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SYLLABUS COURSE TITLE FACULTY/INSTITUTE COURSE CODE DEGREE PROGRAMME FIELD OF STUDY Basic statistics Faculty of Biology and Agriculture Department of Regional Politics and Food Economy DEGREE LEVEL FORMA MODE STUDIÓW/STUDY Food Technology and Human I Stationary Nutrition Technology COURSE FORMAT Primary course YEAR AND SEMESTER I summer semester (I) NAME OF THE TEACHER Marcin Halicki, PhD in Economics COURSE OBJECTIVES Students are acquainted with: the purpose of statistics, Simple Descriptive Statistics, basic probability relations, Standard Deviation and Weighted Standard Deviation, The Sampling Distribution and Standard Deviation of the Mean, P-Value and Chi-Squared Test. PREREQUISITES Basic mathematics The student after completion of the course: LEARNING OUTCOMES KNOWLEDGE: EK_1 – lists measures of central tendency EK_2 – characterizes the normal distribution SKILLS: EK_3 – is able to Interpreting the Standard Error of the Mean EK_4 – uses in the practice t- Distribution FINAL COURSE OUTPUT - SOCIAL COMPETENCES EK_5 understands the need and opportunities for continuous training EK_6 – is able to interact and work in a group, taking different roles COURSE ORGANISATION –LEARNING FORMAT AND NUMBER OF HOURS Lecture – 15 hours Exercise– 15 hours COURSE DESCRIPTION Substantive content - lecture Measurement Some Simple Descriptive Statistics Contingency Tables and Tests of Association Correlation and Regression Total hours Substantive kontent - exercise Measures of Central Tendency The Normal Distribution The Standard Error of a Mean Correlation and Regression P-Value and Chi-Squared Test Total hours Hours 2 7 3 3 15 3 3 2 4 3 15 lecture and multimedia presentation; discussion; auditorium exercise; REQUIREMENTS AND Final degree is based on test with open questions (The course ASSESSMENTS is to pass with a note) GRADING SYSTEM Learning Grading system outcomes EK_1, test with open questions EK_2 EK_3 exercise EK_4 test with open questions, exercise EK_5 long observation EK_6 long observation TOTAL STUDENT WORKLOAD Activity Hours NEEDED TO ACHIEVE Lecture 15 EXPECTED LEARNING Exercise 15 OUTCOMES EXPRESSED Prepare to exercise 40 IN TIME AND ECTS CREDIT Participation in the consultation 8 POINTS Prepare to test 35 Participation In the test 2 total hours / ECTS amount 115/5 total hours / ECTS in the framing of 75/3 lessons with demanding attendance of teachers and students total hours / ECTS in the framing of lessons with practical character LANGUAGE OF INSTRUCTION English INTERNSHIP METHODS OF INSTRUCTION MATERIALS PRIMARY OR REQUIRED BOOKS/READINGS: E. Maxwell, “Basic Statistics for medical and social science students”, University of London, 1978 Woolf P., Keating A., Burge C., and Michael Y.. "Statistics and Probability Primer for Computational Biologists". Massachusetts Institute of Technology, Spring 2004 Smith W., Gonic L. "Cartoon Guide to Statistics". Harper Perennial, 1993 SUPPLEMENTAL OR OPTIONAL BOOKS/READINGS: Bohm G., Zech G., „Introduction to Statistics and Data Analysis for Physicists” Verlag Deutsches ElektronenSynchrotron, 2010