Title: Personalized Information Retrieval in Context
1Personalized Information Retrieval in Context
David Vallet Universidad Autónoma de Madrid,
Escuela Politécnica Superior,Spain
2Overview
- Motivation
- Ontology-Based Content Retrieval
- Personalization
- Personalization in Context
- Building a Semantic Runtime Context
- Contextual Preference Activation
- Conclusions
3Motivation
- Requirements of two different multimedia
applications european research projects digital
album (aceMedia) and a news service (MESH) -
- Indicate users preferences
- Content
- High level Topics
- Low level
- Topic sub-categories
- Geographical area
- Personalised content
- Search results
- Browsing
- Context awareness
- Temporal preference
- Different scopes
- Session focused interests
Ontology-Based Preference Representation
Personalisation in Context
4Ontology-Based Content Retrieval
Info need
Formal query
Goal Improve keyword-based search
Query engines Inference engines
Ontology KB
Annotation
Documents
Search space
Returned documents
5Ontology-Based Content Retrieval
q d1 d2
x1 q1 d11 d21
x2 q2 d12 d22
x3 q3 d13 d23
6Personalization
Preferences/Context
Annotation
Documents
Search space
7Personalization
Personalization effect
x2
x1
x1, x2, x3 domain ontology O
x3
8Personalization
Ontology-Based Preference Representation
- Concepts VS Keywords
- Interoperability
- Precision
- Hierarchical Representation
- Inference
9Personalization
Ontology-Based Preference Representation
Geographical Region
C
Islands
C
Leisure
visit
Spanish Islands
C
C
Travel
Canada
C
USA Islands
C
C
Island Travel
USA
C
C
Hawaii
I
locatedIn
Movies
Florida
C
C
Music
C
Techno
C
Classical
C
Pop
C
Hawaii Tourist Guide
10Personalisation in Context
- Combination of long-term (preferences)
short-term (context) user interests and needs - Not all user preferences are relevant all the
time which ones? - Partial answer focus on current semantic
context, discard out of context ones - Notion of context
- Defined as the set of background themes under
which user activities occur within a given unit
of time - Represented as a set of weighted ontology
concepts involved in user actions within a
session - Captured?
- Build a runtime context extracting concepts
from queries and documents selected by the user - Used?
- Contextual preference activation Analyze
semantic connections between preference and
context concepts - Personalization retrieval in context Filter user
preferences, only those related to the context
are activated
11Building a Runtime Context
Concepts, t
Action Query
Contextt
11
12Contextual Preference Activation
- preference for x px
- r (x,y)
? preference for y px w (r)
Constrained Spreading Activation
py 0.4 0.8 ? 0.5
px 0.8
py 0.724 0.4 (1 - 0.4) ? 0.9 ? 0.6
w (r) 0.5
C
C
nextTo r
Beach x
Sea y
13Contextual Preference Activation
Domain concepts
14Personalization in Context
x2
x1
x1, x2, x3 domain ontology O
x3
15Conclusions
- Semantic concepts VS plain terms
- Exploitation of semantic relation
- Semantic runtime context
- Context Filtering of user preference
16References
- Semantic Search
- P. Castells, M. Fernández, and D. Vallet. An
Adaptation of the Vector-Space Model for
Ontology-Based Information Retrieval. IEEE
Transactions on Knowledge and Data Engineering,
2007. In press. - Personalization
- D. Vallet, P. Mylonas, M. A. Corella, J. M.
Fuentes, P. Castells, and Y. Avrithis. A
Semantically-Enhanced Personalization Framework
for Knowledge-Driven Media Services. IADIS
WWW/Internet Conference (ICWI 2005). Lisbon,
Portugal, October 2005. - Personalization in context
- D. Vallet, M. Fernández, P. Castells, P. Mylonas,
and Y. Avrithis. Personalized Information
Retrieval in Context. 3rd International Workshop
on Modeling and Retrieval of Context (MRC 2006)
at the 21st National Conference on Artificial
Intelligence (AAAI 2006). Boston, USA, July 2006.
- Ranking Aggregation
- M. Fernndez, D. Vallet, and P. Castells. Using
Historical Data to Enhance Rank Aggregation. 29th
Annual International ACM Conference on Research
and Development on Information Retrieval (SIGIR
2006), Poster Session. Seattle, WA, August 2006. - Tuning Personalization
- P. Castells, M. Fernndez, D. Vallet, P. Mylonas,
and Y. Avrithis. Self-Tuning Personalized
Information Retrieval in an Ontology-Based
Framework. 1st IFIP WG 2.12 WG 12.4
International Workshop on Web Semantics (SWWS
2005), November 2005. Springer Verlag Lecture
Notes in Computer Science, Vol. 3762. Meersman,
R. Tari, Z. Herrero, P. (Eds.), 2005, ISBN
3-540-29739-1, pp. 977-986. -
17Thank You!