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      Internet Tourism Resource Retrieval Using PageRank Search Ranking Algorithm

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      Complexity
      Hindawi Limited

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          Abstract

          At present, there is a wide variety of tourism resources on the Internet. Tourism management departments must monitor these resources. At the same time, tourists must also retrieve personalized information that they are interested in. This requires a lot of time and energy. This essay studies and implements the tourism network resource monitoring system. The main work completed in the thesis proposes and constructs a topic collection algorithm and establishes a starting point, topic keywords, and a prediction mechanism. The algorithm includes three stages: the first climbing stage, the learning stage, and the continuous climbing stage. Open category directory search is used for similarity judgment and result evaluation. The experimental results show that with the continuous execution of the crawling process, the collection speed of related pages is getting faster and faster. We propose an algorithm for the extraction of wood based on the density of Internet tourism resources. The algorithm calculates the ratio of Internet tourism resource labels by row and uses a threshold extraction algorithm to distinguish area from private non-Internet tourism resource area. Experimental results show that the algorithm can successfully extract the main content of the article from a wide variety of web pages. This thesis takes the monitoring of tourism network resources as the research object and establishes a tourism network resource monitoring system, which can provide users with customizable, all-round, and real-time tourism network resource collection, extraction, and retrieval services so as to monitor tourism resources. The research results of this article can promote the construction of tourism informatization and can help users grasp the latest tourism information, thereby bringing great convenience to tourism. The system only downloads travel-related information through the use of topic collection technology, reducing the interference of irrelevant redundant web pages.

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          Most cited references36

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          Electronic word-of-mouth in hospitality and tourism management

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            Applying centrality measures to impact analysis: A coauthorship network analysis

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              MRMD2.0: A Python Tool for Machine Learning with Feature Ranking and Reduction

              The study aims to find a way to reduce the dimensionality of the dataset. Dimensionality reduction is the key issue of the machine learning process. It does not only improve the prediction performance but also could recommend the intrinsic features and help to explore the biological expression of the machine learning “black box”. A variety of feature selection algorithms are used to select data features to achieve dimensionality reduction. First, MRMD2.0 integrated 7 different popular feature ranking algorithms with PageRank strategy. Second, optimized dimensionality was detected with forward adding strategy. We have achieved good results in our experiments. Several works have been tested with MRMD2.0. It showed well performance. Otherwise, it also can draw the performance curves according to the feature dimensionality. If users want to sacrifice accuracy for fewer features, they can select the dimensionality from the performance curves. We developed friendly python tools together with the web server. The users could upload their csv, arff or libsvm format files. Then the webserver would help to rank features and find the optimized dimensionality.
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                Author and article information

                Contributors
                Journal
                Complexity
                Complexity
                Hindawi Limited
                1099-0526
                1076-2787
                May 26 2021
                May 26 2021
                : 2021
                : 1-11
                Affiliations
                [1 ]School of Tourism, Guangdong Polytechnic of Science and Technology, ZhuHai 519090, China
                Article
                10.1155/2021/5114802
                dcb1065c-3a73-440b-be6c-a56ecd81d86e
                © 2021

                https://creativecommons.org/licenses/by/4.0/

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