An Effective Model for Forecasting Travel Consumer Demand Using Big Data Analysis

IF 0.5 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Advances in Data Science and Adaptive Analysis Pub Date : 2022-03-19 DOI:10.1142/s2424922x22500048
Huixia Yu
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Abstract

As a result of gathering information from multiple consumer centers, big data (BD) assists in analyzing traveler patterns and developing a unique marketing plan tailored to the target demographic. BD tourism forecasting is a relatively new academic field because of the challenges in capturing, gathering, and modeling this sort of data due to its inherent privacy and economic importance. The growth rate of cruise tourists has slowed down after years of rapid expansion. Investing in homeports, cruise ships, and promotional activities carries a growing danger of financial loss. To make investment decisions and prepare for the future, it is necessary to predict tourism demand. We present the least-squares vector regression (LSVR) model with the gravitational search method for forecasting demand for cruise tourism (FCT) based on BD to improve forecasting performance. As a part of the proposed model forecasting demand for cruise tourism based on big data (FDCT-BD), hyper-parameters of the LSVR model are improved using an algorithm and by comparing these models with various configuration combinations. This paper forecasts tourist arrivals based on internet BD from a search engine and online review platforms and the comparative advantage of multi-platform forecasting over single-platform forecasting based on online review data. However, the results show that the methodology’s recommended framework is successful and that BD may estimate cruise tourist demand with enhanced performance and accuracy 93.8% and 97.9%, respectively.
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基于大数据分析的旅游消费需求预测模型
通过从多个消费者中心收集信息,大数据(BD)可以帮助分析旅行者模式,并根据目标人群制定独特的营销计划。BD旅游预测是一个相对较新的学术领域,由于其固有的隐私性和经济重要性,在捕获、收集和建模这类数据方面存在挑战。经过多年的快速增长,邮轮游客的增长速度已经放缓。投资于母港、游轮和促销活动会带来越来越大的经济损失风险。为了做出投资决策,为未来做好准备,有必要对旅游需求进行预测。为了提高邮轮旅游需求预测的准确性,提出了基于BD的引力搜索最小二乘向量回归(LSVR)模型。作为提出的基于大数据的邮轮旅游需求预测模型(FDCT-BD)的一部分,利用一种算法改进LSVR模型的超参数,并将这些模型与各种配置组合进行比较。本文从搜索引擎和在线评论平台两方面对基于互联网BD的游客数量进行预测,并分析了多平台预测相对于基于在线评论数据的单平台预测的比较优势。然而,结果表明,该方法推荐的框架是成功的,BD估计邮轮游客需求的性能和准确性分别提高了93.8%和97.9%。
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来源期刊
Advances in Data Science and Adaptive Analysis
Advances in Data Science and Adaptive Analysis MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-
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