Self-Advising SVM for Sleep Apnea Classification

نویسندگان

  • Yashar Maali
  • Adel Al-Jumaily
  • Leon Laks
چکیده

In this paper Self-Advising SVM, a new proposed version of SVM, is investigated for sleep apnea classification. Self-Advising SVM tries to transfer more information from training phase to the test phase in compare to the traditional SVM. In this paper Sleep apnea events are classified to central, obstructive or mixed, by using just three signals, airflow, abdominal and thoracic movement, as inputs. Statistical tests show that self-advising SVM performs better than traditional SVM in sleep apnea classification.

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تاریخ انتشار 2012