Tensors are multi-way generalizations of matrices, and similarly to matrices, they can also be factorized, that is, represented (approximately) as a product of factors. These factors are typically either all matrices or a mixture of matrices and tensors. With the widespread adoption of matrix factorization techniques in data mining, also tensor factorizations have started to gain attention. In this paper we study the Boolean tensor factorizations. We assume that the data is binary multi-way data, and we want to factorize it to binary factors using Boolean arithmetic (i.e.\ defining that $1+1=1$). Boolean tensor factorizations are, therefore, natural generalization of the Boolean matrix factorizations. We will study the theory of ...
the date of receipt and acceptance should be inserted later Abstract Graphs – such as friendship net...
Matrix factorizations have found two main applications in machine learning, namely for efficient dat...
Tensors can be viewed as multilinear arrays or generalizations of the notion of matrices. Tensor dec...
Tensors are multi-way generalizations of matrices, and similarly to matrices, they can also be facto...
Tensors are multi-way generalizations of matrices, and similarly to matrices, they can also be facto...
Tensors are becoming increasingly common in data mining, and consequently, tensor factorizations are...
Tensors are becoming increasingly common in data mining, and consequently, tensor factorizations are...
Abstract—Tensors are becoming increasingly common in data mining, and consequently, tensor factoriza...
Tensors are becoming increasingly common in data mining, and con-sequently, tensor factorizations ar...
Tensors are becoming increasingly common in data mining, and consequently, tensor factorizations are...
Tensors are becoming increasingly common in data mining, and consequently, tensor factorizations are...
Abstract. Tensor factorizations are computationally hard problems, and in particular, often are sign...
Tensor factorizations are computationally hard problems, and in particular, are often significantly ...
How can we analyze tensors that are composed of 0's and 1's? How can we efficiently analyz...
Tensor factorizations are computationally hard problems, and in particular, are often significantly ...
the date of receipt and acceptance should be inserted later Abstract Graphs – such as friendship net...
Matrix factorizations have found two main applications in machine learning, namely for efficient dat...
Tensors can be viewed as multilinear arrays or generalizations of the notion of matrices. Tensor dec...
Tensors are multi-way generalizations of matrices, and similarly to matrices, they can also be facto...
Tensors are multi-way generalizations of matrices, and similarly to matrices, they can also be facto...
Tensors are becoming increasingly common in data mining, and consequently, tensor factorizations are...
Tensors are becoming increasingly common in data mining, and consequently, tensor factorizations are...
Abstract—Tensors are becoming increasingly common in data mining, and consequently, tensor factoriza...
Tensors are becoming increasingly common in data mining, and con-sequently, tensor factorizations ar...
Tensors are becoming increasingly common in data mining, and consequently, tensor factorizations are...
Tensors are becoming increasingly common in data mining, and consequently, tensor factorizations are...
Abstract. Tensor factorizations are computationally hard problems, and in particular, often are sign...
Tensor factorizations are computationally hard problems, and in particular, are often significantly ...
How can we analyze tensors that are composed of 0's and 1's? How can we efficiently analyz...
Tensor factorizations are computationally hard problems, and in particular, are often significantly ...
the date of receipt and acceptance should be inserted later Abstract Graphs – such as friendship net...
Matrix factorizations have found two main applications in machine learning, namely for efficient dat...
Tensors can be viewed as multilinear arrays or generalizations of the notion of matrices. Tensor dec...