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Description
Skyline queries are a well-established technique used in multi criteria decision applications. There is a recent interest among the research community to efficiently compute skylines but the problem of presenting the skyline that takes into account the preferences of the user is still open. Each user has varying interests towards

Skyline queries are a well-established technique used in multi criteria decision applications. There is a recent interest among the research community to efficiently compute skylines but the problem of presenting the skyline that takes into account the preferences of the user is still open. Each user has varying interests towards each attribute and hence "one size fits all" methodology might not satisfy all the users. True user satisfaction can be obtained only when the skyline is tailored specifically for each user based on his preferences.



This research investigates the problem of preference aware skyline processing which consists of inferring the preferences of users and computing a skyline specific to that user, taking into account his preferences. This research proposes a model that transforms the data from a given space to a user preferential space where each attribute represents the preference of the user. This study proposes two techniques "Preferential Skyline Processing" and "Latent Skyline Processing" to efficiently compute preference aware skylines in the user preferential space. Finally, through extensive experiments and performance analysis the correctness of the recommendations and the algorithm's ability to outperform the naïve ones is confirmed.
ContributorsRathinavelu, Sriram (Author) / Candan, Kasim Selcuk (Thesis advisor) / Davulcu, Hasan (Committee member) / Sarwat, Mohamed (Committee member) / Arizona State University (Publisher)
Created2014
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Description
Similarity search in high-dimensional spaces is popular for applications like image

processing, time series, and genome data. In higher dimensions, the phenomenon of

curse of dimensionality kills the effectiveness of most of the index structures, giving

way to approximate methods like Locality Sensitive Hashing (LSH), to answer similarity

searches. In addition to range searches

Similarity search in high-dimensional spaces is popular for applications like image

processing, time series, and genome data. In higher dimensions, the phenomenon of

curse of dimensionality kills the effectiveness of most of the index structures, giving

way to approximate methods like Locality Sensitive Hashing (LSH), to answer similarity

searches. In addition to range searches and k-nearest neighbor searches, there

is a need to answer negative queries formed by excluded regions, in high-dimensional

data. Though there have been a slew of variants of LSH to improve efficiency, reduce

storage, and provide better accuracies, none of the techniques are capable of

answering queries in the presence of excluded regions.

This thesis provides a novel approach to handle such negative queries. This is

achieved by creating a prefix based hierarchical index structure. First, the higher

dimensional space is projected to a lower dimension space. Then, a one-dimensional

ordering is developed, while retaining the hierarchical traits. The algorithm intelligently

prunes the irrelevant candidates while answering queries in the presence of

excluded regions. While naive LSH would need to filter out the negative query results

from the main results, the new algorithm minimizes the need to fetch the redundant

results in the first place. Experiment results show that this reduces post-processing

cost thereby reducing the query processing time.
ContributorsBhat, Aneesha (Author) / Candan, Kasim Selcuk (Thesis advisor) / Davulcu, Hasan (Committee member) / Sapino, Maria Luisa (Committee member) / Sarwat, Mohamed (Committee member) / Arizona State University (Publisher)
Created2016