Abstract
AbstractNotably, real problems are increasingly complex and require sophisticated models and algorithms capable of quickly dealing with large data sets and finding optimal solutions. However, there is no perfect method or algorithm; all of them have some limitations that can be mitigated or eliminated by combining the skills of different methodologies. In this way, it is expected to develop hybrid algorithms that can take advantage of the potential and particularities of each method (optimization and machine learning) to integrate methodologies and make them more efficient. This paper presents an extensive systematic and bibliometric literature review on hybrid methods involving optimization and machine learning techniques for clustering and classification. It aims to identify the potential of methods and algorithms to overcome the difficulties of one or both methodologies when combined. After the description of optimization and machine learning methods, a numerical overview of the works published since 1970 is presented. Moreover, an in-depth state-of-art review over the last three years is presented. Furthermore, a SWOT analysis of the ten most cited algorithms of the collected database is performed, investigating the strengths and weaknesses of the pure algorithms and detaching the opportunities and threats that have been explored with hybrid methods. Thus, with this investigation, it was possible to highlight the most notable works and discoveries involving hybrid methods in terms of clustering and classification and also point out the difficulties of the pure methods and algorithms that can be strengthened through the inspirations of other methodologies; they are hybrid methods.
Funder
Instituto Politécnico de Bragança
Publisher
Springer Science and Business Media LLC
Reference175 articles.
1. Abarghouei, A., Ghanizadeh, A., Sinaie, S., & Shamsuddin, S. (2009). A survey of pattern recognition applications in cancer diagnosis. In International conference of soft computing and pattern recognition (pp. 448–453 ).
2. Absara, A., Kumar, S., Lenin Fred, A., Ajay Kumar, H., & Suresh, V. (2020). An improved fuzzy clustering segmentation algorithm based on animal behavior global optimization. Advances in Intelligent Systems and Computing, 1048, 737–748.
3. Abualigah, L., & Dulaimi, A. (2021). A novel feature selection method for data mining tasks using hybrid sine cosine algorithm and genetic algorithm. Cluster Computing, 24, 2161–2176.
4. Adibi, M. (2019). Single and multiple outputs decision tree classification using bi-level discrete-continues genetic algorithm. Pattern Recognition Letters, 128, 190–196.
5. Agrusti, F., Bonavolontà, G., & Mezzini, M. (2019). University dropout prediction through educational data mining techniques: A systematic review. Journal of E-Learning and Knowledge Society, 15, 161–182.
Cited by
11 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献