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June 2015 The Hong Kong Polytechnic University Hong Kong Community College Subject Description Form Subject Code CCN1039 Subject Title Information Processing and Quantitative Methods Level 1 Credit Value 3 Medium of Instruction English Pre-requisite / Co-requisite/ Exclusion Exclusion CCN1008 Mathematics and Statistics for College Students CCN1028 Elementary Statistics Objectives This subject equips students with basic concepts on some quantitative methods and information processing skills. It emphasises the application of information processing skills and quantitative techniques to solve practical real-life problems. Intended Learning Outcomes Upon completion of the subject, students will be able to: (a) understand the mechanism of information processing. (b) acquire the skills needed to manipulate different kinds of data using computers. (c) understand some basic quantitative knowledge and skills. (d) tackle practical quantitative knowledge related problems with the help of computers effectively and efficiently. (e) demonstrate the abilities of logical and analytical thinking. Subject Synopsis/ Indicative Syllabus Computer Basics Basic concepts of computers; Computer hardware; Computer software; Computer networks; Popular Internet or mobile applications. Information Processing Skills Spreadsheet and its uses; Database and its uses; Presentation software and its uses; Data manipulation and presentation techniques. Nature of Statistics Descriptive and inferential statistics; Types of data; Data collection methods; Sampling techniques. Descriptive Statistics Data organisation; Frequency analysis; Graphical representation; Central tendency; Variability; Position; Use of descriptive statistics for data 1 June 2015 organisation. Normal Distributions Properties of normal distribution; Standard normal distribution; Sampling distribution of sample mean; Central limit theorem; Use of normal distributions. Decision Analysis Probability; Decision making under certainty/risk/uncertainty; Decision tables; Decision trees. Teaching/Learning Methodology Both quantitative methods and the basic concepts on computing will be the emphasis of lectures. In addition, students will acquire the necessary information processing skills to tackle the quantitative knowledge related problems in daily life. Group discussions and activities may be arranged to stimulate students’ interest or their awareness of practical implications of some concepts taught. Individual hands-on lab exercises will facilitate students’ IT learning and enhance their logical and analytical thinking abilities. Assessment Methods in Alignment with Intended Learning Outcomes A variety of assessment tools will be used to develop and assess students’ achievement of the subject intended learning outcomes. Specific assessment methods/tasks % weighting Intended subject learning outcomes to be assessed a b c d e 9 9 9 9 9 9 9 Continuous Assessment* 50 Test 25 Individual Assignment 10 In-class Assignments 15 9 9 9 9 9 Final Examination 50 9 9 9 9 9 Total 100 *Continuous assessment items and/or weighting may be adjusted by the subject team subject to the approval of the College Programme Committee. To pass this subject, students are required to obtain Grade D or above in both the Continuous Assessment and Final Examination. Student Study Effort Expected Class contact Hours Lecture 26 Tutorial 13 Other student study effort Self-study 52 2 June 2015 Reading List and References Coursework 40 Total student study effort 131 Recommended Textbook Shelly, G. B. & Vermaat, M. E. (2010) Discovering computers 2011: Brief. (1st ed.), Course Technology. Bluman, A, G. (2012) Elementary Statistics: A step by Step Approach A Brief Version. (6th ed.), McGraw-Hill. References Triola, M. F. (2009) Elementary statistics using Excel. (4th ed.), Addison Wesley. Dretzke, B. (2008) Statistics with Microsoft Excel. (4th ed.), Prentice Hall. Harnett, D. L. & Horrell, J. F. (1998) Data, statistics, and decision models with Excel. Wiley. 3