دوره 19، شماره 2 - ( 7-1401 )                   جلد 19 شماره 2 صفحات 196-175 | برگشت به فهرست نسخه ها


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Zare Chahooki M A, khalifeh zadeh Z. A General Investigation on the Combination of Local and Global Feature Selection Methods for Request Identification on Telegram. JSDP 2022; 19 (2) : 12
URL: http://jsdp.rcisp.ac.ir/article-1-1110-fa.html
زارع چاهوکی محمدعلی، خلیفه زاده زهرا. بررسی جامع ترکیب روش‌های محلی ‌و ‌سراسری انتخاب ویژگی برای شناسایی درخواست در تلگرام. پردازش علائم و داده‌ها. 1401; 19 (2) :175-196

URL: http://jsdp.rcisp.ac.ir/article-1-1110-fa.html


گروه مهندسی کامپیوتر، دانشکده فنی و مهندسی، دانشگاه یزد
چکیده:   (1025 مشاهده)
تلگرام سرویس پیام‌رسان متن‌بازی مبتنی بر رایانش ابری است. تلگرام به دلایلی همچون پشتیبانی از زبان­ها، امکان ایجاد گروه و کانال با تعداد کاربران متعدد، به پیام‌رسانی محبوب و پرکاربرد تبدیل ‌شد. داده‌های متنی زیادی که در گروه‌های تلگرامی وجود دارد حاوی دانش پنهانی هستند. استخراج این دانش‌ها، نظیر درخواست‌های موجود در پیام‌های کاربران می‌تواند سودمند باشد. لذا با شناسایی درخواست‌ها می‌توان به نیازهای کاربران پاسخ داد و به دسترسی سریع آن‌ها به خواسته‌هایشان کمک کرد که این امر موجب توسعه کسب‌وکار کاربران می‌شود. با توجه به ابعاد بالای فضای ویژگی‌ها در داده‌های متنی، کاهش ویژگی‌ها از طریق انتخاب ویژگی ضرورت می­یابد. از روش‌های انتخاب ویژگی، دو روش مبتنی برفیلتر محلی و سراسری انتخاب شد. با بررسی و ترکیب پرکاربردترین آن­ها به زیرمجموعه بهینه­ای از ویژگی‌های بااهمیت دست ‌یافتیم. این روش ترکیبی، با کاهش بهینه ویژگی­ها سبب افزایش دقت در شناسایی درخواست، افزایش کارایی دسته‌بندی متن، کاهش زمان آموزش و محاسبات شد.
 
شماره‌ی مقاله: 12
متن کامل [PDF 1656 kb]   (168 دریافت)    
نوع مطالعه: كاربردي | موضوع مقاله: مقالات پردازش متن
دریافت: 1398/10/22 | پذیرش: 1399/12/12 | انتشار: 1401/7/8 | انتشار الکترونیک: 1401/7/8

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