This paper presents innovative collaborative filtering techniques to complete missing data in repeated medical questionnaires. The proposed techniques are based on the canonical polyadic (CP) decomposition (a.k.a. PARAFAC). Besides the standard CP decomposition, also a normalized decomposition is utilized. As an illustration, systemic lupus erythematosus-specific quality-of-life questionnaire is considered. Measures such as normalized root mean square error, bias and variance are used to assess the performance of the proposed tensor-based methods in comparison with other widely used approaches, such as mean substitution, regression imputations and k-nearest neighbor estimation. The numerical results demonstrate that the proposed methods pro...
Introduction Clustering analysis is the well-known method for exploring similarity between patients...
If information on single items in the Short Form–12 health survey (SF-12) is missing, the analysis o...
OBJECTIVE: The SF-12 Health Survey is a 12-item questionnaire that yields two summary scores (physic...
This paper presents innovative collaborative filtering techniques to complete missing data in repea...
10.1109/ICICS.2011.6174300ICICS 2011 - 8th International Conference on Information, Communications a...
The problem of missing data is ubiquitous in domains such as biomedical signal processing, network t...
Completion or imputation of three-way data arrays with missing en-tries is a basic problem encounter...
A novel regularizer capturing the tensor rank is introduced in this paper as the key enabler for com...
Abstract—Tensor factorization of incomplete data is a powerful technique for imputation of missing e...
factors capturing the tensor’s rank is proposed in this paper, as the key enabler for completion of ...
Abstract—Unraveling latent structure by means of multilinear models of tensor data is of paramount i...
In this age of information overload and plethora of choices, people increasingly rely on automatic r...
To design a prosthetic hand which can classify movements based on the electromyography (EMG) signals...
Abstract Missing data is a common problem in longitudinal datasets which include mult...
ABSTRACT: The big data pattern analysis suffers from incorrect responses due to missing data entries...
Introduction Clustering analysis is the well-known method for exploring similarity between patients...
If information on single items in the Short Form–12 health survey (SF-12) is missing, the analysis o...
OBJECTIVE: The SF-12 Health Survey is a 12-item questionnaire that yields two summary scores (physic...
This paper presents innovative collaborative filtering techniques to complete missing data in repea...
10.1109/ICICS.2011.6174300ICICS 2011 - 8th International Conference on Information, Communications a...
The problem of missing data is ubiquitous in domains such as biomedical signal processing, network t...
Completion or imputation of three-way data arrays with missing en-tries is a basic problem encounter...
A novel regularizer capturing the tensor rank is introduced in this paper as the key enabler for com...
Abstract—Tensor factorization of incomplete data is a powerful technique for imputation of missing e...
factors capturing the tensor’s rank is proposed in this paper, as the key enabler for completion of ...
Abstract—Unraveling latent structure by means of multilinear models of tensor data is of paramount i...
In this age of information overload and plethora of choices, people increasingly rely on automatic r...
To design a prosthetic hand which can classify movements based on the electromyography (EMG) signals...
Abstract Missing data is a common problem in longitudinal datasets which include mult...
ABSTRACT: The big data pattern analysis suffers from incorrect responses due to missing data entries...
Introduction Clustering analysis is the well-known method for exploring similarity between patients...
If information on single items in the Short Form–12 health survey (SF-12) is missing, the analysis o...
OBJECTIVE: The SF-12 Health Survey is a 12-item questionnaire that yields two summary scores (physic...