A New Feature Selection Method to Extract Functional Structures from Multidimensional Symbolic Data
スポンサーリンク
概要
- 論文の詳細を見る
In this paper, we propose a feature selection method to extract functional structures embedded in multidimensional data. In our approach, we do not approximate functional structures directly. Instead, we focus on the seemingly trivial property that functional structures are geometrically thin in an informative subspace. Using this property, we can exclude irrelevant features to describe functional structures. As a result, we can use conventional identification methods, which use only informative features, to accurately identify functional structures. In this paper, we define Geometrical Thickness(GT)in the Cartesian System Model(CSM), a mathematical model that can manipulate symbolic data. Additionally, we define Total Geometrical Thickness(TGT)which expresses geometrical structures in data. Using TGT, we investigate a new feature selection method and show its capabilities by applying it to two sets of artificial and one set of real data.
- 社団法人電子情報通信学会の論文
- 1998-06-25
著者
-
Ono Yujiro
The Graduate School Of Science And Engineering Tokyo Denki University
-
Ichino Manabu
The College Of Science And Engineering Tokyo Denki University