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Statistics and Machine Learning (5 op)

Toteutuksen tunnus: 5M00FX80-3001

Toteutuksen perustiedot


Ilmoittautumisaika
07.06.2023 - 31.08.2023
Ilmoittautuminen toteutukselle on päättynyt.
Ajoitus
01.08.2023 - 31.12.2023
Toteutus on päättynyt.
Laajuus
5 op
Toteutustapa
Lähiopetus
Yksikkö
Matematiikka
Toimipiste
TAMK Pääkampus
Opetuskielet
englanti
Koulutus
Bachelor's Degree Programme in Textile and Material Engineering
Opettajat
Miika Huikkola
Vastuuhenkilö
Miika Huikkola
Ryhmät
22TEMA
Textile and Material Engineering
Opintojakso
5M00FX80

Osaamistavoitteet (Opintojakso)

After completing this course, the student
-can compute and understands basic statistical measures
-is able to use basic statistical methods
-is able to conduct hypothesis testing
-knows the basic principles of machine learning
-knows the concepts of regression, clustering and classification
-knows the concepts of supervised and unsupervised learning
-is able to utilize statistical methods in technical problem solving

Sisältö (Opintojakso)

Statistical charts and numbers, probability, regression and correlation, hypothesis testing.
Basic concepts of machine learning

Esitietovaatimukset (Opintojakso)

Student needs to have basic skills in using Microsoft Excel or some other similar kind of software.

Arviointikriteerit, tyydyttävä (1-2) (Opintojakso)

Student understands and is able to name and define the basic concepts of statistics and machine learning.
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.

Arviointikriteerit, hyvä (3-4) (Opintojakso)

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 constructively, 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.

Arviointikriteerit, kiitettävä (5) (Opintojakso)

Student is able to understand extensive entities and relation between them. Student is able to generalize, 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.

Aika ja paikka

Periods 1 & 2, on Thursdays between 14-17

Tenttien ja uusintatenttien ajankohdat

3 exams during the course. Scheduling to be informed in Moodle.

Arviointimenetelmät ja arvioinnin perusteet

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

Arviointiasteikko

0-5

Opiskelumuodot ja opetusmenetelmät

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

Oppimateriaalit

Provided in Moodle

Opiskelijan ajankäyttö ja kuormitus

Lessons ca 30h
Exams ca 10 h
Group studying ca 45 h
Independent studying ca 50 h

Sisällön jaksotus

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

Period 2
-Principles of machine learning
-Regression, clustering and classification
-Supervised and unsupervised learning

Toteutuksen valinnaiset suoritustavat

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

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