Analysis and mining of low-carbon and energy-saving tourism data
characteristics based on machine learning algorithm
- URL: http://arxiv.org/abs/2312.03037v1
- Date: Mon, 4 Dec 2023 14:32:54 GMT
- Title: Analysis and mining of low-carbon and energy-saving tourism data
characteristics based on machine learning algorithm
- Authors: Lukasz Wierzbinski
- Abstract summary: This paper proposes a low-carbon energy-saving travel data feature analysis and mining based on machine learning algorithm.
The author uses K-means clustering algorithm to classify the intensity of residents' low-carbon travel willingness.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In order to study the formation mechanism of residents' low-carbon awareness
and provide an important basis for traffic managers to guide urban residents to
choose low-carbon travel mode, this paper proposes a low-carbon energy-saving
travel data feature analysis and mining based on machine learning algorithm.
This paper uses data mining technology to analyze the data of low-carbon travel
questionnaire, and regards the 15-dimensional problem under the framework of
planned behavior theory as the internal cause variable that characterizes
residents' low-carbon travel willingness. The author uses K-means clustering
algorithm to classify the intensity of residents' low-carbon travel
willingness, and applies the results as the explanatory variables to the random
forest model to explore the mechanism of residents' social attribute
characteristics, travel characteristics, etc. on their low-carbon travel
willingness. The experimental results show that based on the Silhouette index
test and t-SNE dimensionality reduction, residents' low-carbon travel
willingness can be divided into three categories: strong, neutral, and not
strong; Based on the importance index, the four most significant factors are
the occupation, residence, family composition and commuting time of residents.
Conclusion: This method provides policy recommendations for the development and
management of urban traffic low-carbon from multiple perspectives.
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