ABSTRACT: The big data pattern analysis suffers from incorrect responses due to missing data entries in the real world. Data collected for digital movie platforms like Netflix and intelligent transportation systems is Spatio-temporal data. Extracting the latent and explicit features from this data is a challenge. We present the high dimensional data imputation problem as a higher-order tensor decomposition. The regularized and biased PARAFAC decomposition is proposed to generate the missing data entries. The biases are created and updated by a chaotic exponential factor in Adam's optimization, which reduces the imputation error. This chaotic perturbed exponentially update in the learning rate replaces the fixed learning rate in the bias upd...
Abstract—Tensor factorization of incomplete data is a powerful technique for imputation of missing e...
National audienceTensors and tensor decompositions are very useful mathematical tools for representi...
This paper presents innovative collaborative filtering techniques to complete missing data in repeat...
Abstract—Unraveling latent structure by means of multilinear models of tensor data is of paramount i...
The problem of missing data is ubiquitous in domains such as biomedical signal processing, network t...
Abstract—Extracting latent low-dimensional structure from high-dimensional data is of paramount impo...
Traffic missing data imputation is a fundamental demand and crucial application for real-world intel...
Spatiotemporal traffic data, which represent multidimensional time series on considering different s...
factors capturing the tensor’s rank is proposed in this paper, as the key enabler for completion of ...
We propose novel tensor decomposition methods that advocate both properties of sparsity and robustne...
Multiway data, described by tensors, are common in real-world applications. For example, online adve...
International audienceIn this letter, the problem of nonnegative tensor decompositions is addressed....
A novel regularizer capturing the tensor rank is introduced in this paper as the key enabler for com...
Missing data in Intelligent Transportation Systems (ITS) could lead to possible errors in the analys...
Completion or imputation of three-way data arrays with missing en-tries is a basic problem encounter...
Abstract—Tensor factorization of incomplete data is a powerful technique for imputation of missing e...
National audienceTensors and tensor decompositions are very useful mathematical tools for representi...
This paper presents innovative collaborative filtering techniques to complete missing data in repeat...
Abstract—Unraveling latent structure by means of multilinear models of tensor data is of paramount i...
The problem of missing data is ubiquitous in domains such as biomedical signal processing, network t...
Abstract—Extracting latent low-dimensional structure from high-dimensional data is of paramount impo...
Traffic missing data imputation is a fundamental demand and crucial application for real-world intel...
Spatiotemporal traffic data, which represent multidimensional time series on considering different s...
factors capturing the tensor’s rank is proposed in this paper, as the key enabler for completion of ...
We propose novel tensor decomposition methods that advocate both properties of sparsity and robustne...
Multiway data, described by tensors, are common in real-world applications. For example, online adve...
International audienceIn this letter, the problem of nonnegative tensor decompositions is addressed....
A novel regularizer capturing the tensor rank is introduced in this paper as the key enabler for com...
Missing data in Intelligent Transportation Systems (ITS) could lead to possible errors in the analys...
Completion or imputation of three-way data arrays with missing en-tries is a basic problem encounter...
Abstract—Tensor factorization of incomplete data is a powerful technique for imputation of missing e...
National audienceTensors and tensor decompositions are very useful mathematical tools for representi...
This paper presents innovative collaborative filtering techniques to complete missing data in repeat...