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Recognition of the state of mind using Hamming Swarm Net

机译:使用汉明(Hamming)Swarm Net识别心境

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Recognition of the state of mind has been attempted by many researchers using different computational techniques, but the achievement is not quite significant. In this paper, “whether a person can cause harm to others or not” has been considered as one of the states of mind of human being to be recognized. This paper presents Hamming Swarm Net (HSN) which is a hybridization the Hamming Net (HN) and the Particle Swarm Optimization (PSO) techniques. HN being a competitive network is usually used tasks like clustering, but in this work it is employed as a tool for pattern classification. HN considers fixed exemplar vectors, which restricts its mapping efficiency. The proposed technique evolves the optimal set of exemplar vectors by exercising intelligence of swarm and significantly improves the recognition capabilities. The moral database of UCI machine learning repository is taken here for recognition one of the states of mind. Simulation study shows that recognition capabilities of HSN is superior in comparison to many other techniques such as Multi Layer Perceptron (MLP), Functional Link Artificial Neural Network (FLANN), Polynomial Neural Network (PNN), Multiple Linear Regression (MLR), and Hamming Network (HN).
机译:许多研究人员已经尝试使用不同的计算技术来识别心态,但是这种成就并不是很重要。在本文中,“一个人是否会对他人造成伤害”已被认为是人们公认的心态之一。本文介绍了Hamming Swarm Net(HSN),它是Hamming Net(HN)和粒子群优化(PSO)技术的混合体。作为竞争网络的HN通常用于诸如群集之类的任务,但是在这项工作中,它被用作模式分类的工具。 HN考虑固定样本向量,这限制了其映射效率。所提出的技术通过行使群体智能来演化出示例向量的最佳集合,并显着提高了识别能力。 UCI机器学习存储库的道德数据库在此处用于识别心态之一。仿真研究表明,与其他许多技术相比,例如多层感知器(MLP),功能链接人工神经网络(FLANN),多项式神经网络(PNN),多元线性回归(MLR)和汉明(Hamming)网络(HN)。

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