Café Selection Recommendation System in Semarang City uses Collaborative Filtering Method with Item based Filtering Algorithm

Alldie Refkrisnatta, Dewi Handayani
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Abstract

The café selection recommendation system in the city of Semarang aims to provide recommendations for users in finding the desired café according to the type of café expected. This recommendation system serves to predict an item that is of interest to the user. Implementation of recommendation system using Collaborative Filtering and Item Based Filtering algorithms. Collaborative filtering is a recommendation system algorithm where recommendations are given based on consideration of data from other users while the Item Based Filtering algorithm to provide recommendations based on similarities between customer tastes and café characteristics.
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三宝朗市咖啡选择推荐系统采用协同过滤方法和基于项目的过滤算法
三宝垄市的咖啡选择推荐系统旨在为用户提供建议,根据预期的咖啡类型找到所需的咖啡。这个推荐系统用来预测用户感兴趣的项目。采用协同过滤和基于项的过滤算法实现推荐系统。协同过滤是一种推荐系统算法,其中基于考虑其他用户的数据给出推荐,而基于条目的过滤算法基于客户口味和咖啡特征之间的相似性提供推荐。
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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Café Selection Recommendation System in Semarang City uses Collaborative Filtering Method with Item based Filtering Algorithm
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