El-Sebakhy Emad A, Hadi Ali S, Faisal Kanaan A
Computer Science, College of Computer Science and Engineering, Department of Information and Computer Science, King Fahd University of Petroleum and Minerals, Dahran 31261, Saudi Arabia.
IEEE Trans Neural Netw. 2007 May;18(3):844-50. doi: 10.1109/TNN.2007.891632.
This paper proposes unconstrained functional networks as a new classifier to deal with the pattern recognition problems. Both methodology and learning algorithm for this kind of computational intelligence classifier using the iterative least squares optimization criterion are derived. The performance of this new intelligent systems scheme is demonstrated and examined using real-world applications. A comparative study with the most common classification algorithms in both machine learning and statistics communities is carried out. The study was achieved with only sets of second-order linearly independent polynomial functions to approximate the neuron functions. The results show that this new framework classifier is reliable, flexible, stable, and achieves a high-quality performance.
本文提出了无约束功能网络作为一种新的分类器来处理模式识别问题。推导了使用迭代最小二乘优化准则的这种计算智能分类器的方法和学习算法。利用实际应用对这种新的智能系统方案的性能进行了演示和检验。与机器学习和统计学领域中最常见的分类算法进行了比较研究。该研究仅使用二阶线性独立多项式函数集来逼近神经元函数。结果表明,这种新的框架分类器可靠、灵活、稳定,并且具有高质量的性能。