Refining Travel Suggestions using Python

Author:

M. Ramaraju 1,L Rudramadevi 1,M Shirisha 1,M Harshavardhan 2,A Raju 1

Affiliation:

1. Christu Jyothi Institute of Technology & Science, Jangaon, Telangana, India

2. Christu Jyothi Institute of Technology and Science, Jangaon, Telangana, India

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.

Publisher

Naksh Solutions

Reference5 articles.

1. [1] "Machine Learning for Absolute Beginners: A Plain English Introduction (Second Edition)" by Oliver

2. [2] "Machine Learning (in Python and R) For Dummies"

3. [3] Lim, K.H. and collaborators present a novel approach in their paper "Personalized trip recommendation for tourists based on user interests and points of interest visit durations and visit recency" (2011)

4. [4] "Python Machine Learning By Example" by Yuxi (Hayden) Liu, now in its third edition from Packet Publishing

5. [5] In this paper "Recommending tours and places-of-interest based on user interests from geo-tagged photos" (2015), Lim, K.H.

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