期刊文献+
共找到3篇文章
< 1 >
每页显示 20 50 100
Automatic Text Summarization Using Genetic Algorithm and Repetitive Patterns 被引量:2
1
作者 Ebrahim Heidary Hamïd Parvïn +4 位作者 Samad Nejatian karamollah bagherifard Vahideh Rezaie Zulkefli Mansor Kim-Hung Pho 《Computers, Materials & Continua》 SCIE EI 2021年第4期1085-1101,共17页
Taking into account the increasing volume of text documents,automatic summarization is one of the important tools for quick and optimal utilization of such sources.Automatic summarization is a text compression process... Taking into account the increasing volume of text documents,automatic summarization is one of the important tools for quick and optimal utilization of such sources.Automatic summarization is a text compression process for producing a shorter document in order to quickly access the important goals and main features of the input document.In this study,a novel method is introduced for selective text summarization using the genetic algorithm and generation of repetitive patterns.One of the important features of the proposed summarization is to identify and extract the relationship between the main features of the input text and the creation of repetitive patterns in order to produce and optimize the vector of the main document features in the production of the summary document compared to other previous methods.In this study,attempts were made to encompass all the main parameters of the summary text including unambiguous summary with the highest precision,continuity and consistency.To investigate the efficiency of the proposed algorithm,the results of the study were evaluated with respect to the precision and recall criteria.The results of the study evaluation showed the optimization the dimensions of the features and generation of a sequence of summary document sentences having the most consistency with the main goals and features of the input document. 展开更多
关键词 Natural language processing extractive summarization features optimization repetitive patterns genetic algorithm
下载PDF
An Application Expert System for Evaluating Effective Factors on Trust in B2C WebsitesTrust, Security, ANFIS, Fuzzy Logic, Rule Based Systems, Electronic Commerce 被引量:4
2
作者 Mehrbakhsh Nilashi karamollah bagherifard +2 位作者 Othman Ibrahim Nasim Janahmadi Mousa Barisami 《Engineering(科研)》 2011年第11期1063-1071,共9页
In new environments of trading, customer's trust is vital for the extended progress and development of electronic commerce. This paper proposes that in addition to known factors of electronic commerce B2C websites... In new environments of trading, customer's trust is vital for the extended progress and development of electronic commerce. This paper proposes that in addition to known factors of electronic commerce B2C websites such a design of websites, security of websites and familiarity of website influence customers trust in online transactions. This paper presents an application of expert system on trust in electronic commerce. Based on experts’ judgment, a frame of work was proposed. The proposed model applies ANFIS and Mamdani inference fuzzy system to get the desired results and then results of two methods were compared. Two questionnaires were used in this study. The first questionnaire was developed for e-commerce experts, and the second one was designed for the customers of electronic websites. Based on AHP method, Expert Choice software was used to determine the priority of factors in the first questionnaire, and MATLAB and Excel were used for developing the fuzzy rules. Finally, the fuzzy logical kit was used to analyze the generated factors in the model. Our study findings show that trust in EC transactions is strongly mediated by perceived security. 展开更多
关键词 TRUST SECURITY ANFIS Fuzzy Logic Rule Based Systems Electronic COMMERCE
下载PDF
Automatic Persian Text Summarization Using Linguistic Features from Text Structure Analysis 被引量:1
3
作者 Ebrahim Heidary Hamïd Parvïn +2 位作者 Samad Nejatian karamollah bagherifard Vahideh Rezaie 《Computers, Materials & Continua》 SCIE EI 2021年第12期2845-2861,共17页
With the remarkable growth of textual data sources in recent years,easy,fast,and accurate text processing has become a challenge with significant payoffs.Automatic text summarization is the process of compressing text... With the remarkable growth of textual data sources in recent years,easy,fast,and accurate text processing has become a challenge with significant payoffs.Automatic text summarization is the process of compressing text documents into shorter summaries for easier review of its core contents,which must be done without losing important features and information.This paper introduces a new hybrid method for extractive text summarization with feature selection based on text structure.The major advantage of the proposed summarization method over previous systems is the modeling of text structure and relationship between entities in the input text,which improves the sentence feature selection process and leads to the generation of unambiguous,concise,consistent,and coherent summaries.The paper also presents the results of the evaluation of the proposed method based on precision and recall criteria.It is shown that the method produces summaries consisting of chains of sentences with the aforementioned characteristics from the original text. 展开更多
关键词 Natural language processing extractive summarization linguistic feature text structure analysis
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部