Multi-dimensional Skyline Query to Find Best Shopping Mall for Customers

03/17/2020
by   Md Amiruzzaman, et al.
0

This paper presents a new application for multi-dimensional Skyline query. The idea presented in this paper can be used to find best shopping malls based on users requirements. A web-based application was used to simulate the problem and proposed solution. Also, a mathematical definition was developed to define the problem and show how multi-dimensional Skyline query can be used to solve complex problems, such as, finding shopping malls using multiple different criteria. The idea of this paper can be used in other fields, where different criteria should be considered.

READ FULL TEXT
POST COMMENT

Comments

There are no comments yet.

Authors

page 4

page 6

06/23/2020

Tsunami: A Learned Multi-dimensional Index for Correlated Data and Skewed Workloads

Filtering data based on predicates is one of the most fundamental operat...
06/04/2020

Implementation Strategies for Multidimensional Spreadsheets

Seasoned Excel developers were invited to participate in a challenge to ...
10/09/2017

A Sequential Thinning Algorithm For Multi-Dimensional Binary Patterns

Thinning is the removal of contour pixels/points of connected components...
08/06/2020

Local biplots for multi-dimensional scaling, with application to the microbiome

We present local biplots, a an extension of the classic principal compon...
02/05/2018

Mitigating Spreadsheet Risk in Complex Multi-Dimensional Models in Excel

Microsoft Excel is the most ubiquitous analytical tool ever built. Compa...
08/11/2017

SkyLens: Visual Analysis of Skyline on Multi-dimensional Data

Skyline queries have wide-ranging applications in fields that involve mu...
03/21/2013

Multi-dimensional sparse structured signal approximation using split Bregman iterations

The paper focuses on the sparse approximation of signals using overcompl...
This week in AI

Get the week's most popular data science and artificial intelligence research sent straight to your inbox every Saturday.