Skip to main content

Statistics (3 cr)

Code: 5N00EK29-3004

General information


Enrolment period

02.07.2023 - 31.07.2023

Timing

01.08.2023 - 22.10.2023

Credits

3 op

Mode of delivery

Contact teaching

Unit

Mathematics

Campus

TAMK Main Campus

Teaching languages

  • English

Degree programmes

  • Bachelor's Degree Programme in Environmental Engineering
  • Open University of Applied Sciences

Teachers

  • Miika Huikkola

Person in charge

Miika Huikkola

Groups

  • 22IENVE
    Degree Programme in Environmental Engineering

Objectives (course unit)

After completing this course students are able to use the basic statistical methods (calculate statistical values, use graphs in describing scientific phenomena, test hypothesis) in data analysis.

Content (course unit)

Statistical charts and numbers, probability, regression and correlation, hypothesis testing.

Prerequisites (course unit)

Student needs to have basic skills in using Microsoft Excel or some other similar kind of software. Student should also have completed Functions and Matrices and Integral Calculus courses or courses that cover the contents fo the two aforementioned courses before taking this course.

Assessment criteria, satisfactory (1-2) (course unit)

Student understands and is able to name and define the basic concepts.

Student manages the assigned tasks under supervision and knows different ways to conduct the statistical analyses, but cannot justify his/her choices. Student's way to use the statistical analyses is based on routine and pre-learned performance.

Student can give and receive feedback, and is able to consider and assess things from his/her viewpoint. Student takes responsibility for his/her own work.

Assessment criteria, good (3-4) (course unit)

Student is able to structure relations between the basic concepts and is able to apply, explain and compare different statistical methods.

Student can select the most appropriate course of action from diverse options and justify his/her choice. Student is able to apply the advanced concepts when solving technical problems.

Student can give and receive feedback actively and contructively, and considers and assesses things both from his/her and the close community's viewpoint. Student can cooperate responsibly and is ready to develop his/her interaction skills.

Assessment criteria, excellent (5) (course unit)

Student is able to understand extensive entities and relation between them. Student is able to generalise, analyse and related the advanced problems to the professional context.

Student can search for diverse courses of action and solution alternatives, justify his/her choices and try new courses of action. Student assesses diverse solution alternatives creatively. Student has skills to present and justify the chosen methods when solving problems in a logical way.

Student uses feedback systematically as a professional growth tool in his/her own work and the community. Student can cooperate responsibly, flexibly and constructively and works in a committed manner.

Location and time

Period 1, on Thursdays between 14-17 in B2-35

Exam schedules

Exam and retake scheduling to be informed in Moodle.

Assessment methods and criteria

Course grading is based on the following evaluation areas
Course activity (30%)
Returned assignments (30%)
Exams (40%)

Grade thresholds are determined from the points collected from the evaluation areas as a relative percentage of course max points (50p) as follows:
35%: 1
50%: 2
65%: 3
80%: 4
90%: 5

Assessment scale

0-5

Teaching methods

Chosen from the following based on teacher's pedagogical evaluation: Contact teaching, Remote teaching, Independent learning, Lesson excercises, Homework, Problem-based learning, Collaborative learninng, Group work, Excercise assignments, Question-based teaching, Question-based learning, PC-excercises, Exams

Learning materials

Provided in Moodle

Student workload

Lessons ca 20h
Exams ca 10 h
Group studying ca 25 h
Independent studying ca 30 h

Content scheduling

This course implementation is held in connection of course 5M00FX80-3001 Statistics and Machine Learning

Period 1
-Use of software in statistics
-Basic statistical measures & methods
-Hypothesis testing

Period 2
-Retake exams

Completion alternatives

To be negotiated with teacher. Teacher is not obliged to grant an alternative way of execution