基于k近邻和余弦相似度的航空业推荐系统

Z. Mundargi, Shubham Mulay, Dnyaneshwari Navale, Vishwam Talnikar, Akhilesh Nawale, Vishal Sonkusale
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引用次数: 1

摘要

航空业最近随着旅游业的蓬勃发展而蓬勃发展。然而,游客们对于在众多选择中选择最好的航空公司感到困惑。现有的系统只是比较价格,分析与之相关的过去数据,并做出相应的预测。我们专注于通过调查得出的多变量数据的计算分析,以进行推荐。我们的方法是开发一个系统,该系统将推荐一个在每个人中都是最高的航空公司。广泛的选择标准是基于服务质量、网络和每架飞机的乘客数量以及飞机的安全系数。以k近邻为主要算法,辅助余弦相似度模型提供的方向性特征,使系统在预测输出方面具有鲁棒性。该架构还具有使用枢轴矩阵的计算以及针对给定输入推荐最佳航空公司的随机数生成方法。在预处理中采用标签编码技术,解决和纠正延迟输入数据类型转换的错误。本文以直观的方式介绍了KNN的基本应用以及余弦相似度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Aviation Industry Recommender System(AIRS) using K-nearest Neighbour and Cosine Similarity
The Aviation Industry has flourished recently with a big boom in tourism.However, tourists are confused about selecting the best airline amongst available options. The existing systems just compare the price and analyze past data related to it and predict accordingly. We focus on calculative analysis of multivariate data derived through survey for recommendation. Our approach is to develop a system which will recommend an airline which is supreme amongst everyone.The broad criteria for selection is based on the quality of services, network & passengers per aircraft and factor of safety of the aircraft. With the help of k-nearest neighbor as the main algorithm, assisting with directional features provided by cosine similarity model makes our system robust in predicting output. The architecture also possesses calculations using pivot matrix along with a random number generating method recommending the best airline for given input. Label encoding technique is implemented in preprocessing to resolve and rectify error of conversion of deferring input data types. This paper covers fundamental application of KNN as well as cosine similarity in an intuitive way.
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