2012/2013 KAN-CMIT_VAIM Artificial Intelligence in the Marketplace
English Title | |
Artificial Intelligence in the Marketplace |
Course information |
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Language | English |
Exam ECTS | 7.5 ECTS |
Type | Elective |
Level | Full Degree Master |
Duration | One Semester |
Course period | Autumn
Changes in course schedule may occur Tuesday 08.00-09.40, week 36-41, 43-48 |
Time Table | Please see course schedule at e-Campus |
Study board |
Study Board for BSc/MSc in Business Administration and
Information Systems, MSc
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Course coordinator | |
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Administrative contact person is Bodil Sponholtz, ITM, bsp.itm@cbs.dk | |
Main Category of the Course | |
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Last updated on 27-04-2012 |
Learning objectives | |||||||||||||||||
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Examination | |||||||||||||||||
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Course content | |||||||||||||||||
This course examines new Artificial
Intelligence technologies that are rapidly transforming the digital
marketplace. One highly publicized example is Watson,
IBM’s intelligent question-answering system that recently won the
game show Jeopardy!. Another high-profile example is
Google Translate, which now translates more text than all the
world’s human translators. A few short years ago Artificial
Intelligence technology was primarily relegated to the realm of
fantasy and science fiction – now it is driving new businesses and
technologies in a wide range of areas, such as e-discovery,
sentiment analysis, topic tracking, and summarization. We will see
that the sudden emergence of successful AI systems involves two key
factors: the application of massive computing power, and leveraging
the wisdom of crowds.
Facebook, Twitter and similar services are generating an enormous amount of data, covering every imaginable topic in thousands of different languages and styles. Artificial Intelligence is the key that can unlock the information in these massive unstructured collections of data. Students will get hands-on experience with newly developed tools for doing this. We will look at how AI technology is central to the strategy of Google, Microsoft, Facebook and Apple – and we will look at speculation about how these developments may well accelerate in the near future. |
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Teaching methods | |||||||||||||||||
The class combines lectures, discussions and group work. Students will apply the course material in group presentations, and will get hands-on experience in the development, deployment and assessment of computational tools. | |||||||||||||||||
Expected literature | |||||||||||||||||
Anderson (2004). The Long tail,
Wired, No. 10 (6 pages)
Asur and Huberman, 2010. Predicting the Future with Social Media. CoRR (10 pages) Bollen et al. 2011. Twitter mood predicts the stock market, Journal of Computational Science, 2(1), March 2011, Pages 1-8 Grossman, L (2011)2045: The Year Man Becomes Immortal. Time Magazine. Feb. 10, 2011. Halavy et al. (2009) The Unreasonable Effectiveness of Data. Intelligent Systems 24(2) Huberman et al. (2009) Crowdsourcing, Attention and Productivity, Journal of Information Science. Joy, Bill (April 2000), Why the future doesn’t need us. Wired Magazine (Viking Adult) (8.04), ISBN 0670032492, retrieved 2007-08-07 O’Reilly and Battelle (2009) Web Squared: Web 2.0 Five Years On. www.web2summit.com Pang and Lee (2008) Opinion Mining and Sentiment Analysis. Foundations and Trends in Information Retrieval 2. Roush (2011) Inside Google’s Age of Augmented Humanity. Xconomy.com Saunter.T. (2009) Assessing an Augmented Future. Digital Cortex |