Nearest neighbor search is a very active field in machine learning. It appears in many application cases, including classification and object retrieval. In its naive implementation, the complexity of the search is linear in the product of the dimension and the cardinality of the collection of vectors into which the search is performed. Recently, many works have focused on reducing the dimension of vectors using quantization techniques or hashing, while providing an approximate result. In this paper, we focus instead on tackling the cardinality of the collection of vectors. Namely, we introduce a technique that partitions the collection of vectors and stores each part in its own associative memory. When a query vector is given to the system,...
The task of a neural associative memory is to retrieve a set of previously memorized patterns from t...
Abstract. We present a new method that addresses the problem of approximate nearest neighbor search ...
A recently proposed product quantization method is efficient for large scale approximate nearest nei...
Nearest neighbor search is a very active field in machine learning. It appears in many application c...
International audienceAssociative memories aim at matching an input noisy vector with a stored one. ...
An associative memory is a structure learned from a datasetM of vectors (signals) in a way such that...
International audienceThe most efficient architectures of associative memories are based on binary n...
International audienceThe problem of finding nearest neighbours in terms of Euclidean distance, Hamm...
International audienceThis paper proposes a binarization scheme for vectors of high dimension based ...
Approximate nearest neighbor (ANN) search is fundamental for fast content-based image retrieval. Whi...
Abstract—Associative memories store content in such a way that the content can be later retrieved by...
The technological developments of the last twenty years are leading the world to a new era. The inve...
International audienceAssociative memories are structures that store data in such a way that it can ...
Approximate Nearest neighbor search (ANNS) is fundamental and essential operation in applications f...
Describes search of associative memory (SAM), a general theory of retrieval from long-term memory th...
The task of a neural associative memory is to retrieve a set of previously memorized patterns from t...
Abstract. We present a new method that addresses the problem of approximate nearest neighbor search ...
A recently proposed product quantization method is efficient for large scale approximate nearest nei...
Nearest neighbor search is a very active field in machine learning. It appears in many application c...
International audienceAssociative memories aim at matching an input noisy vector with a stored one. ...
An associative memory is a structure learned from a datasetM of vectors (signals) in a way such that...
International audienceThe most efficient architectures of associative memories are based on binary n...
International audienceThe problem of finding nearest neighbours in terms of Euclidean distance, Hamm...
International audienceThis paper proposes a binarization scheme for vectors of high dimension based ...
Approximate nearest neighbor (ANN) search is fundamental for fast content-based image retrieval. Whi...
Abstract—Associative memories store content in such a way that the content can be later retrieved by...
The technological developments of the last twenty years are leading the world to a new era. The inve...
International audienceAssociative memories are structures that store data in such a way that it can ...
Approximate Nearest neighbor search (ANNS) is fundamental and essential operation in applications f...
Describes search of associative memory (SAM), a general theory of retrieval from long-term memory th...
The task of a neural associative memory is to retrieve a set of previously memorized patterns from t...
Abstract. We present a new method that addresses the problem of approximate nearest neighbor search ...
A recently proposed product quantization method is efficient for large scale approximate nearest nei...