Machine learning algorithms are typically designed to deal with data represented as vectors. Several major applications, however, involve multi-way data, such as video sequences and multi-sensory arrays. In those cases, tensors endow a more consistent way to capture multi-modal relations, which may be lost by a conventional remapping of original data into a vector representation. This paper presents a tensor-oriented machine learning framework, and shows that the theory of learning with similarity functions provides an effective paradigm to support this framework. The proposed approach adopts a specific similarity function, which defines a measure of similarity between a pair of tensors. The performance of the tensor-based framework is eval...
Modern data processing and analytic tasks often deal with high dimensional matrices or tensors; for ...
Tensor networks have emerged as promising tools for machine learning, inspired by their widespread u...
In the machine learning field, high-dimensional data are often encountered in the real applications....
A tensor network is a type of decomposition used to express and approximate large arrays of data. A ...
Abstract. While tensor factorizations have become increasingly popu-lar for learning on various form...
Tensor representation is helpful to reduce the small sample size problem in discriminative subspace ...
Contributed 28: Social Networks and ClusteringInternational audienceIn data analysis domain, data ar...
Most of the existing learning algorithms take vectors as their input data. A function is then learne...
Abstract. Similarity functions are a very flexible container under which to express knowledge about ...
Similarity functions are a very flexible container under which to express knowledge about a problem ...
A key ingredient to improve the generalization of machine learning algorithms is to convey prior inf...
2018-10-30Measuring similarity between any two entities is an essential component in most machine le...
A major challenge in matching images and text is that they have intrinsically different data distrib...
Matrix factorizations have found two main applications in machine learning, namely for efficient dat...
Domain adaption (DA) allows machine learning methods trained on data sampled from one distribution t...
Modern data processing and analytic tasks often deal with high dimensional matrices or tensors; for ...
Tensor networks have emerged as promising tools for machine learning, inspired by their widespread u...
In the machine learning field, high-dimensional data are often encountered in the real applications....
A tensor network is a type of decomposition used to express and approximate large arrays of data. A ...
Abstract. While tensor factorizations have become increasingly popu-lar for learning on various form...
Tensor representation is helpful to reduce the small sample size problem in discriminative subspace ...
Contributed 28: Social Networks and ClusteringInternational audienceIn data analysis domain, data ar...
Most of the existing learning algorithms take vectors as their input data. A function is then learne...
Abstract. Similarity functions are a very flexible container under which to express knowledge about ...
Similarity functions are a very flexible container under which to express knowledge about a problem ...
A key ingredient to improve the generalization of machine learning algorithms is to convey prior inf...
2018-10-30Measuring similarity between any two entities is an essential component in most machine le...
A major challenge in matching images and text is that they have intrinsically different data distrib...
Matrix factorizations have found two main applications in machine learning, namely for efficient dat...
Domain adaption (DA) allows machine learning methods trained on data sampled from one distribution t...
Modern data processing and analytic tasks often deal with high dimensional matrices or tensors; for ...
Tensor networks have emerged as promising tools for machine learning, inspired by their widespread u...
In the machine learning field, high-dimensional data are often encountered in the real applications....