Open Access

Big Data-Driven Dynamic Analysis of Tourist Behavioral Trajectories and Intelligent Service Strategies in Tourist Attractions

  
Mar 17, 2025

Cite
Download Cover

Figure 1.

The impact of different context factors on tourist recommendations
The impact of different context factors on tourist recommendations

Figure 2.

The effect of the interest point category intelligent service recommendation
The effect of the interest point category intelligent service recommendation

Figure 3.

The tourist clustering results analyzed the statistics
The tourist clustering results analyzed the statistics

Figure 4.

Class a tourist preference analysis regression results
Class a tourist preference analysis regression results

Figure 5.

The regression results of the two tourist preferences analysis
The regression results of the two tourist preferences analysis

Figure 6.

Category three tourist preference analysis regression results
Category three tourist preference analysis regression results

Information description of tourist portraits

User portrait information Attribute Describe
Basic information Gender The classification variable, 1= "male, 2=" female"
Age Class variable, 1= under 18,2=Between 18 and 25,3=, Between 25 and 35,4=, Between 35 and 60,5= over 60 years old.
Educational background Grade variables,1= "junior high school and below;2= "high school and secondary school;3="Bachelor’s degree and junior college;4="Graduate student"
Travel characteristics Pedestrian The classification variable, 1= friend, 2= family, 3= parents,4= Couple,5= One person
Travel cost Numerical variables, the average daily travel cost of tourists
Cognitive degree Cognitive level The numerical variable, 1= "very low," 2 = "low, 3=" general, "4=" high, "5=" very high"
Occupation The classification variable, 0= "no,"1= "yes"
Trajectory information Tourist attraction Nominal variable, tourist attractions
Playtime The number of variables, the visitor’s stay in a scenic spot
Language:
English