當期課號 |
2344 |
Course Number |
2344 |
授課教師 |
林正堅 |
Instructor |
LIN,CHENG JIAN |
中文課名 |
軟體計算概論 |
Course Name |
Introduction to Software Computing |
開課單位 |
資訊工程系(四日)四A |
Department |
|
修習別 |
選修 |
Required/Elective |
Elective |
學分數 |
3 |
Credits |
3 |
課程目標 |
這門課的目標是提供學生有關軟式計算的基礎,課程主題包含圖形辨識方法、貝氏理論、神經元與適應性線性過濾器、多重階層神經元與後傳遞學習、遞迴式網路與最佳化、支援向量機。在完成這門課之後,學生將可以學習到下面幾點:1.運用監督式學習在圖形辨識上;2.使用軟式計算的方法來解決問題;3.開發有關圖形分類、資訊搜尋與擷取以及資料分析或認證的應用程式 |
Objectives |
The goal of this course is to provide the students with a basic knowledge of soft computing. The main topics include subspace method of pattern recognition, Bayes' theorem, statistical pattern recognition, perceptron and adaptive linear filters, multilayered perceptrons (MLPs) and back propagation (BP) learning, recurrent networks and optimization, and support vector machines (SVM). The students will realize the following concepts after finishing this course: 1. put on pattern recognition by supervised learning; 2. solve problems by using soft computing methods; 3. develop applications of pattern classification, information search and retrieval, data analysis and authentication. |
教材 |
Text Book: Neuro-Fuzzy and Soft Computing Author:J.-S. R. Jang, C. T. Sun, and E. Mizutani Person Education Taiwan Ltd.(全華圖書代理) |
Teaching Materials |
Text Book: Neuro-Fuzzy and Soft Computing Author:J.-S. R. Jang, C. T. Sun, and E. Mizutani Person Education Taiwan Ltd.(全華圖書代理) |
成績評量方式 |
期中考: 40% 作業: 30% 專題 (simulation, presentation, and report) : 30 % |
Grading |
Midterm: 40% Homework: 30% Project (simulation, presentation, and report) : 30 % |
教師網頁 |
|
教學內容 |
軟式計算簡介 模糊集合理論 回歸及最佳化 類神經網路 類神經模糊模型 進階類神經模糊模型 基因演算法 應用 |
Syllabus |
Introduction to Soft Computing Fuzzy Set Theory Regression and Optimization Neural Networks Neuro-Fuzzy Modeling Advanced Neuro-Fuzzy Modeling Genetic Algorithm Applications |