Mathematics Models in Advanced Information Retrieval - 096231
Will not be given the year
|
|
|
Lecture |
Exercise |
Laboratory |
Project or Seminar |
House Work |
Weekly Hours |
3 |
|
|
|
4 |
|
Determination of the grade according to progress during the semester and the submission of the final thesis
Prerequisites
| | | | Information Retrieval |
096262
| |
Advanced Probabilistic Retrieval Methods, Advanced Stochastic Language Modeling Techniques, Term-Proximity Models, Results Diversification Information-Theoretic Retrieval Models, the Risk-Reward Paradigm, Rank-Aggregation/Fusion, Using Topic Models for Retrieval. Models, the Axiomatic Approach to Retrieval,
Learning Outcomes
At the End of the Course the Student Will
1.
Know How to Adapt and Apply the Matehamtical Models Taught in Class to New Problems, Be Able to Create Variants of the Models That Were Thught in Class for the Same Problems.
2.
Design An Em Algorithm for Performing Soft Clustering. Example.
3.
Design a Risk-Reward Algorithm for Diversifying Search Engine'S Results.
TextbooksPublished | Publisher | Authors | Book |
---|
2013 | morgan and claypool | t. rolleke | ir models:foundations and relationships |
2009 | springer | t. liu | learning to rank for information retrieval |
Created in 13/08/2022 Time 09:46:47