Ranking under near decomposability
In this dissertation, we study the problem of Ranking in the presence of Sparsity focusing on two of the most important and generic ranking settings; namely Link Analysis and Top-N Recommendation. Building on the intuition behind Decomposability – the seminal work of the Nobel Laureate Economist...
Κύριος συγγραφέας: | |
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Άλλοι συγγραφείς: | |
Μορφή: | Thesis |
Γλώσσα: | English |
Έκδοση: |
2016
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Θέματα: | |
Διαθέσιμο Online: | http://hdl.handle.net/10889/9576 |
Περίληψη: | In this dissertation, we study the problem of Ranking in the presence of Sparsity
focusing on two of the most important and generic ranking settings; namely Link
Analysis and Top-N Recommendation. Building on the intuition behind Decomposability
– the seminal work of the Nobel Laureate Economist and Turing Award
winner Herbert A. Simon – we introduce a novel and versatile modeling approach
that results to effective algorithmic frameworks for both application areas. The
models and algorithms we propose are shown to possess a wealth of useful mathematical
properties that imply favorable computational as well as qualitative characteristics.
A comprehensive set of experiments on several real-world datasets verify
the applicability of our methods in big-data scenarios as well as their promising
performance in achieving high-quality results with respect to state-of-the-art link-analysis
and recommendation algorithms. |
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