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Marios Hadjieleftheriou

Researcher at AT&T Labs

Publications -  73
Citations -  5312

Marios Hadjieleftheriou is an academic researcher from AT&T Labs. The author has contributed to research in topics: Approximate string matching & String (computer science). The author has an hindex of 36, co-authored 73 publications receiving 5062 citations. Previous affiliations of Marios Hadjieleftheriou include University of California, Berkeley & University of California, Riverside.

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Proceedings ArticleDOI

Dynamic authenticated index structures for outsourced databases

TL;DR: This work defines a variety of essential and practical cost metrics associated with ODB systems and looks at solutions that can handle dynamic scenarios, where owners periodically update the data residing at the servers, both for static and dynamic environments.
Proceedings ArticleDOI

Indexing multi-dimensional time-series with support for multiple distance measures

TL;DR: The experimental results demonstrate that the index motivated by the need for a single index structure that can support multiple distance measures can help speed-up the computation of expensive similarity measures such as the LCSS and the DTW.
Journal ArticleDOI

Finding frequent items in data streams

TL;DR: This paper has created baseline implementations of the most important algorithms for frequent items, and used these to perform a thorough experimental study of their properties, giving empirical evidence that there is considerable variation in the performance of frequent items algorithms.
Proceedings ArticleDOI

Conceptual partitioning: an efficient method for continuous nearest neighbor monitoring

TL;DR: Con conceptual partitioning (CPM) is proposed, a comprehensive technique for the efficient monitoring of continuous NN queries and it is shown that it outperforms the current state-of-the-art algorithms for all problem settings.
Book ChapterDOI

On trip planning queries in spatial databases

TL;DR: This paper provides a number of approximation algorithms with approximation ratios that depend on either the number of categories, the maximum number of points per category or both, and gives an experimental evaluation of the proposed algorithms using both synthetic and real datasets.