Course KRR: Rozdiel medzi revíziami

(Archived year 2011/2012)
(Basic structure, course outline, scales and grading ...)
Riadok 2: Riadok 2:
  
 
*Lectures: Martin Baláž, Martin Homola
 
*Lectures: Martin Baláž, Martin Homola
*Labs: Jozef Frtús
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*Labs: Alexander Šimko
  
*Labs info: https://www.dai.fmph.uniba.sk/~frtus/kri/
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*Evaluation: (your current points, link TBA) <!-- [https://docs.google.com/spreadsheet/ccc?key=0AnoXnHbSHpPudHFJemVVWWpXaWw1bmN4VExxVjZtNWc Google Doc] -->
*Evaluation: [https://docs.google.com/spreadsheet/ccc?key=0AnoXnHbSHpPudHFJemVVWWpXaWw1bmN4VExxVjZtNWc Google Doc]
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== Course outline ==
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* From databases to KR&amp;R
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* From deduction to hypothetical reasoning
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* Preferences
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* Knowledge revision
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* Induction
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* Abduction
  
 
==Literature==
 
==Literature==
Riadok 15: Riadok 23:
 
Evaluation points:
 
Evaluation points:
  
*Midterm: 15
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*Midterm: 10
*Exam: 40
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*Exam: 30 (min 10)
*Project: 30
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*Project: 25 (min 10)
*Labs: 10
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*Labs: 10 (min 3)
*TOTAL: 95
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*TOTAL: 75
*BONUS: 10
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Evaluation scale:
 
Evaluation scale:
  
* 84 and more: A
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* 67 and more: A
* 75 and more: B
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* 59 and more: B
* 66 and more: C
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* 52 and more: C
* 57 and more: D
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* 45 and more: D
* 48 and more: E
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* 39 and more: E
  
 
== Project ==
 
== Project ==
  
The task of the project is to propose and describe a scenario for an application
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TBA
of ambient intelligence based on knowledge representation formalisms and reasoning. Project will be submitted in three phases, each has separate deadline:
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* Phase 1 - scenario description: 23 March
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* Phase 2 - initial formalization: 27 April
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* Phase 3 - final formalization: <strike>25 May</strike> 25 June (or the day your examination period ends for the finishing students)
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Please upload your outputs for each phase here: http://wiki.matfyz.sk/KRR2012_Projekty
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IMPORTANT: Basic information about Ambient Intelligence and three demo scenarios are described in: [[http://ii.fmph.uniba.sk/~sefranek/kri/bikakis-dke09.pdf Distributed Defeasible Reasoning in Ambient Intelligence]] by Bikakis et al.
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An example of a successful project by Michal Antonič: http://ii.fmph.uniba.sk/~sefranek/kri/antonic_rzai_projekt.pdf
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=== Project Evaluation ===
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== Lecture Slides ==
  
'''Phase 1 Scenario:'''
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TBA
* description of an intelligent application/device together with the situation (background) in which it will be used     
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* purpose of the application device: what problem it will solve, or what task it will fulfill
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* informal example of how the problem/task will be solved, showing how reasoning will be used                                                 
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'''Phases 2 and 3:'''
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* specification of the formalism that will be used
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* list of symbols with intuitive description of their meanings (i.e., what values they represent in the scenario)
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* formalization of the knowledge base: facts, rules, logic programs, etc. that will be needed to solve the problem, achieve the intelligent behavior described in the scenario
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* problem solution: formal solution of the problem using reasoning with your knowledge base in the selected formalism
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Hints:
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== Labs ==
* link the described formal knowledge base and solution with the respective part of the scenario in where this is informally described
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* the formalization can address a suitable part of the informal scenario only, and the informal scenario can be modified if needed, but this must be explained in your document
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* for Phase 2 the main part of the score is for formalization of the knowledge base, while in Phase 3 it is for the formal solution of the problem
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TBA
  
 
<!-- Archived 2011/2012
 
<!-- Archived 2011/2012

Verzia zo dňa a času 16:52, 19. február 2013

Knowledge Representation and Reasoning (course homepage)

  • Lectures: Martin Baláž, Martin Homola
  • Labs: Alexander Šimko
  • Evaluation: (your current points, link TBA)

Course outline

  • From databases to KR&R
  • From deduction to hypothetical reasoning
  • Preferences
  • Knowledge revision
  • Induction
  • Abduction

Literature

  1. Šefránek, J. (2000). Inteligencia ako výpočet (p. 430). IRIS.

Evaluation

Evaluation points:

  • Midterm: 10
  • Exam: 30 (min 10)
  • Project: 25 (min 10)
  • Labs: 10 (min 3)
  • TOTAL: 75

Evaluation scale:

  • 67 and more: A
  • 59 and more: B
  • 52 and more: C
  • 45 and more: D
  • 39 and more: E

Project

TBA

Lecture Slides

TBA

Labs

TBA