Confidence-Based Incremental Classification for Objects with Limited Attributes in Vertical Search

Author(s):  
Ozer Ozdikis ◽  
Pinar Senkul ◽  
Siyamed Sinir
2014 ◽  
Vol 2014 ◽  
pp. 1-9 ◽  
Author(s):  
Yu Wang

Feature space heterogeneity often exists in many real world data sets so that some features are of different importance for classification over different subsets. Moreover, the pattern of feature space heterogeneity might dynamically change over time as more and more data are accumulated. In this paper, we develop an incremental classification algorithm, Supervised Clustering for Classification with Feature Space Heterogeneity (SCCFSH), to address this problem. In our approach, supervised clustering is implemented to obtain a number of clusters such that samples in each cluster are from the same class. After the removal of outliers, relevance of features in each cluster is calculated based on their variations in this cluster. The feature relevance is incorporated into distance calculation for classification. The main advantage of SCCFSH lies in the fact that it is capable of solving a classification problem with feature space heterogeneity in an incremental way, which is favorable for online classification tasks with continuously changing data. Experimental results on a series of data sets and application to a database marketing problem show the efficiency and effectiveness of the proposed approach.


Author(s):  
Richard Berendsen ◽  
Bogomil Kovachev ◽  
Edgar Meij ◽  
Maarten de Rijke ◽  
Wouter Weerkamp

Author(s):  
Kazuo ODA ◽  
Osamu UCHIDA ◽  
Mitsuteru SAKAMOTO ◽  
Takeshi DOIHARA ◽  
Ryosuke SHIBASAKI

Author(s):  
Shaodong Li ◽  
Zhijiang Du ◽  
Hongjian Yu ◽  
Jiafu Yi

In this paper, we propose an efficient Multi-Circle detector which follows the fixed search order. The method makes use of horizontal and vertical search to realize circle detection, which is named as HVCD. First, this method computes edge areas in a given image. The edge areas could be divided into some regions by means of region growing. Each of regions could be efficiently searched to achieve not only one-pixel wide edges but edge segments as well. Next, the candidate circles can be extracted from every edge segment. Finally, the circle candidates could be validated with the help of Helmholtz principle. Experimental results demonstrate that HVCD could effectively detect circles on synthetic and natural images on the one hand; on the other hand, HVCD here could solve the weakness in the process of circle Hough transform implementation and EDcircles implementation.


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