Location Based Business Recommendation Using Spatial Demand

作者: Ashok Kumar P , Shiva Shankar G , Praveen Kumar Reddy Maddikunta , Thippa Reddy Gadekallu , Abdulrahman Al-Ahmari

DOI: 10.3390/SU12104124

关键词: Measure (data warehouse)Factor (programming language)Benchmark (computing)Quality (business)Computer scienceOperations research

摘要: Business locations is most important factor to consider before starting a business because the best location attracts more number of people. With help web search engines, customers can nearest visiting business. For example, if customer need buy some jewel, he makes use engines find jewellery shop. If entrepreneur wants start new shop, needs area where there no shop nearby and are in jewel. In this paper, we propose an algorithm place high demand (or very few supply). We measure quality recommendation terms average service time, customer-business ratio our by implementing benchmark datasets results prove that efficient than existing kNN algorithm.

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