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ファジー部分空間クラスタリングと異常値検出

     
 
Anomaly detection has several practical applications in different areas, including intrusion detection, image processing, and behavior analysis among others. Several approaches have been developed for this task such as detection by classification, nearest neighbor approach, and clustering. This paper proposes alternative clustering algorithms for the task of anomaly detection. By employing a weighted kernel extension of the least squares fitting of linear manifolds, we develop fuzzy clustering algorithms for kernel manifolds. Experimental results show that the proposed algorithms achieve promising performances compared to hard clustering techniques.
 
 

 

 
   
   
   
  Fig. 1 Normal class models. In this study, the normal class is modeled by a set of points. Classically, the anomalism of an input data point is examined with the distance to its projection onto the point set. Figure (a) describes a model that uses a single affine subspace. In (b), the normal class model is given by the union of two affine subspace. The classical distance to the set is the square Euclidean distance to the nearest subspace. In this study, we introduce the κ-distance that is the linear combination of the distances with weights κ1 and κ2,
as in (c) .
 
     
  References  
  Raissa Relator, Tsuyoshi Kato, Takuma Tomaru, Naoya Ohta, Fuzzy Multiple Subspace Fitting for Anomaly Detection, IEICE Transactions on Information & Systems, Vol.E97-D,No.10,pp.2730-2738.,Oct. 2014. [pdf][bibtex][日本語文献]  
     
     
     
 
[English]
 
学生の活躍
 
CNN初期化
トビット解析
符号制約学習
Top-k SVM
ウイルス検出
共分散記述子
マハラノビス符号化
顕微鏡画像解析
平均多項式カーネル
打ち切りデータのベイズ推定
計量学習
ファジー部分空間クラスタリング
リガンド予測
酵素活性部位探索
伝達学習によるリンク予測
多タスク学習
ラベル伝播法
マイクロアレイ用カーネル
薬剤耐性予測
ネットワーク推定
カーネル推定
変分剛体変換
その他