پژوهشی مروری بر حوزههای پردازشی متون روایی
محورهای موضوعی : فناوری اطلاعات و دانشسپیده برادران هزاوه 1 , بهروز مینایی بیدگلی 2 * , محمد ابراهیم شناسا 3 , سید علی حسینی 4
1 - دانشگاه آزاد واحد علوم و تحقیقات تهران
2 - دانشگاه علم و صنعت ایران
3 - دانشگاه آزاد واحد تهران-شمال
4 - دانشگاه علم و صنعت ایران
کلید واژه: حدیث, صحت متن, سند, راوی, پیکره حدیث,
چکیده مقاله :
جهت سهولت و رسیدن به دقت بالاتر و زمان پردازش کمتر، ارزیابی صحت حدیث به روشهای هوشمند توصیه میشود. با توجه به حجم قابل توجه متون روایی و مفاهیم و روابط پیچیده موجود در آنها، تاکنون پژوهشهای فراوانی در حوزه پردازش خودکار حدیث انجام شده است. در این حوزه، عدهای از محققان در زمینههای پردازش متن و سند، شیوههای هوشمندی را آزمایش کردهاند، که با توجه به مرور تحقیقات پیشین، حدود 47% از آنان در خصوص پردازش متن احادیث و 46% در مورد پردازش سند احادیث و 7% در هر دو حوزه پژوهش نمودهاند. با بررسی 97 پژوهش در حوزه پردازش احادیث، مشخص شد که احادیث در حوزه سنجش صحت متن یا سند یا هر دو مورد، ارزیابی شدهاند. وظایف پردازش را میتوان به دستههای مختلفی از جمله ساخت هستانشناسی، ردهبندی متن حدیث، تشابهات حدیثی و اعتبارسنجی احادیث طبقه بندی نمود. پرکاربردترین روش پردازشی حدیث، روش بازیابی اطلاعات در حوزه پردازش متن حدیث بوده است.
In order to facilitate and achieve higher precision and less processing time, it is recommended to evaluate the authenticity of hadith by intelligent methods. Due to the huge volume of narrative texts (hadith) and the complex concepts and relationships in them, many researches have been conducted in the field of automatic hadith processing. In this field, some researchers have evaluated intelligent methods in the fields of Matn (text) and Isnad processing, which according to the review of previous researches, about 47% of them in the field of hadith text processing and 46% in the case of Isnad processing of hadiths and 7% have done research in both fields. By examining 97 researches in the field of processing hadiths, it was found that hadiths were evaluated in the field of measuring the accuracy of the text or Isnad or both cases. Processing tasks can be classified into different categories such as ontology construction, hadith text classification, hadith similarities and hadith authentication. The most used hadith processing method has been the information retrieval method in the field of hadith text processing.
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