Artificial Intelligence - هوش مصنوعی

Artificial Intelligence - هوش مصنوعی (http://artificial.ir/intelligence/)
-   الگوريتم بهينه سازي فاخته (Cuckoo Optimization Algorithm) (http://artificial.ir/intelligence/forum133.html)
-   -   طبقه بندي سرطان با استفاه از انتخاب ژن با استفاده از coa (http://artificial.ir/intelligence/thread13746.html)

ramin4251 ۰۴-۶-۱۳۹۴ ۱۱:۰۲ قبل از ظهر

طبقه بندي سرطان با استفاه از انتخاب ژن با استفاده از coa
 
Cancer classification using a novel gene selection approach by means of shuffling based on data clustering with optimization


Abstract:
This research presents an innovative method for cancer identification and type classification using microarray data. The method is based on gene selection with shuffling in association with optimization based unconventional data clustering. A new hybrid optimization algorithm, COA-GA, is developed by synergizing recently invented Cuckoo Optimization Algorithm (COA) with a more traditional genetic algorithm (GA) for data clustering to select the most dominant genes using shuffling. For gene classification, Support Vector Machine (SVM) and Multilayer Perceptron (MLP) artificial neural networks are used. Literature suggests that data clustering using traditional approaches such as K-means, C-means and Hierarchical do not have any impact on classification accuracy. This is also confirmed in this investiga-tion. However, results show that optimization based clustering with shuffling increase the classification accuracy significantly. The proposed algorithm (COA-GA) not only outperforms COA, GA and Particle Swarm optimization (PSO) in achieving better classification performance but also reaches a better global minimum with only few iterations. Higher accuracy is observed to have achieved with SVM classifier compared to MLP in all datasets used.


دانلود فايل مقاله


زمان محلي شما با تنظيم GMT +3.5 هم اکنون ۰۵:۴۳ بعد از ظهر ميباشد.

Powered by vBulletin® Version 3.8.3
Copyright ©2000 - 2025, Jelsoft Enterprises Ltd.
Search Engine Friendly URLs by vBSEO 3.1.0 ©2007, Crawlability, Inc.