資訊管理學報

謝楠楨;魏立民;
頁: 225-244
日期: 2008/04
摘要: 在真實世界處理決策問題時,由於輸入資料本身即存在有不確定性,所以要做出明確的決策具有相當的困難。以模糊集合與概略集合理論為基礎,本研究提出了一個“概略-模糊混合的方法”,以從具有量化數據的診斷資料集合中,自動的產生模糊IF-THEN規則。所提出的方法包含有四個階段:輸入資料前處理使資料能呈現模糊口語化的語意、以概略集合理論找出顯著的“屬性縮減”、以資料彙總技術產生候選的IF-THEN規則、以及以真實值評估IF-THEN規則的有效性。本研究主要的貢獻,在於提出的方法所產生之IF-THEN規則具有口語化語意呈現的能力、能於診斷資料集合中找出精簡的模糊IF-THEN規則,以及具有不確定資料容忍的能力。
關鍵字: 由資料庫中發掘知識;模糊IF-THEN規則;軟式計算;模糊集合;概略集合;

應用軟式計算技術擷取具模糊口語化語意之規則


Abstract: Decisions for real-world problems are not always made precisely since the input data are themselves imprecise. This study presents a rough-fuzzy hybridization method to generate fuzzy if-then rules automatically from a diagnosis dataset with quantitative data values, based on fuzzy set and rough set theory. The proposed method consists of four stages: preprocessing inputs with fuzzy linguistic representation; rough set theory in finding notable reducts; candidate fuzzy if-then rules generation by data summarization, and truth evaluation the effectiveness of fuzzy if-then rules. The main contributions of the proposed method are the capability of fuzzy linguistic representation of the if-then rules, finding concise fuzzy if-then rules from diagnosis dataset, and tolerance of imprecise data.
Keywords: Knowledge discovery in databases;fuzzy if-then rules;soft computing;fuzzy sets;rough sets;

瀏覽次數: 13834     下載次數: 3946

引用     導入Endnote