NWI-I00041
Information Retrieval
Course infoSchedule
Course moduleNWI-I00041
Credits (ECTS)6
CategoryMA (Master)
Language of instructionEnglish
Offered byRadboud University; Faculty of Science; Informatica en Informatiekunde;
Lecturer(s)
PreviousNext 1
Coordinator
dr. ir. F. Hasibi
Other course modules lecturer
Examiner
dr. ir. F. Hasibi
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Contactperson for the course
dr. ir. F. Hasibi
Other course modules lecturer
Lecturer
dr. ir. F. Hasibi
Other course modules lecturer
Lecturer
dr. H.R. Oosterhuis
Other course modules lecturer
Academic year2021
Period
KW1-KW2  (06/09/2021 to 30/01/2022)
Starting block
KW1
Course mode
full-time
Remarks-
Registration using OSIRISYes
Course open to students from other facultiesYes
Pre-registrationNo
Waiting listNo
Placement procedure-
Aims
The objective is that participants in the course
  1. are familiar with the classic retrieval models
  2. understand the limitations and assumptions associated with these models
  3. have insight and proficiency in the design and construction of search engines
  4. are familiar with the standard evaluation methods for IR systems
  5. are familiar with interaction techniques to support searchers in their quest for information
  6. have an understanding of how the searcher's context and behaviour can be used to enhance retrieval effectiveness
  7. have gained familiarity with recent scientific literature in this field
Content
While the rise of the internet has helped strengthen the field of Information Retrieval (IR), the area stretches far beyond plain web search, as a discipline situated between information science and computer science. In 1968, Gerard Salton defined information retrieval as "a field concerned with the structure, analysis, organization, storage, searching, and retrieval of information". Even though the area has seen many changes since that time and made a tremendous impact (who has never used a search engine?!), that definition is still accurate.
IR takes the notion of "relevance" as its core concept. As the scope of IR is limited to those cases where computers try to identify the relevance of information objects given a user's information need (as opposed to humans doing that, the common scenario in information science), perhaps "Computational Relevance" would have been a better term for the research in this area.
In this course, we cover the following aspects of Information Retrieval:
  1. How do people search for information, and how can this be formalized?
  2. How can we take advantage of term statistics, structure and annotations to capture the meaning of texts?
  3. How can these elements be combined in order to find "relevant" information?
  4. What techniques are necessary to scale to large text collections?
Instructional Modes
  • Lecture
  • Tutorial
  • Self-study
Level
Master
Presumed foreknowledge
Participant of Information Retrieval should have the base qualifications as provided by the bachelor Computing Science, Information Science or Artificial Intelligence. This includes basic knowledge of statistics, machine learning, and programming.
Test information
A written final exam, a pass/fail project, and a final practical project.
Specifics

Required materials
Book
C.C. Manning, P. Raghavan, H. Schutze, Introduction to Information Retrieval,Editor: Cambridge. Available online at http://nlp.stanford.edu/IR-book/
Book
W. Bruce Croft, Donald Metzler, Trevor Strohman. Information Retrieval in practice, Editor: Pearson. See also: http://www.search-engines-book.com/ Online version from CIIR: SEIRiP.pdf
Reader
Lecture notes will be made available via Brightspace.

Recommended materials
Book
Ryen W. White, Interactions with Search Systems, Editor: Cambridge University Press. http://www.cambridge.org/9781107034228

Instructional modes
Course occurrence

Project

Remark
Students work in teams and evaluate an IR approach of their choosing.

Tests
DIGI-CIRRUS
Test weight1
Test typeDigital exam with CIRRUS
OpportunitiesBlock KW2, Block KW3

Midterm Project
Test weight0
Test typeProject
OpportunitiesBlock KW1, Block KW2

Final Project
Test weight1
Test typeProject
OpportunitiesBlock KW2, Block KW3