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Statistics

For more details on the courses, please refer to the Course Catalog

교육과정
Code Course Title Credit Learning Time Division Degree Grade Note Language Availability
BUS2007 Investments 3 6 Major Bachelor 1-4 Business Administration Korean,English Yes
This course is designed to provide the students with an understanding of our financial markets, financial instruments, basic valuation principles and systematic investment management. Topics include operations of financial markets, analysis of financial instruments, such as stocks, bonds, options and futures, various model of the capital asset prices, and investment strategies.
CHS7003 Artificial Intelligence Application 3 6 Major Bachelor/Master/Doctor Challenge Semester - No
Cs231n, an open course at Stanford University, is one of the most popular open courses on image recognition and deep learning. This class uses the MOOC content which is cs231n of Stanford University with a flipped class way.  This class requires basic undergraduate knowledge of mathematics (linear algebra, calculus, probability/statistics) and basic Python-based coding skills. The specific progress and activities of the class are as follows. 1) Listening to On-line Lectures (led by learners) 2) On-line lecture (English) Organize individual notes about what you listen to 3) On-line lecture (English) QnA discussion about what was listened to (learned by the learner) 4) QnA-based Instructor-led Off-line Lecture (Korean) Lecturer 5) Team Supplementary Presentation (Learner-led)   For each topic, learn using the above mentioned steps from 1) to 5). The grades are absolute based on each activity, assignment, midterm exam and final project.   Class contents are as follows. - Introduction Image Classification Loss Function & Optimization (Assignment # 1) - Introduction to Neural Networks - Convolutional Neural Networks (Assignment # 2) - Training Neural Networks - Deep Learning Hardware and Software - CNN Architectures-Recurrent Neural Networks (Assignment # 3) - Detection and Segmentation - Generative Models - Visualizing and Understanding - Deep Reinforcement Learning - Final Project.   This class will cover the deep learning method related to image recognitio
CHS7003 Artificial Intelligence Application 3 6 Major Bachelor/Master/Doctor Challenge Semester - No
Cs231n, an open course at Stanford University, is one of the most popular open courses on image recognition and deep learning. This class uses the MOOC content which is cs231n of Stanford University with a flipped class way.  This class requires basic undergraduate knowledge of mathematics (linear algebra, calculus, probability/statistics) and basic Python-based coding skills. The specific progress and activities of the class are as follows. 1) Listening to On-line Lectures (led by learners) 2) On-line lecture (English) Organize individual notes about what you listen to 3) On-line lecture (English) QnA discussion about what was listened to (learned by the learner) 4) QnA-based Instructor-led Off-line Lecture (Korean) Lecturer 5) Team Supplementary Presentation (Learner-led)   For each topic, learn using the above mentioned steps from 1) to 5). The grades are absolute based on each activity, assignment, midterm exam and final project.   Class contents are as follows. - Introduction Image Classification Loss Function & Optimization (Assignment # 1) - Introduction to Neural Networks - Convolutional Neural Networks (Assignment # 2) - Training Neural Networks - Deep Learning Hardware and Software - CNN Architectures-Recurrent Neural Networks (Assignment # 3) - Detection and Segmentation - Generative Models - Visualizing and Understanding - Deep Reinforcement Learning - Final Project.   This class will cover the deep learning method related to image recognitio
COV7001 Academic Writing and Research Ethics 1 1 2 Major Master/Doctor SKKU Institute for Convergence Korean Yes
1) Learn the basic structure of academic paper writing, and obtain the ability to compose academic paper writing. 2) Learn the skills to express scientific data in English and to be able to sumit research paper in the international journals. 3) Learn research ethics in conducting science and writing academic papers.
ECO3031 Financial Econometrics 3 6 Major Bachelor 3-4 Economics Korean Yes
This course introduces basic concepts and techniques for financial time series analysis. This course introduces major econometric models used for financial time series and the inferential procedures for these models. The econometric models that will be discussed are linear regression, autoregressive moving average (ARMA), autoregressive conditional heteroskedasticity (ARCH) and vector autoregressive (VAR) models, and stochastic volatility models. Asset price preditability and major asset pricing theories like capital asset pricing model and arbitrage pricing theory will be covered from an empirical viewpoint.
ERP4001 Creative Group Study 3 6 Major Bachelor/Master - No
This course cultivates and supports research partnerships between our undergraduates and faculty. It offers the chance to work on cutting edge research—whether you join established research projects or pursue your own ideas. Undergraduates participate in each phase of standard research activity: developing research plans, writing proposals, conducting research, analyzing data and presenting research results in oral and written form. Projects can last for an entire semester, and many continue for a year or more. SKKU students use their CGS(Creative Group Study) experiences to become familiar with the faculty, learn about potential majors, and investigate areas of interest. They gain practical skills and knowledge they eventually apply to careers after graduation or as graduate students.
FIT5003 Financial Statistics 3 6 Major Master/Doctor FinTech Korean Yes
This course covers an introductory level of probability and statistical analysis for graduate students who major in finance. We emphasize topics of probability and statistical theories that students will encounter in graduate finance and econometric courses. Topics include probability theory, sampling, statistical estimation, and hypothesis testing.
FIT5005 AI & Wealth Management 3 6 Major Master/Doctor FinTech - No
This is a course in AI & Wealth Management for FinTech Master or Ph.D. program.This is a course in AI & Wealth Management for FinTech Master or Ph.D. program.This is a course in AI & Wealth Management for FinTech Master or Ph.D. program.This is a course in AI & Wealth Management for FinTech Master or Ph.D. program.This is a course in AI & Wealth Management for FinTech Master or Ph.D. program.This is a course in AI & Wealth Management for FinTech Master or Ph.D. program.This is a course in AI & Wealth Management for FinTech Master or Ph.D. program.
FIT5006 Blockchain & Financial Application 3 6 Major Master/Doctor FinTech Korean Yes
This is a course in Blockchain & Financial Application for FinTech Master or Ph.D. program.This is a course in Blockchain & Financial Application for FinTech Master or Ph.D. program.This is a course in Blockchain & Financial Application for FinTech Master or Ph.D. program.This is a course in Blockchain & Financial Application for FinTech Master or Ph.D. program.
ISS3222 Introduction to Machine Learning 3 6 Major Bachelor - No
Covers fundamental concepts for intelligent systems that autonomously learn to perform a task and improve with experience, including problem formulations (e.g., selecting input features and outputs) and learning frameworks (e.g., supervised vs. unsupervised), standard models, methods, computational tools, algorithms and modern techniques, as well as methodologies to evaluate learning ability and to automatically select optimal models. Applications to areas such as computer vision (e.g., characte r and digit recognition), natural language processing (e.g., spam filtering) and robotics (e.g., navigating complex environments) will motivate the coursework and material.
ISS3224 Data Visualization 3 6 Major Bachelor - No
This course explores the field of data visualization. Topics cover the expanse of visualization from data preparation and cleaning to visualization types such as time series, box plots, and violin plots. Included in our study are visualization tools, online interactive visualizations, and other issues related to the display of big data.
ISS3233 Statistics in Python 3 6 Major Bachelor 1-4 - No
This course will cover elementary topics in statistics using Python. The statistics topics include principles of sampling, descriptive statistics, binomial and normal distributions, sampling distributions, point and confidence interval estimation, hypothesis testing, two sample inference, linear regression, and categorical data analysis. Using Python, students will learn basic knowledge in Python programming, data management, data formats and types, statistical graphics and exploratory data analysis, and basic functions for statistical modeling and inference.
ISS3290 Introduction to Big Data Analysis 3 6 Major Bachelor - No
Understand the genesis of Big Data Systems • Understand practical knowledge of Big Data Analysis using Hive, Pig, Sqoop • Provide the student with a detailed understanding of effective behavioral and technical techniques in Cloud Computing on Big Data • Demonstrate knowledge of Big Data in industry and its Architecture • Learn data analysis, modeling and visualization in Big Data systems
MAE2007 Analysis I 3 6 Major Bachelor 2-3 Mathematics Education Korean Yes
The main contents are real and complex number systems, limits of sequences and functions, continuity and differentiability of functions, Riemann integrability of functions.
MAE2008 Analysis Ⅱ 3 6 Major Bachelor 2-3 Mathematics Education Korean Yes
The main contents of this course are sequences and series of functions, uniform convergence, differnetiation and integration of functions of several variabels, implicit function theorem, inverse function theorem, metric spaces.