The state-of-the-art approaches for scalable kNN query processing utilise big data parallel/distributed platforms (e.g., Hadoop and Spark) and storage engines (e.g, HDFS, NoSQL, etc.), upon which they build (tree based) indexing methods for efficient query processing. However, as data sizes continue to increase (nowadays it is not uncommon to reach several Petabytes), the storage cost of tree-based index structures becomes exceptionally high. In this work, we propose a novel perspective to organise multivariate (mv) datasets. The main novel idea relies on data space probabilistic transformations and derives a Space Transformation Organisation Structure (STOS) for mv data organisation. STOS facilitates query processing as if underlying datas...
The ubiquity of location-aware devices has resulted in a plethora of location-based services in whic...
International audienceK-Nearest Neighbors (KNN) is a crucial tool for many applications , e.g. recom...
Applications like multimedia retrieval require efficient support for similarity search on large data...
The state-of-the-art approaches for scalable kNN query processing utilise big data parallel/distribu...
The state-of-the-art approaches for scalable kNN query processing utilise big data parallel/distribu...
The k-Nearest Neighbour (kNN) method is a fundamental building block for many sophisticated statisti...
Recently parallel / distributed processing approaches have been proposed for processing k-Nearest Ne...
Recently parallel / distributed processing approaches have been proposed for processing k-Nearest Ne...
Efficient knn computation for high-dimensional data is an important, yet challenging task. Today, mo...
Efficient k-nearest neighbor computation for high-dimensional data is an important, yet challenging ...
Περιέχει το πλήρες κείμενοIn this paper, we focus on the leaf level nodes of tree-like k-dimensiona...
In the era of big data, organizations are inundated with vast volumes of data from diverse sources. ...
In this paper, we develop a novel index structure to support efficient approximate k-nearest neighbo...
With the development of various Cloud system, providing powerful kNN query capability to DaaS (Datab...
Computing k-Nearest Neighbors (KNN) is one of the core kernels used in many machine lear...
The ubiquity of location-aware devices has resulted in a plethora of location-based services in whic...
International audienceK-Nearest Neighbors (KNN) is a crucial tool for many applications , e.g. recom...
Applications like multimedia retrieval require efficient support for similarity search on large data...
The state-of-the-art approaches for scalable kNN query processing utilise big data parallel/distribu...
The state-of-the-art approaches for scalable kNN query processing utilise big data parallel/distribu...
The k-Nearest Neighbour (kNN) method is a fundamental building block for many sophisticated statisti...
Recently parallel / distributed processing approaches have been proposed for processing k-Nearest Ne...
Recently parallel / distributed processing approaches have been proposed for processing k-Nearest Ne...
Efficient knn computation for high-dimensional data is an important, yet challenging task. Today, mo...
Efficient k-nearest neighbor computation for high-dimensional data is an important, yet challenging ...
Περιέχει το πλήρες κείμενοIn this paper, we focus on the leaf level nodes of tree-like k-dimensiona...
In the era of big data, organizations are inundated with vast volumes of data from diverse sources. ...
In this paper, we develop a novel index structure to support efficient approximate k-nearest neighbo...
With the development of various Cloud system, providing powerful kNN query capability to DaaS (Datab...
Computing k-Nearest Neighbors (KNN) is one of the core kernels used in many machine lear...
The ubiquity of location-aware devices has resulted in a plethora of location-based services in whic...
International audienceK-Nearest Neighbors (KNN) is a crucial tool for many applications , e.g. recom...
Applications like multimedia retrieval require efficient support for similarity search on large data...