Difference between revisions of "Smart Mall"

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  <div style="width: 600px; display: table-cell; background: #ffffff;"><font size=5; color="#000000"><span style="font-family:Calibri;">Milestone</span></font></div>
  <div style="width: 400px; display: table-cell;"> [[File:T3 banner.png|right|800x500 px]] </div>
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=='''1. Abstract'''==
 
Brick and Mortar retail malls are facing stiff challenge from online e-commerce shopping and mobile smartphone penetration. How can physical malls continue to survive under such conditions? How can shopping malls transform as part of the Smart Nation in Singapore? This project aims to explore the customers movement in the shopping mall using real data of a mega-mall using visual techniques for exploratory analysis to uncover patterns that may present opportunities for the mall as well as tenants to better optimise their operations, maximize sales as well improve the customers' experience.
 
  
=='''5. Visualization Tool & Packages'''==
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<div style="text-align:left; padding-top:25px; font-family:Calibri;">
  R: Hexagonal binning using ggplot2 and Kernel Decimal Estimate using stat_Density2d
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<font size = 5>Motivation</font>
  R: Chord diagram using chorddiag
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<br>Brick and Mortar retail malls are facing stiff challenge from online e-commerce shopping and mobile smartphone penetration. How can physical malls continue to survive under such conditions? How can shopping malls transform as part of the Smart Nation in Singapore? Using real data of a mega-mall, this project aims to leverage multiple data sources from typical retail operation, and develop a visual application to assist company reveal customer behavior, uncover patterns that may present opportunities for the mall as well as tenants to better optimise operations, layout, events, maximize sales as well improve the customers' experience.
  R: Shinyapp, shinydashboard, flexdashboard.
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<div style="text-align:left; padding-top:25px; font-family:Calibri;">
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<font size = 5>Data Description</font>
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[[File:T3 Datades.PNG|center|800x300 px]]
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<li>Profile Data: contains demographic information of the shopping mall members</li>
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<li>Transaction Data: contains two months transnational records from January to February 2017</li>
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<li>Wi-Fi Sensor Movement Data: contains two months Wi-Fi sensor records captured in the mall, which can be used to analyze the movement of customers</li>
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<li>Maps: shopping mall layouts</li>
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</div>
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<div style="text-align:left; padding-top:25px; font-family:Calibri;">
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<font size = 5>Expected Outcome</font>
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<li>Data Integration: bridge the three dataset to drive insights</li>
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<li></li>
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<li></li>
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<li></li>
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</div>
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<div style="text-align:left; padding-top:25px; font-family:Calibri;">
 +
<font size = 5>Visualization Tool & Packages</font>
 +
  <li>R: Hexagonal binning using ggplot2 and Kernel Decimal Estimate using stat_Density2d</li>
 +
  <li>R: Chord diagram using chorddiag</li>
 +
  <li>R: Shinyapp, shinydashboard, flexdashboard</li>
 +
</div>

Latest revision as of 12:20, 17 June 2017

ISSS608 Visual Analytics and Applications Project

Team S-MALL

Milestone
T3 banner.png

Motivation
Brick and Mortar retail malls are facing stiff challenge from online e-commerce shopping and mobile smartphone penetration. How can physical malls continue to survive under such conditions? How can shopping malls transform as part of the Smart Nation in Singapore? Using real data of a mega-mall, this project aims to leverage multiple data sources from typical retail operation, and develop a visual application to assist company reveal customer behavior, uncover patterns that may present opportunities for the mall as well as tenants to better optimise operations, layout, events, maximize sales as well improve the customers' experience.

Data Description

T3 Datades.PNG
  • Profile Data: contains demographic information of the shopping mall members
  • Transaction Data: contains two months transnational records from January to February 2017
  • Wi-Fi Sensor Movement Data: contains two months Wi-Fi sensor records captured in the mall, which can be used to analyze the movement of customers
  • Maps: shopping mall layouts
  • Expected Outcome

  • Data Integration: bridge the three dataset to drive insights
  • Visualization Tool & Packages

  • R: Hexagonal binning using ggplot2 and Kernel Decimal Estimate using stat_Density2d
  • R: Chord diagram using chorddiag
  • R: Shinyapp, shinydashboard, flexdashboard