Title :
Selective Ensemble RSM for High Dimensional Steganographic Detection Based on FP-Tree
Author :
Tianshun Chen ; Shangping Zhong
Author_Institution :
Coll. of Math. & Comput. Sci., Fuzhou Univ., Fuzhou, China
Abstract :
Random subspace method (RSM), which randomly selects low dimensional feature subspace from the original high dimensional feature space to form new training subsets, is an effective ensemble learning method for high dimensional samples. However, RSM also has the drawbacks: Random selection of features does not guarantee that the selected inputs have the necessary discriminant information. If such is the case, poor classifiers are obtained that damage the ensemble. Thus, we put forward a selective ensemble RSM method Based on FP-Tree. The method obtains a refined transaction database and builds a FP-Tree to compact it, next, selects an ensemble size according to the FP-Tree. Since the proposed method only selects part of classifiers to ensemble which can eliminate the poor individual classifiers and obtain better ensemble results than using all the base classifiers. We utilize the proposed method to fight against the newly proposed HUGO steganographic algorithm. Experiment results show that our method has the overall best detection performance.
Keywords :
database management systems; learning (artificial intelligence); steganography; transaction processing; trees (mathematics); FP-tree; HUGO steganographic algorithm; ensemble RSM; ensemble learning method; ensemble size; high dimensional feature space; high dimensional steganographic detection; low dimensional feature subspace; random subspace method; training subsets; transaction database; Accuracy; Classification algorithms; Computer science; Conferences; Feature extraction; Training; Transform coding; FP-Tree; HUGO; RSM; selective ensemble; steganography detection;
Conference_Titel :
Intelligent Human-Machine Systems and Cybernetics (IHMSC), 2013 5th International Conference on
Conference_Location :
Hangzhou
Print_ISBN :
978-0-7695-5011-4
DOI :
10.1109/IHMSC.2013.127