Large-scale similarity search engines are complex systems devised to process unstructured data like images and videos. These systems are deployed on clusters of distributed processors communicated through high-speed networks. To process a new query, a distance function is evaluated between the query and the objects stored in the database. This process relays on a metric space index distributed among the processors. In this paper, we propose a cache-based strategy devised to reduce the number of computations required to retrieve the top-k object results for user queries by using pre-computed information. Our proposal executes an approximate similarity search algorithm, which takes advantage of the links between objects stored in the cache me...
International audienceSimilarity caching systems have recently attracted the attention of the scient...
Abstract—Similarity search is critical for many database ap-plications, including the increasingly p...
Since many graph data are often noisy and incomplete in real applications, it has become increasingl...
Similarity search is important for many data-intensive applications to identify a set of similar obj...
Abstract. A critical issue in large scale search engines is to efficiently handle sudden peaks of in...
Similarity search in metric spaces is a general paradigm that can be used in several application fie...
Similarity search is a key operation in multimedia retrieval systems and recommender systems, and it...
We introduce the similarity caching problem, a variant of classical caching in which an algorithm ca...
Feature-rich data, such as audio-video recordings, digital images, and results of scientific experim...
Due to the increasing complexity of current digital data, the similarity search has become a fundame...
International audienceSimilarity search is a key operation in multimedia retrieval systems and recom...
A supergraph containment search is to retrieve the data graphs contained by a query graph. In this p...
Due to the increasing complexity of current digital data, similarity search has become a fundamental...
International audienceThis paper focuses on similarity caching systems, in which a user request for ...
Metric databases are databases where a metric distance function is defined for pairs of database obj...
International audienceSimilarity caching systems have recently attracted the attention of the scient...
Abstract—Similarity search is critical for many database ap-plications, including the increasingly p...
Since many graph data are often noisy and incomplete in real applications, it has become increasingl...
Similarity search is important for many data-intensive applications to identify a set of similar obj...
Abstract. A critical issue in large scale search engines is to efficiently handle sudden peaks of in...
Similarity search in metric spaces is a general paradigm that can be used in several application fie...
Similarity search is a key operation in multimedia retrieval systems and recommender systems, and it...
We introduce the similarity caching problem, a variant of classical caching in which an algorithm ca...
Feature-rich data, such as audio-video recordings, digital images, and results of scientific experim...
Due to the increasing complexity of current digital data, the similarity search has become a fundame...
International audienceSimilarity search is a key operation in multimedia retrieval systems and recom...
A supergraph containment search is to retrieve the data graphs contained by a query graph. In this p...
Due to the increasing complexity of current digital data, similarity search has become a fundamental...
International audienceThis paper focuses on similarity caching systems, in which a user request for ...
Metric databases are databases where a metric distance function is defined for pairs of database obj...
International audienceSimilarity caching systems have recently attracted the attention of the scient...
Abstract—Similarity search is critical for many database ap-plications, including the increasingly p...
Since many graph data are often noisy and incomplete in real applications, it has become increasingl...