College of Educational Science, Bohai University, Jinzhou 121000, Liaoning, China.
Comput Intell Neurosci. 2022 Jul 9;2022:9617048. doi: 10.1155/2022/9617048. eCollection 2022.
The application of artificial intelligence in the field of education is becoming more and more extensive and in-depth. The intelligent education system can not only solve the limitations of location, time, and resources in the traditional learning field but it can also provide learners with a convenient, real-time, and interactive learning environment and has become one of the important applications in the Internet field. Particle swarm optimization (PSO) is a swarm intelligence-enabled stochastic optimization scheme. It is derived from a model of bird population foraging behavior. Because of its benefits of ease of implementation, high accuracy, and quick convergence, this algorithm has gained the attention of academics, and it has demonstrated its supremacy in addressing real issues. This paper aims to study the optimization of PSO in the field of computational intelligence, improve the matching degree of learning resource recommendation and learning path optimization, and improve the learning efficiency of online learners. This paper suggests intelligent education as the center, takes the PSO algorithm as the main research object, and expounds the related concepts of intelligent education and PSO algorithm. It uses swarm intelligence algorithms for intelligent education personalized services. He focuses on PSO algorithm and its work in intelligent education recommendation and learning path planning. Experiments show that the average value of the difference between the two obtained by the NBPSO algorithm is 1.13 + 02 and the variance 1.88 + 02 is the smallest. Therefore, PSO aids in improving the quality and consistency of online course resource development. In conclusion, the research results of this paper further demonstrate the advantages of PSO algorithm in solving the problem of personalized service in intelligent education. It can promote the in-depth application of swarm intelligence optimization algorithms in intelligent online learning systems. This effectively enhances the intelligent service level of the online learning system and increases the efficiency of online learning.
人工智能在教育领域的应用越来越广泛和深入。智能教育系统不仅可以解决传统学习领域中位置、时间和资源的限制,还可以为学习者提供便捷、实时和互动的学习环境,成为互联网领域的重要应用之一。粒子群优化(PSO)是一种基于群体智能的随机优化方案。它源于鸟类群体觅食行为的模型。由于其易于实现、精度高、收敛速度快等优点,该算法引起了学术界的关注,并在解决实际问题方面表现出了优越性。本文旨在研究计算智能领域的 PSO 优化,提高学习资源推荐和学习路径优化的匹配度,提高在线学习者的学习效率。本文以智能教育为中心,以 PSO 算法为主要研究对象,阐述了智能教育和 PSO 算法的相关概念。利用群体智能算法为智能教育提供个性化服务。重点研究 PSO 算法及其在智能教育推荐和学习路径规划中的工作。实验表明,NBPSO 算法得到的两个值的平均值差为 1.13+02,方差为 1.88+02,是最小的。因此,PSO 有助于提高在线课程资源开发的质量和一致性。综上所述,本文的研究结果进一步证明了 PSO 算法在解决智能教育个性化服务问题方面的优势。它可以促进群体智能优化算法在智能在线学习系统中的深入应用。这有效地提高了在线学习系统的智能服务水平,提高了在线学习的效率。