topic. Nevertheless, we did not specify the necessary
steps, making it a rather generic, free activity.
Both tasks involve hypothetical data, different
from those used in the examples presented in the
technical description of the application.
We will also ask the participants to take note of
all and every difficulty they come across while
carrying out the tasks, as well as of the sequence of
operations performed and the expected solutions
within the application.
When analysing the results, we will take into
consideration whether both tasks have been
successfully fulfilled or not. For the second, generic
task, we will also take into consideration the use of
the entire potentiality of the tool.
We will now apply this experiment to a sample
of 7 Masters Students (potential users of this kind of
application) as a test to be applied to a larger
universe in a near future. Our hypothesis are that the
tool is self-explanatory when it comes to the
accomplishment of each individual task. However,
its potentiality may be underexploited, because of
the lack of strategic help, which in turn should
describe - in a more precise way - the distinctive
aspects of the environment when used in the real
world, i.e. in the search for materials oriented
towards the elaboration of didactic content.
6 CONCLUSIONS AND FUTURE
WORKS
In the present work we listed and looked into a
number of solutions available for building a proposal
of an environment (on storyboard) based upon
current HCI premises and concepts. The results we
achieved solve most of the problems we came across
whilst revising the literature on this sort of
environment. The main advances and achievements
of the environment we propose are the following:
the pre-visualisation of the semantic structure of the
content by taking advantage of the communicative
potential of LO content and its components; the
possibility of synthetic visualisation (at LO level)
and analytical visualisation (at CO and CF levels) of
search results; and the visualisation of results
according to different attributes/mappings.
When giving continuity to the present work, we
will applied an experiment to a sample of 7 Masters
Students as a first test. Our hypothesis are that the
tool is self-explanatory when it comes to the
accomplishment of each individual task. However,
its potentiality may be underexploited, because of
the lack of strategic help.
After the concept of the environment an the
experiment, the next step is to apply the
improvements needed to the conceptual environment
and apply again the pre-assessment to a larger
universe of potential users.
Other pertinent future works may approach the
incorporation of new search capacities to the
information filtering tool (Cardoso 2000); the
improvement of result ordering, such as through the
ranking of the results displayed (Ochoa et al 2006);
the help during the process of cooperative search
among repository users, including cooperative and
dynamic indexing as well as the possibility of taking
notes about the use of reused objects as inputs to the
new decisions and their possible reutilisation; among
others.
REFERENCES
Card, S., Mackinlay, J. D., Shneiderman, B., 1999.
Readings in Information Visualization, using vision to
think, Morgan Kaufmann Publishers, Inc.
Cardoso, J.C., 2000. iLIB, Uma Proposta de Interface de
Consulta Personalizável Para Bibliotecas Digitais.
Klerkx, Joris et al, 2004. Using Information Visualization
for Accessing Learning Object Repositories, Computer
Science Department, K. U. Leuven.
Klerkx, Joris et al, 2005. An Information Visualization
Framework for Accessing Learning Objects
Repositories, Dept. Computerwetenschappen,
Katholieke Universiteit Leuven.
Klerkx, Joris et al. Visualizing Reuse: More than Meets
the Eye, 2006. Katholieke Universiteit Leuven,
Belgium.
Najjar, Jehad et al, 2005. Finding Appropriate Learning
Objects: An Empirical Evaluation, Computer Science
Department, K. U. Leuven.
Ochoa, Xavier et al., 2006. Use of Contextualized
Attention Metadata for Ranking and Recommending
Learning Objects, ACM.
Verbert, K et al., 2004. Toward a Global Architecture for
Learning Objects: A Comparative Analysis of
Learning Object Content Models.
Wiza, Wojciech et al., 2004. Periscope – A System dor
Adaptative 3D Visualization of Search Results, ACM.
Yee, Ka-Ping; Swearingen, Kirsten; Li, Kevin; Hearst,
Marti, 2003. Faceted Metadata for Image Search and
Browsing.
CC, Creative Commons. http://creativecommons.org/
GNU, Copyleft. http://www.gnu.org/copyleft/
PHPMYADMIN. http://www.phpmyadmin.org/
AN INTERFACE ENVIRONMENT FOR LEARNING OBJECT SEARCH AND PRE-VISUALISATION
247