Manhua Yang’s research while affiliated with Taizhou University and other places

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Publications (1)


Intelligent recommendation feature map method for tourist attractions based on deep learning.
Intelligent recommendation for multiple linear regression performance in tourist attractions based on deep learning.
Average accuracy rate and average completeness rate intelligent recommendation method for tourist attractions based on deep learning.
Tourist attractions based on deep learning recall values for recommended systems are compared with huge tourist attractions visual filtering results.
Advanced predictive model.
An Intelligent Recommendation Method for Tourist Attractions Based on Deep Learning
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May 2022

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2 Citations

Computational Intelligence and Neuroscience

Manhua Yang

Tourists are the people who can be seen all over the world. Therefore, this has increased the demand for product supply in tourist locations. Technological development would be the only solution to solve those issues related to the demand and supply of the products. Furthermore, a tourist needs enough information about the country he wishes to travel. Some specific data required include hotels, destinations, malls, and tourist places, and they are needed before they land on the tourist country. The data collection can be achieved by applying trending technologies such as deep learning algorithms and some intelligent systems. Furthermore, the tourist may collect information about the locations through feasible devices such as laptops and mobile phones. Among the varying devices and technologies, the most preferred and convenient device should be carried wherever they travel with ease. For example, cellular phones may be considered the easiest modem to carry and use with this specification. In this perspective, the lightweight deep learning model will make significant technology access to resources. Typically, deep learning models are designed with the prospect of extracting the features, potentially to create easy tool access within the mobile accessing service. Visual Bayesian Personalized Ranking (VBPR) Algorithm using DL is implemented for initiating the recommendation system for tourist attractions in any given location. The proposed model was compared with various existing algorithms, and it was found that the proposed system had delivered 98.56% of accurate recommendations for tourist travelers.

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Citations (1)


... The personalized travel recommendation system based on a knowledge graph and deep learning combines the current popular knowledge graph and deep learning to discover the connection between each tourist attraction through the knowledge graph and then use deep learning to mine the user's interest preference for the attraction on the knowledge graph to achieve personalized recommendation for the user. This system targets the data of tourist attractions and analyzes the user's interest preferences of attractions through the user's behavioral data in this system to provide the users of tourism with assistance in decision making and better solve the problem of foreign tourists to selecting the attractions they are interested in from many tourist attractions in a limited time [19][20]. ...

Reference:

Innovative Research on Deep Learning Algorithm in Intelligent Attractions Recommendation Technology
An Intelligent Recommendation Method for Tourist Attractions Based on Deep Learning

Computational Intelligence and Neuroscience