Refining Travel Suggestions using Python

M. Ramaraju, L Rudramadevi, M. Shirisha, M Harshavardhan, A Raju
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引用次数: 0

Abstract

In the era of personalized travel experiences, the need for intelligent and adaptive planning tools is paramount. This is developed using Python, harnesses the power of machine learning to analyse traveller preferences and patterns, offering customized destination suggestions. The core of this study is to demonstrate how machine learning can transform traditional travel planning into a more efficient, personalized experience. By integrating user data and preferences, the system proposes itineraries that not only align with individual interests but also enhance the overall travel experience. This details the development process, the machine learning techniques employed, and the efficacy of Python in creating a dynamic and responsive travel planning website. The goal is to enhance the user experience in planning trips by providing optimizing destination suggestions, considering factors like historical preferences, budget constraints, and time availability.
使用 Python 精炼旅行建议
在个性化旅游体验时代,最需要的是智能化、适应性强的规划工具。这项研究使用 Python 开发,利用机器学习的力量分析旅行者的偏好和模式,提供定制的目的地建议。这项研究的核心是展示机器学习如何将传统的旅行规划转变为更高效、更个性化的体验。通过整合用户数据和偏好,系统提出的行程不仅符合个人兴趣,还能提升整体旅行体验。本文详细介绍了开发过程、所采用的机器学习技术以及 Python 在创建动态、响应式旅行规划网站方面的功效。其目标是在考虑历史偏好、预算限制和时间可用性等因素的基础上,提供优化的目的地建议,从而提升用户的旅行规划体验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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