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   outlier detection in test samples and supervised training set selection  
   
نویسنده mohseni navid ,nematzadeh hossein ,akbari ebrahim
منبع international journal of nonlinear analysis and applications - 2021 - دوره : 12 - شماره : 1 - صفحه:701 -712
چکیده    ‎outlier detection is a technique for recognizing samples out of the main population within a data set‎. ‎outliers have negative impacts on classification‎. ‎the recognized outliers are deleted to improve the classification power generally‎. ‎this paper proposes a method for outlier detection in test samples besides a supervised training set selection‎. ‎training set selection is done based on the intersection of three well known similarity measures namely‎, ‎jacquard‎, ‎cosine‎, ‎and dice‎. ‎each test sample is evaluated against the selected training set for possible outlier detection‎. ‎the selected training set is used for a two-stage classification‎. ‎the accuracy of classifiers are increased after outlier deletion‎. ‎the majority voting function is used for further improvement of classifiers‎.
کلیدواژه ‎outlier detection‎، ‎training set selection‎، ‎similarity measures‎
آدرس islamic azad university‎, ‎babol branch‎, department of computer engineering‎, iran, ‎islamic azad university‎, ‎sari branch‎, department of computer engineering‎, iran, ‎islamic azad university‎, ‎sari branch‎, department of computer engineering‎, iran
پست الکترونیکی akbari@iausari.ac.ir
 
     
   
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