شما هنوز به سایت وارد نشده اید.
سه شنبه 13 آذر 1403
ورود به سایت
آمار سایت
بازدید امروز: 26,375
بازدید دیروز: 21,092
بازدید کل: 157,907,076
کاربران عضو: 0
کاربران مهمان: 132
کاربران حاضر: 132
Discovering business intelligence from online product reviews: A rule-induction framework
Abstract:

Online product reviews are a major source of business intelligence (BI) that helps managers and marketers understand customers’ concerns and interests. The large volume of review data makes it difficult to manually analyze customers’ concerns. Automated tools have emerged to facilitate this analysis, however most lack the capability of extracting the relationships between the reviews’ rich expressions and the customer ratings. Managers and marketers often resort to manually read through voluminous reviews to find the relationships. To address these challenges, we propose the development of a new class of BI systems based on rough set theory, inductive rule learning, and information retrieval methods. We developed a new framework for designing BI systems that extract the relationship between the customer ratings and their reviews. Using reviews of different products from Amazon.com, we conducted both qualitative and quantitative experiments to evaluate the performance of a BI system developed based on the framework. The results indicate that the system achieved high accuracy and coverage related to rule quality, and produced interesting and informative rules with high support and confidence values. The findings have important implications for market sentiment analysis and e-commerce reputation management

Keywords: E-commerce Online reviews Data mining Text mining Association rule mining Rough set theory Business intelligence Online reputation
Author(s): .
Source: Expert Systems with Applications 39 (2012) 11870–11879
Subject: تجارت الکترونیک
Category: مقاله مجله
Release Date: 2012
No of Pages: 10
Price(Tomans): 0
بر اساس شرایط و ضوابط ارسال مقاله در سایت مدیر، این مطلب توسط یکی از نویسندگان ارسال گردیده است. در صورت مشاهده هرگونه تخلف، با تکمیل فرم گزارش تخلف حقوق مؤلفین مراتب را جهت پیگیری اطلاع دهید.
 

کرمانشاه گشت - اولین سامانه جامع گردشگری استان کرمانشاه