Loading...

UALM: unsupervised active learning method for clustering low-dimensional data

Javadian, M ; Sharif University of Technology

466 Viewed
  1. Type of Document: Article
  2. DOI: 10.3233/JIFS-16360
  3. Abstract:
  4. In this paper the Unsupervised Active Learning Method (UALM), a novel clustering method based on the Active Learning Method (ALM) is introduced. ALM is an adaptive recursive fuzzy learning algorithm inspired by some behavioral features of human brain functionality. UALM is a density-based clustering algorithm that relies on discovering densely connected components of data, where it can find clusters of arbitrary shapes. This approach is a noise-robust clustering method. The algorithm first blurs the data points as ink drop patterns, then summarizes the effects of all data points, and finally puts a threshold on the resulting pattern. It uses the connected-component algorithm for finding clusters. Then determines cluster centers by intersecting the narrow-paths. Experimental results confirmed the superiority of our proposed method compared to the two most well-known density-based clustering algorithms, DBSCAN and DENCLUE. © 2017 IOS Press and the authors. All rights reserved
  5. Keywords:
  6. Active learning method ; Unsupervised active learning method ; Artificial intelligence ; Behavioral research ; Cluster analysis ; Learning algorithms ; Learning systems ; Active learning methods ; Behavioral features ; Clustering ; Connected component ; Connected component algorithm ; Density-based clustering ; Density-based clustering algorithms ; Fuzzy data ; Clustering algorithms
  7. Source: Journal of Intelligent and Fuzzy Systems ; Volume 32, Issue 3 , 2017 , Pages 2393-2411 ; 10641246 (ISSN)
  8. URL: https://content.iospress.com/articles/journal-of-intelligent-and-fuzzy-systems/ifs16360