法进行对比,无论是单独的还是组合的。得到了可比较的结果,由此证明一般不推荐使用纯非线性传递函数。
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引用次数: 0
The future of artificial intelligence and digital development: a study of trust in social robot capabilities 人工智能和数字化发展的未来:对社交机器人能力的信任研究
Pub Date : 2023-09-28 DOI: 10.1080/0952813x.2023.2263456
Chuntao Jiang, Xin Guan, Junfan Zhu, Zeyu Wang, Fanbao Xie, Weijia Wang
ABSTRACTThis paper aims to study people’s trust in the capabilities of social robots in the context of digital transformation. Firstly, the current application status of social robots is studied. Then, the capability trust problem of social robots is studied according to the existing problems and phenomena. Students from a municipal experimental middle school are selected for a questionnaire survey, and the anthropomorphism of social robots is taken as the independent variable. The role of social robots with different anthropomorphic degrees on students’ initial capability trust and the mediating role of attraction perception are studied. A research model is established, and SPSS 26.0 is used to further analyse the data. The results show that among the students with a low degree of an anthropomorphic social robot, the average score of anthropomorphism is 2.52, the average score of attraction perception is 3.29, and the score of capability trust is 3.64, which is the upper-middle level. There are significant differences in the initial capability trust evaluation of social robots among students of different ages (F = 38.13, P = 0.00). When the degree of anthropomorphism of social robots is at different levels, there are significant differences in students’ initial capability trust evaluation (F = 34.25, P = 0.00). It can be seen that the degree of anthropomorphism of social robots has an impact on students’ initial capability trust.KEYWORDS: Digital transformationsocial robotsdegree of anthropomorphismcapability trustattraction perception Disclosure statementNo potential conflict of interest was reported by the author(s).Data sharing agreementThe datasets used and/or analysed during the current study are available from the corresponding author on reasonable request.Additional informationFundingThe author(s) received no financial support for the research, authorship, and/or publication of this article.
摘要本文旨在研究数字化转型背景下人们对社交机器人能力的信任。首先,研究了社交机器人的应用现状。然后,根据存在的问题和现象,对社交机器人的能力信任问题进行了研究。选取某市实验中学的学生进行问卷调查,以社交机器人的拟人化为自变量。研究了不同拟人化程度的社交机器人对学生初始能力信任的影响以及吸引感知的中介作用。建立研究模型,运用SPSS 26.0软件对数据进行进一步分析。结果表明:拟人化程度较低的学生,拟人化平均得分为2.52分,吸引力感知平均得分为3.29分,能力信任得分为3.64分,属于中上水平;不同年龄学生对社交机器人的初始能力信任评价存在显著差异(F = 38.13, P = 0.00)。当社交机器人拟人化程度处于不同水平时,学生的初始能力信任评价存在显著差异(F = 34.25, P = 0.00)。由此可见,社交机器人的拟人化程度对学生的初始能力信任有影响。关键词:数字化转型;社会机器人;拟人化程度;能力;信任;数据共享协议当前研究中使用和/或分析的数据集可根据通讯作者的合理要求提供。作者在研究、撰写和/或发表这篇文章时没有得到任何经济支持。
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引用次数: 0
Novel hybrid soft set theories focusing on decision-makers by considering the factors affecting the parameters 新的混合软集理论通过考虑影响参数的因素来关注决策者
Pub Date : 2023-09-21 DOI: 10.1080/0952813x.2023.2259913
O. Dalkılıç, N. Demirtaş
ABSTRACTIn this paper, the parameterisation tool of soft set theory is focused and factor sets are defined for all factors that can affect each parameter. Thus, more ideal results are aimed by determining the membership values of the parameters in uncertain environments. In addition, some new hybrid types of soft sets have been defined. The most important advantage of these new hybrid mathematical tools is that they can reduce the possible error margin of decision-makers. Moreover, a decision-making algorithm has been proposed for the set type that can bring us to the most comprehensive data on uncertainty. Finally, the solution to an uncertainty problem is obtained by using the given algorithm.KEYWORDS: Soft setfuzzy soft setuncertainty problemsalgorithmdecision making AcknowledgementsThe authors would like to thank to Mersin University-BAP.Disclosure statementThis article does not contain any studies with human participants or animals performed by any of the authors. Informed consent was obtained from all individual participants included in the paper, including their legal guardians.Additional informationFundingThis study is supported by Mersin University as scientific research project (BAP) with the project code 2022-2-TP3-4769.
摘要本文重点介绍了软集理论的参数化工具,定义了影响各参数的所有因素的因子集。因此,在不确定环境下,通过确定参数的隶属度值,可以得到更理想的结果。此外,还定义了一些新的混合软集类型。这些新的混合数学工具最重要的优点是它们可以减少决策者可能的误差范围。此外,本文还提出了一种针对集合类型的决策算法,使我们能够获得最全面的不确定性数据。最后,利用该算法求解了一个不确定性问题。关键词:软设置模糊软设置确定性问题算法决策致谢感谢Mersin University-BAP声明:本文不包含任何作者对人类或动物进行的任何研究。获得了本文中所有参与者的知情同意,包括他们的法定监护人。本研究由美国梅尔辛大学作为科研项目(BAP)支持,项目代码为2022-2-TP3-4769。
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引用次数: 0
Municipal Solid Waste Prediction using Tree Hierarchical Deep Convolutional Neural Network Optimized with Balancing Composite Motion Optimization Algorithm 基于平衡复合运动优化算法的树阶深度卷积神经网络城市生活垃圾预测
Pub Date : 2023-09-20 DOI: 10.1080/0952813x.2023.2243277
T. Senthil Prakash, Annalakshmi M, Siva Prasad Patnayakuni, S. Shibu
ABSTRACTEfficacious forecasting of a solid waste supervision system depends on the prediction accuracy of solid waste generation. Several existing methods on municipal solid waste prediction were suggested previously, but those methods do not accurately predict the solid waste, and also it takes high computation time. To overwhelm these issues, Municipal Solid Waste Prediction using Tree Hierarchical Deep Convolutional Neural Network optimised with Balancing Composite Motion Optimization algorithm (MSWP-THDCNN-BCMOA) is proposed for municipal solid waste prediction. Initially, real-time solid waste prediction data is taken from Quantity of MCC, Landfill, Gardan Garbage and Coconut Shell Report in Tamil Nadu (Chennai), such as Zone-9 (Nungambakkam), Zone 10 (Kodambakkam) and Zone 13 (Adyar). Then the collected solid waste data are pre-processed using morphological filtering and extended empirical wavelet transformation. Then the pre-processed data are given to THDCNN-BCMOA algorithm, which accurately predicts the solid waste as wet waste, dry waste, horticulture waste, and dumping yard for 2025–2035 years. The proposed MSWP-THDCNN-BCMOA method is implemented in Python. Then the proposed MSWP-THDCNN-BCMOA method attains 17.91%, 28.30%, 5.63% and 13.54% higher accuracy, 98.66%, 99.13%, 96.43% and 98.31% lower error rate, 53.003%, 48.44%, 25.69% and 42.42% lower computation time compared with existing methods.KEYWORDS: Morphological filtering and extended empirical wavelet transformationtree hierarchical deep convolutional neural networkbalancing composite motion optimizationmunicipal solid waste prediction Disclosure statementNo potential conflict of interest was reported by the author(s).Additional informationFundingThe author(s) reported there is no funding associated with the work featured in this article.
摘要固体废物监测系统的有效预测取决于固体废物产生量预测的准确性。目前已有几种城市生活垃圾预测方法,但这些方法不能准确预测城市生活垃圾,且计算时间长。为了克服这些问题,提出了利用平衡复合运动优化算法优化的树层次深度卷积神经网络(MSWP-THDCNN-BCMOA)进行城市生活垃圾预测。最初,实时固体废物预测数据来自泰米尔纳德邦(钦奈)的MCC数量,垃圾填埋场,Gardan垃圾和椰子壳报告,如9区(Nungambakkam), 10区(Kodambakkam)和13区(Adyar)。然后利用形态滤波和扩展经验小波变换对收集到的固废数据进行预处理。然后将预处理后的数据输入到THDCNN-BCMOA算法中,对2025-2035年的湿废弃物、干废弃物、园艺废弃物、堆场废弃物进行了准确预测。提出的MSWP-THDCNN-BCMOA方法在Python中实现。与现有方法相比,MSWP-THDCNN-BCMOA方法的准确率分别提高了17.91%、28.30%、5.63%和13.54%,错误率分别降低了98.66%、99.13%、96.43%和98.31%,计算时间分别降低了53.003%、48.44%、25.69%和42.42%。关键词:形态滤波与扩展经验小波变换;树层次深度卷积神经网络;平衡复合运动优化;城市生活垃圾预测;其他信息资金作者报告没有与本文所述工作相关的资金。
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引用次数: 0
Optimal control strategy for COVID-19 developed using an AI-based learning method 采用基于人工智能的学习方法制定了COVID-19的最优控制策略
Pub Date : 2023-09-16 DOI: 10.1080/0952813x.2023.2256733
V. Kakulapati, A. Jayanthiladevi
ABSTRACTThe corona virus pandemic has affected millions of people’s work and communication. Millions face a health crisis from SARS-CoV-2, the virus that causes most COVID-19 symptoms. The aim of the proposed research is to contribute towards AI (Artificial Intelligence) by developing a mathematical model for SEIR and SIR through CNN on images of affected people and to analyse the dataset of medical images and healthcare outbreaks from 2019 to 2022 to provide an efficient COVID-19 diagnosis tool. The proposed research uses AI and mathematical modelling to develop a learning platform that analyzes images of affected people using CNN to diagnose COVID-19. The dataset used in this research includes medical images and healthcare outbreaks from 2019 to 2022, which are analysed through the SEIR and SIR mathematical models to provide an efficient and accurate COVID-19 diagnosis tool. The results of this research show that the proposed AI learning method is effective in diagnosing COVID-19 using images of affected individuals. The mathematical model for SEIR and SIR, analysed through CNN, provides accurate and efficient diagnosis of COVID-19. The dataset used in this research also provides valuable insights into the outbreak of COVID-19 and its impact on healthcare systems.KEYWORDS: AIchest x-rayCNNCT scanSARS-CoV2 Disclosure statementNo potential conflict of interest was reported by the author(s).
冠状病毒大流行影响了数百万人的工作和交流。数百万人面临SARS-CoV-2带来的健康危机,这种病毒会导致大多数COVID-19症状。拟议研究的目的是通过CNN对受影响人群的图像开发SEIR和SIR的数学模型,并分析2019年至2022年的医学图像和医疗暴发数据集,为AI(人工智能)做出贡献,以提供有效的COVID-19诊断工具。该研究利用人工智能和数学模型开发了一个学习平台,通过CNN分析患者的图像来诊断COVID-19。本研究使用的数据集包括2019年至2022年的医学图像和医疗保健疫情,通过SEIR和SIR数学模型对其进行分析,以提供高效准确的COVID-19诊断工具。研究结果表明,人工智能学习方法在利用患者图像诊断新冠肺炎方面是有效的。通过CNN分析SEIR和SIR的数学模型,提供了准确高效的COVID-19诊断。本研究中使用的数据集还为COVID-19的爆发及其对医疗保健系统的影响提供了宝贵的见解。关键词:x射线cnnct扫描sars - cov2披露声明作者未报告潜在利益冲突。
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引用次数: 0
Detection of Epilepsy patients using coot optimization based feed forward multilayer neural network 基于coot优化的前馈多层神经网络检测癫痫患者
Pub Date : 2023-09-16 DOI: 10.1080/0952813x.2023.2256739
Neeraj Nagwanshi, Anjali Potnis
ABSTRACTA familiar nervous system disorder characterised by seizures is called as Epilepsy. It is indeed hard to control the suitable type as an outcome of insufficient EEG information. In order to overcome these issues, a Multilayer Neural Network (MLNN)-based classifier is proposed to recognise if the patients are affected by epileptic disease or not. EEG signal is a contribution, and the input signal is preprocessed using antialiasing filter, finite impulse response, and band pass filter to eradicate unwanted noise present in the signal. After preprocessing, the features extracting process is done, and four extraction techniques are proposed in order to calculate the feature coefficient. The feature extraction outcome is fed into the MLNN classifier to predict the disease. MLNN performs with Coot-Optimization to reduce error and increase prediction accuracy. The future ideal applied in Matlab-software carried out numerous act metrics, and these parameters attained better performance such as accuracy of 96.5%, error of 0.03, precision of 98%, specificity is 97%, sensitivity is 95%, and so on. This displays the effectiveness of the future ideal than existing approaches such as ANN, SVM, KNN and NB. Based on this proposed classification, the epileptic disease prediction can be improved on this technique and can provide a living standard for patients.KEYWORDS: Epilepsy diseaseeeg signalmulti-layer neural networkantialiasing filterfinite impulse response Author contributionsThe corresponding author claims the major contribution of the paper including formulation, analysis and editing. The co-author provide guidance to verify the analysis result and manuscript editing.Compliance with ethical standardsThis article is a completely original work of its authors; it has not been published before and will not be sent to other publications until the journal’s editorial board decides not to accept it for publication.Disclosure statementNo potential conflict of interest was reported by the author(s).FundingThe authors declare that no funds, grants, or other support were received during the preparation of this manuscript.
一种常见的以癫痫发作为特征的神经系统疾病被称为癫痫。由于脑电信息的不足,确实难以控制合适的类型。为了克服这些问题,提出了一种基于多层神经网络(MLNN)的分类器来识别患者是否受到癫痫疾病的影响。EEG信号是一个贡献,输入信号使用抗混叠滤波器,有限脉冲响应和带通滤波器进行预处理,以消除信号中存在的不需要的噪声。经过预处理后,进行特征提取,并提出了四种提取技术来计算特征系数。将特征提取结果输入到MLNN分类器中进行疾病预测。MLNN采用Coot-Optimization来减少误差,提高预测精度。未来的理想应用于matlab软件中进行了大量的行为指标,这些参数的准确度为96.5%,误差为0.03,精密度为98%,特异度为97%,灵敏度为95%等。与现有的ANN、SVM、KNN和NB等方法相比,这显示了未来理想的有效性。基于这种分类方法,可以提高癫痫疾病的预测,为患者的生活水平提供依据。关键词:癫痫病信号多层神经网络抗混叠滤波有限脉冲响应作者贡献通讯作者认为本文的主要贡献包括论文的撰写、分析和编辑。共同作者指导分析结果的验证和稿件的编辑。本文完全是作者的原创作品;这篇文章之前没有发表过,在该杂志的编辑委员会决定不接受它发表之前,它不会被发送给其他出版物。披露声明作者未报告潜在的利益冲突。作者声明在撰写本文期间没有收到任何资金、资助或其他支持。
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引用次数: 0
Constructing condensed memories in functorial time 在功能时间内构建浓缩记忆
Pub Date : 2023-06-24 DOI: 10.1080/0952813x.2023.2222374
Shanna Dobson, Chris Fields
If episodic memory is constructive, experienced time is also a construct. We develop an event-based formalism that replaces the traditional objective, agent-independent notion of time with a constructive, agent-dependent notion of time. We show how to make this agent-dependent time entropic and hence well-defined. We use sheaf-theoretic techniques to render agent-dependent time functorial and to construct episodic memories as sequences of observed and constructed events with well-defined limits that maximise the consistency of categorisations assigned to objects appearing in memories. We then develop a condensed formalism that represents episodic memories as pure constructs from single events. We formulate an empirical hypothesis that human episodic memory implements a particular time-symmetric constructive functor, and discuss possible experimental tests.
如果情景记忆是建构性的,那么经历时间也是建构性的。我们发展了一种基于事件的形式主义,用一种建设性的、依赖于主体的时间概念取代了传统的客观的、独立于主体的时间概念。我们展示了如何使这个依赖于主体的时间熵,从而定义良好。我们使用束理论技术来呈现依赖于主体的时间函数,并将情景记忆构建为观察和构建的事件序列,这些事件具有明确的限制,可以最大限度地提高记忆中出现的对象分类的一致性。然后,我们发展了一个浓缩的形式主义,将情景记忆表示为单个事件的纯粹构念。我们提出了一个经验假设,即人类情景记忆实现了一个特定的时间对称构造函子,并讨论了可能的实验测试。
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引用次数: 0
Retraction 收缩
Pub Date : 2023-03-16 DOI: 10.1080/0952813x.2023.2184990
This article refers to:Retracted Article: Artificial intelligence for the identification of healthy fruits and vegetables using MMDL-ABO
本文指:撤稿文章:利用MMDL-ABO进行健康果蔬识别的人工智能
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引用次数: 0
A Memory-Based Approach to Learning Shallow Natural Language Patterns 基于记忆的浅层自然语言模式学习方法
Pub Date : 1999-07-01 DOI: 10.1080/095281399146463
S. Argamon, Ido Dagan, Yuval Krymolowski
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引用次数: 35
On designing a visual system# (towards a Gibsonian computational model of vision) 浅谈视觉系统的设计#(面向gibson视觉计算模型)
Pub Date : 1990-10-01 DOI: 10.1080/09528138908953711
Aaron Slomon
Abstract This paper contrasts the standard (in AI) ‘modular’ theory of the nature of vision with a more general theory of vision as involving multiple functions and multiple relationships with other sub-systems of an intelligent system. The modular theory (e.g. as expounded by Marr) treats vision as entirely, and permanently, concerned with the production of a limited range of descriptions of visible surfaces, for a central database; while the ‘labyrinthine’ design allows any output that a visual system can be trained to associate reliably with features of an optic array and allows forms of learning that set up new communication channels. The labyrinthine theory turns out to have much in common with J.J. Gibson's theory of affordances, while not eschewing information processing as he did. It also seems to fit better than the modular theory with neurophysiological evidence of rich interconnectivity within and between sub-systems in the brain. Some of the trade-offs between different designs are discussed i...
本文将标准的(在人工智能中)视觉本质的“模块化”理论与更一般的视觉理论进行了对比,后者涉及智能系统的多个功能和与其他子系统的多个关系。模块化理论(如Marr所阐述的)将视觉视为完全的,永久的,与对可见表面的有限范围描述的生产有关,为一个中央数据库;虽然“迷宫”式的设计允许任何输出,视觉系统可以训练与光学阵列的特征可靠地联系起来,并允许建立新的交流渠道的学习形式。事实证明,这个错综复杂的理论与J.J.吉布森的启示理论有很多共同之处,但并没有像他那样回避信息处理。它似乎也比模块化理论更符合大脑子系统内部和子系统之间丰富的互联性的神经生理学证据。本文讨论了不同设计之间的一些权衡。
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引用次数: 84
期刊
Journal of Experimental and Theoretical Artificial Intelligence
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