Criteria that induce a Skyline naturally represent user’s preference conditions useful to discard irrelevant data in large
datasets. However, in the presence of high-dimensional Skyline spaces, the size of the Skyline can still be very large, making
unfeasible for users to process this set of points. To identify the best points among the Skyline, the Top-k Skyline approach
has been proposed. Top-k Skyline uses discriminatory criteria to induce a total order of the points that comprise the Skyline,
and recognizes the best or top-k objects based on these criteria. Different algorithms have been defined to compute the top-k
objects among the Skyline; while existing solutions are able to produce the Top-k Skyline, they may be very costly. First,
state-of-the-art Top-k Skyline solutions require the computation of the whole Skyline; second, they execute probes of the
multicriteria function over the whole Skyline points. Thus, if k is much smaller than the cardinality of the Skyline, these solutions may be very inefficient because a large number of non-necessary
probes may be evaluated. In this paper, we propose the TKSI, an efficient solution for the Top-k Skyline that overcomes existing
solutions drawbacks. The TKSI is an index-based algorithm that is able to compute only the subset of the Skyline that will
be required to produce the top-k objects; thus, the TKSI is able to minimize the number of non-necessary probes. We have empirically
studied the quality of TKSI, and we report initial experimental results that show the TKSI is able to speed up the computation
of the Top-k Skyline in at least 50% percent w.r.t. the state-of-the-art solutions, when k is smaller than the size of the Skyline.
Keywords Preference based Queries - Skyline - Top-k