金融資料分析1 Financial Data Analysis 1
อาจารย์: 鄭博耕
2026/05/01~2026/07/31
3ชั่วโมง/6สัปดาห์ (สิ้นสุดการลงทะเบียน)

บทคัดย่อ

本課程首先介紹時間序列數據的基本概念,接著深入講解常見的時間序列模型,包括ARIMA模型、GARCH模型以及VAR模型。在進階內容中,課程將講授非線性時間序列模型、高頻資料分析、連續時間隨機模型、VaRPCA等。

This course begins with an introduction to the fundamental concepts of time series data, followed by an in-depth discussion of common time series models, including the ARIMA model, GARCH model, and VAR model. In the advanced sections, the course will cover nonlinear time series models, high-frequency data analysis,continuous-time stochastic models, Value at Risk (VaR), and Principal Component Analysis (PCA), and so on.


你也可以選修【金融資料分析2

You can also take [Financial Data Analysis 2].


#EMI全英授課 English-Medium Instruction

จุดมุ่งหมายรายวิชา

本課程的教學目標是培養學生對時間序列數據的深入理解與分析能力,使其能夠識別時間序列數據的特性,選擇適當的方法進行處理,並構建模型以解釋數據行為和進行未來預測。

The objective of this course is to cultivate students' in-depth understanding and analytical skills for time series data, enabling them to identify the characteristics of time series data, select appropriate methods for processing, and construct models to interpret data behavior and make future predictions.

ข้อมูลผู้สอน

 



鄭博耕 Po-Keng Cheng

Po–Keng Cheng holds a PhD in Applied Mathematics and Statistics from SUNY-Stony Brook University, U.S.A., a MA in Economics from Northeastern University, U.S.A., and a BA in Economics from National Central University, Taiwan. He has been working on research of interactive agentbased models investigating traders’behaviors and their trading strategies in financial markets. He currently also involves in studies related to probability, dynamical systems, and game theory.

 

ตารางเรียน

單元 1:1 Financial Data and Their Properties

單元 2:2 Background for Linear Time Series

單元 3:3 Simple Autoregressive Models

單元 4:4 Simple Moving Average Models

單元 5:5 Simple ARMA Models

單元 6:6 Unit-Root Nonstationarity

เนื้อหารายวิชา

本課程共計6週,每週將提供視頻影片,課程架構詳見「課程進度表」

This course consists of 6 weeks. Video lessons will be provided each week. Please refer to the "Course Schedule" for the course structure.

ระดับคะแนนในรายวิชา

觀看影片:佔總成績100 %

Watching videos:100% of the total grade.


ผลการเรียนที่ผ่านเกณฑ์


Course Passing Grade:95Grade Memo:max grade 100 point

รายวิชาหรือทักษะที่มีก่อนเรียน

本課程無須背景知識,適合所有對金融資料分析有興趣的學習者修習。

This course does not require any prior knowledge and is suitable for anyone interested in financial data analysis.

รายการหนังสือแนะนำ

Tsay, R. S. (2013). An introduction to analysis of financial data with R. John Wiley & Sons.

Chan, K. S., & Cryer, J. D. (2008). Time series analysis with applications in R. Springer publication.

Tsay, R. S. (2010). Analysis of financial time series (3rd). John Wiley & Sons.

Hamilton, J. D. (2020). Time series analysis. Princeton University Press.


ข้อมูลใบรับรอง

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