A Machine Learning Approach to Suggest Ideal Geographical Location for New Restaurant Establishment

Ibne Farabi Shihab, Maliha Moonwara Oishi, Samiul Islam, Kalyan Banik, Hossain Arif
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引用次数: 5

Abstract

Restaurant business is a prospective and profitable business nowadays. However, ensuring quality food, good stuff, inner-environment etc. is a big concern and most importantly before facing all these, the trickiest part is to choose a perfect place where a restaurant business will flourish. Without doing a perfect research on this area, setting up a restaurant may lead to an immediate downfall. In recent time, for choosing a preferred restaurant location and calculating the estimated risk, people are now hiring professionals to do ground check and here the data scientists are coming into play as a bigshot. This research is focused on suggesting a suitable place for setting up a restaurant business based on the existing data from Yelp where 75 features have been extracted for supervised machine learning. Our model will also calculate the expected rating that a restaurant will get depending on the features the restaurant possesses. Several machine learning algorithms (Support Vector Machine, Decision Tree, Logistic Regression and Decision Tree with presort) have been used and juxtaposed to nurture out the suitable one. As yelp’s review is authentic and it is maintained regularly, we have considered the rating of a business as the point of suggestion. We have also looked at the comparative analysis of these algorithms and searched for an algorithm that gives us the best result.
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一种机器学习方法为新餐厅提供理想的地理位置建议
餐饮业是一个有前景和有利可图的行业。然而,确保高质量的食物、好东西、内部环境等是一个大问题,最重要的是,在面对所有这些之前,最棘手的部分是选择一个完美的地方,让餐馆的生意蓬勃发展。如果没有对这个领域做一个完美的研究,开一家餐馆可能会导致立即垮台。最近,为了选择一个首选的餐厅位置和计算估计的风险,人们现在雇佣专业人士来做地面检查,在这里,数据科学家正在发挥重要作用。这项研究的重点是根据Yelp的现有数据提出一个适合建立餐馆业务的地方,其中已经提取了75个特征用于监督机器学习。我们的模型还将根据餐厅拥有的特征计算出餐厅的预期评级。使用了几种机器学习算法(支持向量机,决策树,逻辑回归和预测决策树)并置以培养出合适的算法。由于yelp的评论是真实的,并且是定期维护的,因此我们将对企业的评级作为建议的重点。我们还对这些算法进行了比较分析,并寻找一种能给我们带来最佳结果的算法。
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