1403/02/07
فردین اخلاقیان طاب

فردین اخلاقیان طاب

مرتبه علمی: دانشیار
ارکید:
تحصیلات: دکترای تخصصی
اسکاپوس: 9635715500
دانشکده: دانشکده مهندسی
نشانی:
تلفن:

مشخصات پژوهش

عنوان
Hybrid fast unsupervised feature selection for high-dimensional data
نوع پژوهش
JournalPaper
کلیدواژه‌ها
Feature selection, High-dimensional data, Binary ant system, Clustering Mutation
سال
2019
مجله EXPERT SYSTEMS WITH APPLICATIONS
شناسه DOI
پژوهشگران Zhaleh Manbari ، Fardin Akhlaghian Tab ، Chiman Salavati

چکیده

The emergence of “curse of dimensionality”issue as a result of high reduces datasets deteriorates the ca- pability of learning algorithms, and also requires high memory and computational costs. Selection of fea- tures by discarding redundant and irrelevant features functions as a crucial machine learning technique aimed at reducing the dimensionality of these datasets, which improves the performance of the learning algorithm. Feature selection has been extensively applied in many application areas relevant to expert and intelligent systems, such as data mining and machine learning. Although many algorithms have been developed so far, they are still unsatisfying confronting high-dimensional data. This paper presented a new hybrid filter-based feature selection algorithm based on acombination of clustering and the modi- fied Binary Ant System (BAS), called FSCBAS, to overcome the search space and high-dimensional data processing challenges efficiently. This model provided both global and local search capabilities between and within clusters. In the proposed method, inspired by genetic algorithm and simulated annealing, a damped mutation strategy was introduced that avoided falling into local optima, and a new redundancy reduction policy adopted to estimate the correlation between the selected features further improved the algorithm. The proposed method can be applied in many expert system applications such as microar- ray data processing, text classification and image processing in high-dimensional data to handle the high dimensionality of the feature space and improve classification performance simultaneously. The perfor- mance of the proposed algorithm was compared to that of state-of-the-art feature selection algorithms using different classifiers on real-world datasets. The experimental results confirmed that the proposed method reduced computational complexity significantly, and achieved better performance than the other feature selection methods.