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Content Feature Extraction-based Hybrid Recommendation for Mobile Application Services 被引量:1
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作者 Chao Ma YinggangSun +3 位作者 Zhenguo Yang Hai Huang Dongyang Zhan Jiaxing Qu 《Computers, Materials & Continua》 SCIE EI 2022年第6期6201-6217,共17页
The number of mobile application services is showing an explosive growth trend,which makes it difficult for users to determine which ones are of interest.Especially,the new mobile application services are emerge conti... The number of mobile application services is showing an explosive growth trend,which makes it difficult for users to determine which ones are of interest.Especially,the new mobile application services are emerge continuously,most of them have not be rated when they need to be recommended to users.This is the typical problem of cold start in the field of collaborative filtering recommendation.This problem may makes it difficult for users to locate and acquire the services that they actually want,and the accuracy and novelty of service recommendations are also difficult to satisfy users.To solve this problem,a hybrid recommendation method for mobile application services based on content feature extraction is proposed in this paper.First,the proposed method in this paper extracts service content features through Natural Language Processing technologies such as word segmentation,part-of-speech tagging,and dependency parsing.It improves the accuracy of describing service attributes and the rationality of the method of calculating service similarity.Then,a language representation model called Bidirectional Encoder Representation from Transformers(BERT)is used to vectorize the content feature text,and an improved weighted word mover’s distance algorithm based on Term Frequency-Inverse Document Frequency(TFIDF-WMD)is used to calculate the similarity of mobile application services.Finally,the recommendation process is completed by combining the item-based collaborative filtering recommendation algorithm.The experimental results show that by using the proposed hybrid recommendation method presented in this paper,the cold start problem is alleviated to a certain extent,and the accuracy of the recommendation result has been significantly improved. 展开更多
关键词 service recommendation cold start feature extraction natural language processing word mover’s distance
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Trust-Based Personalized Service Recommendation: A Network Perspective 被引量:3
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作者 邓水光 黄龙涛 +1 位作者 吴健 吴朝晖 《Journal of Computer Science & Technology》 SCIE EI CSCD 2014年第1期69-80,共12页
Recent years have witnessed a growing trend of Web services on the Interact. There is a great need of effective service recommendation mechanisms. Existing methods mainly focus on the properties of individual Web serv... Recent years have witnessed a growing trend of Web services on the Interact. There is a great need of effective service recommendation mechanisms. Existing methods mainly focus on the properties of individual Web services (e.g., func- tional and non-functional properties) but largely ignore users' views on services, thus failing to provide personalized service recommendations. In this paper, we study the trust relationships between users and Web services using network modeling and analysis techniques. Based on the findings and the service network model we build, we then propose a collaborative filtering algorithm called Trust-Based Service Recommendation (TSR) to provide personalized service recommendations. This systematic approach for service network modeling and analysis can also be used for other service recommendation studies. 展开更多
关键词 personalized service recommendation trust network modeling and analysis collaborative filtering
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Extracting Relevant Terms from Mashup Descriptions for Service Recommendation
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作者 Yang Zhong Yushun Fan 《Tsinghua Science and Technology》 SCIE EI CAS CSCD 2017年第3期293-302,共10页
Due to the exploding growth in the number of web services, mashup has emerged as a service composition technique to reuse existing services and create new applications with the least amount of effort. Service recommen... Due to the exploding growth in the number of web services, mashup has emerged as a service composition technique to reuse existing services and create new applications with the least amount of effort. Service recommendation is essential to facilitate mashup developers locating desired component services among a large collection of candidates. However, the majority of existing methods utilize service profiles for content matching, not mashup descriptions. This makes them suffer from vocabulary gap and cold-start problem when recommending components for new mashups. In this paper, we propose a two-step approach to generate high-quality service representation from mashup descriptions. The first step employs a linear discriminant function to assign each term with a component service such that a coarse-grained service representation can be derived. In the second step, a novel probabilistic topic model is proposed to extract relevant terms from coarse-grained service representation. Finally, a score function is designed based on the final high-quality representation to determine recommendations. Experiments on a data set from ProgrammableWeb.com show that the proposed model significantly outperforms state-of-the-art methods. 展开更多
关键词 service recommendation topic model mashup descriptions linear discriminant function
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Research on Service Recommendation Method Based on Cloud Model Time Series Analysis
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作者 Zhiwu Zheng Jing Yao Hua Zhang 《国际计算机前沿大会会议论文集》 2020年第1期655-665,共11页
The problem of information overload is becoming increasingly prominent,and recommendation systems are developing rapidly in various fields.How to find the most user-friendly services has become the focus.Service recom... The problem of information overload is becoming increasingly prominent,and recommendation systems are developing rapidly in various fields.How to find the most user-friendly services has become the focus.Service recommendation based on QoS is an important technology to select appropriate services for users.In this paper,a service selection method based on time series analysis of cloud model is proposed.Firstly,the noise was removed by clustering algorithm,clustering was divided,and similar user sets were obtained.Then,the cloud model was established by using similar user history data in different periods,and the comprehensive cloud model was obtained by combining time decay function.Finally,the recommended service was obtained by comparing TOPSIS method with ideal cloud model.The experimental results on WS-Dream dataset show that the accuracy of recommendation is improved compared with the existing recommendation algorithms. 展开更多
关键词 Cloud model Time series Clustering algorithm service recommendation
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A Time-Aware Dynamic Service Quality Prediction Approach for Services 被引量:5
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作者 Ying Jin Weiguang Guo Yiwen Zhang 《Tsinghua Science and Technology》 SCIE EI CAS CSCD 2020年第2期227-238,共12页
Dynamic Quality of Service(QoS)prediction for services is currently a hot topic and a challenge for research in the fields of service recommendation and composition.Our paper addresses the problem with a Time-aWare se... Dynamic Quality of Service(QoS)prediction for services is currently a hot topic and a challenge for research in the fields of service recommendation and composition.Our paper addresses the problem with a Time-aWare service Quality Prediction method(named TWQP),a two-phase approach with one phase based on historical time slices and one on the current time slice.In the first phase,if the user had invoked the service in a previous time slice,the QoS value for the user calling the service on the next time slice is predicted on the basis of the historical QoS data;if the user had not invoked the service in a previous time slice,then the Covering Algorithm(CA)is applied to predict the missing values.In the second phase,we predict the missing values for the current time slice according to the results of the previous phase.A large number of experiments on a real-world dataset,WS-Dream,show that,when compared with the classical QoS prediction algorithms,our proposed method greatly improves the prediction accuracy. 展开更多
关键词 dynamic Quality of service(QoS)prediction time-aware service recommendation
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Recommend trustworthy services using interval numbers of four parameters via cloud model for potential users 被引量:2
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作者 Hua MA Zhigang HU 《Frontiers of Computer Science》 SCIE EI CSCD 2015年第6期887-903,共17页
How to discover the trustworthy services is a challenge for potential users because of the deficiency of us- age experiences and the information overload of QoE (qual- ity of experience) evaluations from consumers. ... How to discover the trustworthy services is a challenge for potential users because of the deficiency of us- age experiences and the information overload of QoE (qual- ity of experience) evaluations from consumers. Aiming to the limitations of traditional interval numbers in measuring the trustworthiness of service, this paper proposed a novel ser- vice recommendation approach using the interval numbers of four parameters (INF) for potential users. In this approach, a trustworthiness cloud model was established to identify the eigenvalue of INF via backward cloud generator, and a new formula of INF possibility degree based on geometrical anal- ysis was presented to ensure the high calculation precision. In order to select the highly valuable QoE evaluations, the similarity of client-side feature between potential user and consumers was calculated, and the multi-attributes trustwor- thiness values were aggregated into INF by the fuzzy ana- lytic hierarchy process method. On the basis of ranking INF, the sort values of trustworthiness of candidate services were obtained, and the trustworthy services were chosen to recommend to potential user. The experiments based on a real-world dataset showed that it can improve the recommendation accuracy of trustworthy services compared to other approaches, which contributes to solving cold start and information overload problem in service recommendation. 展开更多
关键词 service recommendation trustworthiness interval numbers of four parameters cloud model potential users
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