collected information like purchasing history and
user characteristics, and the system make proper
recommendations based on them (e.g. Amazon,
Netflix).
Other examples consist of web systems which
use reputation systems (
Golbeck, Hendler, 2005).
Reputation systems are extremely useful in those
communities where the users have to interact with
some resources posted by other users or they have to
interact with other users. (E.g. YouTube, Slashdot,
Flicker). In these situations, using experience of
other users would be very useful. Also, reputation
systems are useful in setting some evaluation levels
for users and resources (e.g. more or less interesting
resources). There are a variety of reputation systems.
A well-known system, mentioned before, is Google
Page Rank (A. Langville, C. Meyer, 2006) that is
based on complex algorithms that assure the web
page ranking.
Another reputation system is that used by eBay.
The system assures a feedback profile for each
member.
Each feedback consists of a positive, negative or
neutral value (these values are obtained from the
ratings of the transaction partners) and a short
comment.
Everything2 is a knowledge base that contains
reputations system both for users and their posted
articles. The system is based on anonymous votes of
other users which determine positive or negative
ratings. Negative evaluated articles are deleted. The
users are evaluated on the basis of the number of
their submitted articles (and not deleted) and on the
average of their associated values.
Such a system implies some problems: new users
posting articles that receive negative feedbacks may
appear. These articles will be deleted, thus
discouraging new postings by such users. Even the
experienced users hesitate to post new articles which
they consider as being not very good, because the
received negative feedbacks are not deleted. Also, in
this kind of system the re-actualization of older
articles is less appreciated.
Slashdot has a reputation system named karma.
In this system there are moderators that can make
the evaluations in a similar way to the system
Everything2. Every user may become moderator if
he has a good karma obtained on the basis of the
ratings associated to their comments. But this
moderator state is temporary until he uses the
available votes. This evaluation system is criticized
because it is weak on issues like Anonymous
Coward or sock puppets (R. Falcone, S.Barber, L.
Korba, M. Singh, 2002).
Another system we referred here before is
Wikipedia that represents an online community
containing a great number of users, but not using a
formal reputation computation mechanism.
As in the previously discussed systems, a less
visible user hierarchy exists. All users, on the basis
of their contribution, may receive the so-called
barnstar acknowledgement. Although one can
follow each user posting history, it does not exist a
particular rating system.
3 PRES MODEL PROPOSAL
3.1 Context
In section 2 we have discussed a set of reputation
systems (R. Falcone, S.Barber, L. Korba, M. Singh,
2002), but in all these related approaches we do not
find a personalized evaluation. In this section we
explain what a personalized evaluation means, from
our point of view.
In a Web community there exist a lot of
resources. There are human resources and other
types of resources. The people have either different
or similar profiles. Therefore, they are interested in
either different or similar resources.
We quantize this interest with values which are
provided by the user for other users or resources.
Also, this interest will have an indirectly computed
component. We give a simple example here, the
other cases being analyzed in section 3.2. We have
the situation when a user evaluates favorably one or
more users. These users evaluate favorably a given
resource. Even if the user does not evaluate directly
that resource we will consider an implicit favorable
evaluation (J.Golbeck, J. Hendler, 2006). Thus, the
user has the chance to access more relevant
resources for him.
In our system there is no it does not exist an
absolute value of good or bad resource
characteristic. A resource can be good for a set of
users but not useful for other set of users.
In section 3.2 we establish a set of metrics (J.
L. Mui,
2002), taken into account by the evaluation
mechanism, for the purpose of measuring the
usefulness of a resource for a given user.
Whenever new users become community
members they can interact with the users
corresponding to their preferences. Also, they will
be able to access much faster the proper resource set.
This represents the general direction our system is
based on.
PRES – PERSONALIZED EVALUATION SYSTEM IN A WEB COMMUNITY - A Conceptual Model Designed to
Evaluate Reputation in Order to Achive a Personalised View on the System for Each User
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