Marketing Information Systems: course syllabus Course code: PV250 Dalia Kriksciuniene, PhD Faculty of Informatics, Lasaris lab., ERCIM research program Autumn, 2013 About myself •Diploma of engineer mathematician (Kaunas University of Technology, Applied mathematics study program) •Phd degree: Doctor of social sciences. University of Management and Economics (ISM). Dissertation theme: „Substantiation of multidimensional marketing information system: concept and model“ •Pedagogical Certificate of Associated professor of informatics (docent) (Vilnius University) •Assoc.prof. of Vilnius University, Lithuania •Business career: director of bookstore, marketing and IS manager at travel agency, engineer programmer 2 •Every drop in the ocean counts [Yoko Ono] 3 Research themes •The research is oriented to application of artificial intelligence, computational methods for business data analysis in domains of financial markets, marketing and surveillance systems Description: fig3.tif Description: fig8.tif 4 Timetable •Part 1: Oct.7 Mon 16:00–19:50 B204 •Part 2: Oct.8 Tue 14:00--17:50 G331 •Part 3: Oct.29 Tue 14:00–17:50 G331 •Part 4: Oct.30 Wed 10:00–13:50 G331 •Part 5: Nov.26 Tue 14:00–17:50 G331 •Part 6: Nov.27 Wed 10:00–13:50 G331 •Assessment session: 1-2nd week of January 5 Course objectives •The module is aimed to: ∞provide advanced interdisciplinary knowledge ∞augment skills for creating enterprise information systems, ∞analyse needs for support of marketing management processes ∞integrate business analytics to marketing ∞enhance the performance of marketing management specialists by managing information 6 Course objectives •The teaching module: ∞introduces creation principles and variety of concepts used for building marketing information systems (MkIS), ∞provides knowledge of the functional components and structure of MkIS, ∞develops ability to distinguish and apply specific analytical computational methods ∞trains skills of computerization in marketing management, including marketing planning, modelling, control and customer relationship management domains. 7 Course objectives •The students will: ∞get acquainted and acquire practical skills of marketing processes by using ≈applied software for marketing operations ≈applied software for marketing decision-making, planning and control ≈market simulation games, ∞acquire knowledge and skills of marketing information management by using ≈intelligent computational tools ≈cloud-based applications ≈functional modules of the integrated systems, ∞apply methods of virtual team learning 8 Lecture 1 ∞Definitions, functions, requirements for the marketing information systems (MKIS). ∞The careers and users of marketing information, ∞The user’ requirements for the information content, inputs, retrieval and presentation. ∞marketing decision making environment, complexity of rules and variables involved • •Tools &software (demo): CESIM simulation solutions for multi-stage market modelling games •Lab work training: assignment for CESIM team simulation sessions • 9 Lecture 2 ∞Types and functions of marketing information systems ∞Management processes of the marketing manager. ∞Operational, analytical, OLAP, expert, executive, decision-support systems. ∞Applying ERP, business intelligence, integrated software for marketing tasks ∞Big Data issues in marketing • •Tools &software: Sugar CRM •Lab work training: assignment for cloud-based marketing application 10 Lecture 3 ∞Customer relationship systems in marketing: concepts and tasks. CRM operational and analytical methods. Social network analytics ∞Information supply for their performance analytics: ∞analytical and control applications: ∞pivot tools, ∞dashboards • •Tools &software: MS Excel pivot module, •Lab work training: variables., functions and models for analytics: CRM performance analysis by applying pivoting 11 Lecture 4 •Computational intelligence methods neural networks, fuzzy rules, Kohonen self organizing networks •Application and performance of computational analytics for marketing • Tools &software: Statistica advanced models, Viscovery SoMine trial •Lab work training: CRM performance analysis by applying computational intelligence methods: neural networks, fuzzy rules, Kohonen self organizing networks 12 Lecture 5 •Marketing planning system: MkIS structure •Marketing process modelling by using MKIS. •Marketing system models at the enterprise. •Investigation of the theoretical and experimental research in MkIS area in the scientific literature. • •Tools &software: Marketing plan Pro •Lab work training: Marketing planning procedures and their linking to the design of MkIS 13 Lecture 6 ∞Creating MIS in the enterprise ∞Interrelationships with other computerized systems inside and outside the enterprise. ∞Variety of concepts for structure and processes of the MIS models. ∞ERP application for marketing. • •Tools &software (demo): The marketing – oriented tools of MS Dynamic Axapta, IBM solutions for marketing 14 Total Mark •Lab training 1 : •CESIM team simulation sessions (results+report) (Nov.1) •Lab training 2 : •Sugar CRM assignment for cloud-based marketing application (task done) •Lab training 3 : •MS Excel pivot module (CRM data set prepared) •Lab training 4 : •CRM by applying computational intelligence methods: (Statistica softw) for analysis of the prepared data set) •Lab training 5: •Marketing plan + MkIS structure •Colloquium 15 Literature •Berry, M.,J.A., Linoff, G.S. (2011), "Data Mining Techniques: For Marketing, Sales, and Customer Relationship Management", (3rd ed.), Indianapolis: Wiley Publishing, Inc. •Wood, M., B. (2005). The marketing plan handbook (2nd edition). Upper Saddle River, New Jersey: Pearson Education Inc. (Marketing Plan Pro 6.0 software embedded) •Ball, D., A., McCulloch, W., H., Frantz, P., L., Geringer, J., M., Minor, M., S. (2006) International business. The challenge of global competition. 10th edition. McGraw-Hill/ Irwin •CESIM business modelling games (www.cesim.com) •Sugar CRM Implementation http://www.optimuscrm.com/index.php?lang=en •Statsoft: the creators of Statistica http://www.statsoft.com •Viscovery Somine http://www.viscovery.net/ •MS Axapta Dyn. http://www.microsoft.com/en-us/dynamics/erp-ax-overview.aspx •Online scientific databases accessed via library.muni.cz •Kotler, Ph. Marketing management (any edition) 16