The volume of biomedical data available to the machine learning community grows very rapidly. A rational question is how informative these data really are or how discriminant the features describing the data instances are. Several biomedical datasets suffer from lack of variance in the instance representation, or even worse, contain instances with identical features and different class labels. Indisputably, this directly affects the performance of machine learning algorithms, as well as the ability to interpret their results. In this article, we emphasize on the aforementioned problem and propose a target-informed feature induction method based on tree ensemble learning. The method brings more variance into the data representation, thereby ...
The increasing size of datasets is particularly evident in the field of bioinformatics. It is unlike...
Heart disease is the deadliest disease and one of leading causes of death worldwide. Machine learnin...
This paper introduces a novel approach for assessing multiple patterns in biological imaging dataset...
During the recent years, a great advance in both biomedical data acquisition technologies and featur...
During the recent years, a great advance in both biomedical data acquisition technologies and featur...
The bootstrap aggregating procedure at the core of ensemble tree classifiers reduces, in most cases,...
The volume of data generated and collected using modern technologies grows exponentially. This vast ...
With the advent of the data age, the continuous improvement and widespread application of medical in...
Abstract: In today’s scenario, disease prediction plays an important role in medical field. Early de...
With the advent of the data age, the continuous improvement and widespread application of medical in...
Time-to-event outcomes are prevalent in medical research. To handle these outcomes, as well as censo...
Currently, electronic medical instruments are widely used in hospitals, medical polyclinics and doct...
Currently, electronic medical instruments are widely used in hospitals, medical polyclinics and doct...
Currently, electronic medical instruments are widely used in hospitals, medical polyclinics and doct...
The volume of data generated and collected using modern technologies grows exponentially. This vast ...
The increasing size of datasets is particularly evident in the field of bioinformatics. It is unlike...
Heart disease is the deadliest disease and one of leading causes of death worldwide. Machine learnin...
This paper introduces a novel approach for assessing multiple patterns in biological imaging dataset...
During the recent years, a great advance in both biomedical data acquisition technologies and featur...
During the recent years, a great advance in both biomedical data acquisition technologies and featur...
The bootstrap aggregating procedure at the core of ensemble tree classifiers reduces, in most cases,...
The volume of data generated and collected using modern technologies grows exponentially. This vast ...
With the advent of the data age, the continuous improvement and widespread application of medical in...
Abstract: In today’s scenario, disease prediction plays an important role in medical field. Early de...
With the advent of the data age, the continuous improvement and widespread application of medical in...
Time-to-event outcomes are prevalent in medical research. To handle these outcomes, as well as censo...
Currently, electronic medical instruments are widely used in hospitals, medical polyclinics and doct...
Currently, electronic medical instruments are widely used in hospitals, medical polyclinics and doct...
Currently, electronic medical instruments are widely used in hospitals, medical polyclinics and doct...
The volume of data generated and collected using modern technologies grows exponentially. This vast ...
The increasing size of datasets is particularly evident in the field of bioinformatics. It is unlike...
Heart disease is the deadliest disease and one of leading causes of death worldwide. Machine learnin...
This paper introduces a novel approach for assessing multiple patterns in biological imaging dataset...