盈利能力和入住率最大化:利用回归技术和自然语言处理为 Airbnb 房东制定最佳定价策略

Q4 Business, Management and Accounting
Luca Di Persio, Enis Lalmi
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引用次数: 0

摘要

在 Airbnb 房源的竞争格局中,优化房源定价策略是一项复杂的挑战,需要在高入住率的前提下实现收入最大化。本研究旨在引入一种利用大数据和机器学习技术的解决方案,帮助房东提高其房产的市场表现。我们的主要目标是推出一种解决方案,帮助业主更好地了解其物业在城市环境中的市场价值,从而优化其房源的利用率和盈利能力。我们采用了一种多方面的方法,利用支持向量回归、XGBoost 和神经网络等多种模型来分析位置、房东属性和客人评论等因素对房源财务业绩的影响。为了进一步完善我们的预测模型,我们整合了自然语言处理技术来进行深入的列表评论分析,重点是词频-反向文档频率(TF-IDF)、词包和基于方面的情感分析。通过整合这些技术,可以进行深入的列表评论分析,提供有关客人偏好和满意度的细微洞察。我们的研究结果表明,AirBnB 房东可以有效利用最先进和传统的机器学习算法,更好地了解客户需求和偏好,更准确地评估房源的市场价值,并关注动态定价策略的重要性。通过采用这种数据驱动的方法,房东可以在保持有竞争力的定价和确保高入住率之间取得平衡。这种方法不仅能提高收入潜力,还有助于提高客人满意度,并在共享经济中不断扩大数据驱动决策领域,专门应对短期租赁的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Maximizing Profitability and Occupancy: An Optimal Pricing Strategy for Airbnb Hosts Using Regression Techniques and Natural Language Processing
In the competitive landscape of Airbnb hosting, optimizing pricing strategies for properties is a complex challenge that requires revenue maximization with high occupancy rates. This research aimed to introduce a solution that leverages big data and machine learning techniques to help hosts improve their property’s market performance. Our primary goal was to introduce a solution that can augment property owners’ understanding of their property’s market value within their urban context, thereby optimizing both the utilization and profitability of their listings. We employed a multi-faceted approach with diverse models, including support vector regression, XGBoost, and neural networks, to analyze the influence of factors such as location, host attributes, and guest reviews on a listing’s financial performance. To further refine our predictive models, we integrated natural language processing techniques for in-depth listing review analysis, focusing on term frequency-inverse document frequency (TF-IDF), bag-of-words, and aspect-based sentiment analysis. Integrating such techniques allowed for in-depth listing review analysis, providing nuanced insights into guest preferences and satisfaction. Our findings demonstrated that AirBnB hosts can effectively utilize both state-of-the-art and traditional machine learning algorithms to better understand customer needs and preferences, more accurately assess their listings’ market value, and focus on the importance of dynamic pricing strategies. By adopting this data-driven approach, hosts can achieve a balance between maintaining competitive pricing and ensuring high occupancy rates. This method not only enhances revenue potential but also contributes to improved guest satisfaction and the growing field of data-driven decisions in the sharing economy, specially tailored to the challenges of short-term rentals.
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来源期刊
CiteScore
4.50
自引率
0.00%
发文量
512
审稿时长
11 weeks
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