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MODULE HANDBOOK

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Nguyễn Gia Hào

Academic year: 2023

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MODULE HANDBOOK Module name Nonparametric Statistics

Module level, if applicable Bachelor Code, if applicable SST-404 Subtitle, if applicable -

Courses, if applicable Nonparametric Statistics Semester(s) in which the

module is taught 4th (fourth) Person responsible for the

module Chair of lab. Business, Industry, Social Lecturer Prof. Akhmad Fauzy, M.Si., P.hD.

Dina Tri Utari, S.Si., M.Sc.

Language Bahasa Indonesia

Relation to curriculum Compulsory course in the second year (4th semester) Bachelor Degree Type of teaching, contact

hours 150 minutes lectures and 180 minutes structured activities per week.

Workload

Total workload is 130 hours per semester, which consists of 150 minutes lectures per week for 14 weeks, 180 minutes structured activities per week, 180 minutes individual study per week, in total is 16 weeks per semester, including mid exam and final exam.

Credit points 3

Requirements according to the examination regulations

Students have taken Nonparametric Statistics course (SST-404) and have an examination card where the course is stated on.

Recommended prerequisites Student have taken Statistics Method II course (SST-204)

Module objectives/intended learning outcomes

After completing this course, the students have ability to:

CO 1. explain the basic concepts of nonparametric statistics CO 2. apply nonparametric tests from case studies

CO 3. apply the goodness of fit test, correlation test, and regression analysis from case studies

Content

The basic concept of nonparametric statistics Nonparametric test for one sample

Nonparametric test for two or more dependent samples Nonparametric test for two or more independent samples Goodness of fit test

Correlation test Regression analysis

Study and examination requirements and forms of examination

The final mark will be weighted as follows:

No Assessment components

Assessment types Weight (percentage)

1 CO 1 Assignment, Midterm

Exam

20%

2 CO 2 Assignment 40%

3 CO 3 Assignment, Final

Exam

40%

Media employed White-board, Laptop, LCD Projector

Reading list

1. Conover, W. J., 1988, Practicum Non Parametrik Statistics, John Wiley and Sons Inc., New York

2. Daniel W. W., 1989, Statistik Non Parametrik Terapan (Terjemahan), Gramedia, Jakarta

3. Siegel, S., 1997, Statistik Nonparametrik untuk Ilmu-ilmu Sosial (Terjemahan), Gramedia, Jakarta

4. Mendenhall, W. and Sincich, T., 1984, Statistics for Engineering and Computer Sciences, Duxbury Press, New York

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Mapping CO, PLO, and ASIIN’s SSC

ASIIN PLO

E N T H U S I A S T I C

Knowledge

a CO1

b

c CO2

CO3 d

Ability e f

Competency g

h CO2

CO3 i

j

k CO2

CO3 l

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