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   accurate autism spectrum disorder prediction using support vector classifier based on federated learning (svcfl)  
   
نویسنده mohammadifar ali ,samadbin hasan ,daliri arman
منبع اولين كنفرانس ملي پژوهش و نوآوري در هوش مصنوعي - 1402 - دوره : 1 - اولین کنفرانس ملی پژوهش و نوآوری در هوش مصنوعی - کد همایش: 02230-75197 - صفحه:0 -0
چکیده    The path to an autism diagnosis can be long and difficult, and delays can have serious consequences. artificial intelligence can completely change the way autism is diagnosed, especially when it comes to situations where it is difficult to see the first signs of the disease. ai-based diagnostic tools may help confirm a diagnosis or highlight the need for further testing by analyzing large volumes of data and uncovering patterns that may not be immediately apparent to human evaluators. after a successful and timely diagnosis, autism can be treated through artificial intelligence using various methods. in this article, by using 4 datasets and gathering them with the federated learning method and diagnosing them with the support vector classifier method, the early diagnosis of this disorder has been discussed. in this method, we have achieved 99% accuracy for predicting autism spectrum disorder and we have achieved 13% improvement in the results.
کلیدواژه autism spectrum disorder ,support vector classifier ,prediction ,federated learning ,svcal
آدرس , iran, , iran, , iran
پست الکترونیکی arman.daliri@kiau.ac.ir
 
     
   
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