Artificial intelligence, genetic algorithm, knowledge discovery, pattern recognition, Abstract � We introduce a new method for exploratory analysis of large data sets with time-varying features, where the aim is to automatically discover novel relationships between features (over some time period) that are predictive of any of a number of time-varying outcomes (over some other time period). Using a genetic algorithm, we co-evolve (i) a subset of predictive features, (ii) which attribute will be predicted (iii) the time period over which to assess the predictive features, and (iv) the time period over which to assess the predicted attribute. After validating the method on 15 synthetic test problems, we used the approach for exploratory analy...
Association rule mining is one of the most popular data-mining techniques used to find associations ...
Due to the increased availability of information systems in hospitals and health care institutions, ...
International audienceThis paper deals with the exploration of biomedical multivariate time series t...
We introduce a new method for exploratory analysis of large data sets with time-varying features, wh...
An important goal of knowledge discovery is the search for patterns in the data that can help explai...
The increasing integration and availability of healthcare data triggers new opportunities for an ade...
Abstract Background The exponential growth of digital healthcare data is fueling the development of ...
EHR (Electronic Health Record) system has led to development of specialized form of clinical databas...
Growing use of electronic medical records, advances in data mining and machine learning, and the con...
The increased focus on evidence-based practice in the health sciences led to a plethora of (un)organ...
This paper describes a time-changing feature selection1 framework based on hierachical distribution ...
dissertationPatient data are collected over time at varying time intervals to update patient status ...
International audienceThis paper deals with the exploration of biomedical multivariate time series t...
For the past two decades, there has been an exponential growth of digital healthcare data due to the...
Time is a crucial parameter in the assessment of comorbidities in population-based studies, as it pe...
Association rule mining is one of the most popular data-mining techniques used to find associations ...
Due to the increased availability of information systems in hospitals and health care institutions, ...
International audienceThis paper deals with the exploration of biomedical multivariate time series t...
We introduce a new method for exploratory analysis of large data sets with time-varying features, wh...
An important goal of knowledge discovery is the search for patterns in the data that can help explai...
The increasing integration and availability of healthcare data triggers new opportunities for an ade...
Abstract Background The exponential growth of digital healthcare data is fueling the development of ...
EHR (Electronic Health Record) system has led to development of specialized form of clinical databas...
Growing use of electronic medical records, advances in data mining and machine learning, and the con...
The increased focus on evidence-based practice in the health sciences led to a plethora of (un)organ...
This paper describes a time-changing feature selection1 framework based on hierachical distribution ...
dissertationPatient data are collected over time at varying time intervals to update patient status ...
International audienceThis paper deals with the exploration of biomedical multivariate time series t...
For the past two decades, there has been an exponential growth of digital healthcare data due to the...
Time is a crucial parameter in the assessment of comorbidities in population-based studies, as it pe...
Association rule mining is one of the most popular data-mining techniques used to find associations ...
Due to the increased availability of information systems in hospitals and health care institutions, ...
International audienceThis paper deals with the exploration of biomedical multivariate time series t...