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Title: User Modeling in IR LIS678 CoTeaching


1
User Modeling in IRLIS678 Co-Teaching
  • Pei-Chia Chang
  • Dr. Luz M Quiroga
  • LIS678 Personalized Information Delivery

2
Required Readings
  • - Belkin, Nicholas J. (2000). "The human
    elements Helping people find what they dont
    know." Communications of the ACM 43(8), 58-61.
  • - Daniels, P. J. (1986). "Cognitive models in
    information retrieval An evaluative review."
    Journal of Documentation 42(4), 272-304.
  • - Rich, Elaine A. (1983). "Users are individuals
    individualising user models." International
    Journal of Man - Machine Studies 18, 199-214.
  • - Luz M. Quiroga, Martha E. Crosby Marie K.
    Iding (2004) "Reducing Cognitive Load". In
    Proceedings of the 37th Hawaii International
    Conference on System Sciences.

3
Additional Readings
  • H Liu, P Maes (2004) What would they think? a
    computational model of attitudes - Proceedings
    of the 9th international conference on
    Intelligent User Interfaces
  • Plinio Thomaz Aquino Junior, Lucia Vilela Leite
    Filgueiras (2005) User modeling with personas -
    ACM Proceedings of the 2005 Latin American
    conference on Human-computer interaction

4
Additional References
  • Marvin Minsky(1988) The Society of Mind, Simon
    Schuster
  • Amanda Spink and Charles Cole(2005) New
    Directions in Cognitive Information Retrieval,
    Springer
  • Constantine, L. L and Lockwood, L. A. D.(1999),
    Software for Use, Addison Wesley

5
Why User Modeling?
  • Belkin claims user modeling for Information
    Retrieval to help people find what they dont
    know.
  • Quiroga et al. advocate user modeling for
    Information Filtering to reduce the cognitive
    load.

6
Mental Models, Marvin Minsky 1988
  • Knowing facts, opinions, beliefs.
  • Freedom of will

BODY
MIND
CAUSE
CHANCE
Free Will
7
Space of User Models, Rich, 1983
  • One model of a single, canonical user vs. a
    collection of models of individual users.
  • Models specified explicitly either by the system
    designer or by the users themselves vs. models
    inferred by the system on the basis of users'
    behavior.
  • Models of fairly long-term user characteristics
    such as areas of interest or expertise vs. models
    of relatively short-term user characteristics
    such as the problem the user is currently trying
    to solve.

8
Canonical vs. Individual Models, Rich, 1983
  • Canonical homogeneous user communities.
  • Individualizedheterogeneous user communities
  • Differenceflexibility

9
Explicit vs. Implicit Models , Rich, 1983
  • Explicit manually configure the system
    parameters
  • Implicitfeedback based personalizationintellige
    nt modeling

10
Long-term vs. Short-term Models , Rich, 1983
  • Short-termcurrent goal
  • Long-terma series of interactions

11
Rich, 1983
12
User Modeling Techniques , Rich, 1983
  • Inferring individual factspatterns of user
    behaviorscondition-action rules
  • Using stereotypes to infer many things at a time

13
Cognitive Information Retrieval Techniques,
Editor Amanda Spink and Charles Cole (2005)
  • Implicit feedback
  • Knowledge domain visualization
  • Learning and training to search

From Amanda Spink and Charles Cole - New
Directions in Cognitive Information Retrieval,
2005, Springer
14
Case studies
  • Grundythe use of stereotypes
  • User Modeling with Personasuser modeling
    techniques
  • What would they think (WWTT)affective user model
  • Recommender systems

15
Grundy, Rich1983
  • Individual user
  • Implicitly constructed
  • Longer-term
  • Use stereotypes

16
Grundy , Rich1983
  • User is asked to provide a few words and these
    words trigger appropriate stereotypes.
  • If the system has enough information, books are
    recommended. Otherwise, it asks user for more
    words.

17
Rich1983
18
Rich1983
19
User Modeling with Personas, Plinio Thomaz
Aquino Junior, Lucia Vilela Leite Filgueiras
(2005)
  • A persona is a user representation intending to
    simplify communication and project decision
    making by selecting project rules that suit the
    real propositions.

20
User Modeling Techniques Plinio Thomaz Aquino
Junior, Lucia Vilela Leite Filgueiras (2005)
  • User roles
  • User profiles
  • User segments
  • Marketing segments
  • Extreme characters
  • Persona

21
User Role, Constantine, L. L and Lockwood(1999)
  • A collection of attributes that characterize
    certain user populations and their intentional
    interactions with the system

22
User Profile Plinio Thomaz Aquino Junior, Lucia
Vilela Leite Filgueiras (2005)
  • Fictitious biographical summary, adding
    motivation, goals, and personalities. 1
  • The understanding of user individual
    characteristics might be achieved by the user
    profile, including information related to age,
    gender, skills, education, experience, and
    cultural level.

1, from Brusilovsky, P. Methods and techniques
of adaptive hypermedia. User Modeling and
User-Adapted Interaction 6, 2-3 (1996) pp.
87-129. And Shneiderman, B., Designing the User
Interface, 1990.
23
User Segments Plinio Thomaz Aquino Junior, Lucia
Vilela Leite Filgueiras (2005)
  • Groups of people who will use the services or
    product.

24
Marketing Segments Plinio Thomaz Aquino Junior,
Lucia Vilela Leite Filgueiras (2005)
  • Establishes the marketing portions which reveal
    personal involvements with particular
    characteristics in common, according to the
    segmentation initial objective.

25
Extreme characters Plinio Thomaz Aquino Junior,
Lucia Vilela Leite Filgueiras (2005)
  • The modeling of radical personalities will help
    cover all kinds of users.

26
Personas Plinio Thomaz Aquino Junior, Lucia
Vilela Leite Filgueiras (2005)
  • The personas technique is based on data gathered
    through user research, mapping user archetypes,
    that represent a few important classes of users
    whose goals and needs a specific digital products
    or services.

27
Personas Implementation Plinio Thomaz Aquino
Junior, Lucia Vilela Leite Filgueiras (2005)
  • Personal information
  • Technical information
  • Relationship information
  • Opinion information

28
Persona Representation Plinio Thomaz Aquino
Junior, Lucia Vilela Leite Filgueiras (2005)
29
Persona Representation Plinio Thomaz Aquino
Junior, Lucia Vilela Leite Filgueiras (2005)
  • His salary is R1200,00 per month.
  • He has modest experience with computers and
    infrequent access
  • to the Internet. Although he is not an expert
    user, he does not
  • present a dodging behavior towards technology and
    computers.
  • He reacts favorably when asked to used a computer
    for internet
  • service.
  • His use of governmental services is highly
    occasional, driven by
  • some extreme motivation the need of being
    regular with
  • government obligations, such as his income
    declaration to save
  • money, like the electronic licensing of vehicles
    or to make more
  • money, applying for a better job through civil
    service exams.
  • When using the government websites, he has
    problems with the
  • mouse and the printer, with the concept of URL
    and with the
  • understanding of texts in the website

30
Persona Representation Plinio Thomaz Aquino
Junior, Lucia Vilela Leite Filgueiras (2005)
31
Persona Representation Plinio Thomaz Aquino
Junior, Lucia Vilela Leite Filgueiras (2005)
32
What Would They Think, H Liu, P Maes,04
  • Generate a model of a persons attitudes from
    automated analysis of personal texts.
  • Use affective memory system to build digital
    persona.
  • Mining attitudes through natural language
    processing and commonsense-based textual affect
    sensing.

33
Computing a Persons Attitudes , H Liu, P Maes,04
  • A bipartite affective memory system
  • Mining attitudes from personal texts
  • Predict attitudes using the model
  • Enriching the basic model.

34
Affective Memory System , H Liu, P Maes,04
  • Concepts, topics, and episodes are extracted
    from text and associated with their respective
    affective valence scores.
  • Each pair constitutes a single exposure of an
    attitude, which accumulate in an affective memory
    system.
  • Affective long-term episodic memory (LTEM)
  • Affective reflexive memory

35
Affective Memory System , H Liu, P Maes,04
  • Affective long-term episodic memory (LTEM)
  • An episode is a basic unit of memory.
  • Compute an affective LTEM as an episode frame.
  • Episodes are content-addressable.

36
Affective Memory System , H Liu, P Maes,04
  • Affective long-term episodic memory (LTEM)John
    and I were at the park. John was eating an ice
    cream. I asked him for a taste but he refused. I
    thought he was selfish for doing that.

37
Affective Memory System , H Liu, P Maes,04
  • Affective reflexive memory

38
Mining Attitudes from Personal Texts , H Liu, P
Maes,04
  • Digital persona can be automatically acquired
    from suitable personal text using natural
    language processing and textual affect sensing.
  • Suitable text first-person, opinion-rich,
    well-balanced, explicitly episodic.
  • Coping strategies were employed for dealing with
    erroneous appraisals.

39
Predict Attitudes using the Model, H Liu, P
Maes,04
  • Predict the attitude by offering some affective
    reaction.
  • Point-of-view agree/disagree

40
Predict Attitudes using the Model, H Liu, P
Maes,04
41
Enhancing the Basic Model , H Liu, P Maes,04
  • Imprimer someone whose goals and attitudes we
    admire and hope to emulate.
  • Heuristic approach was implemented to identify
    imprimers from a persons affective memory.
  • Attach the imprimers affective memory to
    supplement the persons own affective when
    appraising new textual episodes.

42
Recommender Systems, Belkin, 2000
  • Explicit term suggestion is a better way for
    recommender system supporting query
    reformulation.
  • Understanding the contents of database
  • Learning about effective vocabulary
  • Being able to evaluate the relevance of an
    information object quickly and accurately
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