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Keywords: 方法发展
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Journal Articles
Hotel demand forecasting: a comprehensive literature review
Available to Purchase
Journal:
Tourism Review
Tourism Review (2023) 78 (1): 218–244.
Published: 29 November 2022
...旨在对酒店需求预测进行全面回顾, 以确定其关键基础和演变以及未来的研究方向和趋势, 以推动该领域的发展。 设计/方法/方法 使用严格和透明的纳入和排除的标准对酒店需求建模和预测的文章进行识别和选择。通过内容分析, 最终有 85个实证研究作为综合分析的样本。 研究结果 综合文献发现, 基于历史需求数据的酒店预测在研究中占主导地位, 近年来预订/取消数据和组合数据逐渐引起研究关注。在模型演化方面, 时间序列和基于人工智能的模型是最受欢迎的酒店需求预测模型。审查结果表明, 许多研究都集中在混合模型和基于 AI 的模型上。 原创性/价值 本研究是第一次从数据源和方法发展的角度对酒店需求预测文献进行系统...
