Difference between revisions of "ANLY482 AY2017-18 T2 Group 22"

From Analytics Practicum
Jump to navigation Jump to search
 
(3 intermediate revisions by the same user not shown)
Line 15: Line 15:
 
| style="background:none;" width="1%" |  
 
| style="background:none;" width="1%" |  
 
| style="padding:0.2em; font-size:100%; background-color:#008000; text-align:center; color:#F5F5F5" width="10%" |  
 
| style="padding:0.2em; font-size:100%; background-color:#008000; text-align:center; color:#F5F5F5" width="10%" |  
[[Kiva Project Findings| <font color="#f1cf0e" size=3 face="Century Gothic"><b>Project Findings</b></font>]]
+
[[Kiva_Project_Findings_Final| <font color="#f1cf0e" size=3 face="Century Gothic"><b>Project Findings</b></font>]]
  
 
| style="background:none;" width="1%" | &nbsp;
 
| style="background:none;" width="1%" | &nbsp;
Line 39: Line 39:
 
<div style="height: 1em"></div>
 
<div style="height: 1em"></div>
  
<div style="background: #FFD700; line-height: 0.3em; border-left: #008000 solid 13px;"><div style="border-left: #FFFFFF solid 5px; padding:15px;"><font face ="Elephant" color= "black" size="3">Company Background</font></div></div>
+
<div style="background: #FFD700; line-height: 0.3em; border-left: #008000 solid 13px;"><div style="border-left: #FFFFFF solid 5px; padding:15px;"><font face ="Elephant" color= "black" size="3">Project Description</font></div></div>
 
<div style="height: 1em"></div>
 
<div style="height: 1em"></div>
 
<div><font face="Arimo" size="4">
 
<div><font face="Arimo" size="4">
 
[[Image:Kivalogo.png|center|300px|]]
 
[[Image:Kivalogo.png|center|300px|]]
Kiva is an online crowdfunding platform which extends financial services in the form of loans to the poor and financially excluded people around the world, who are otherwise unable to raise funds from financial institutions and banks given their financial capacity and background. Since its inception, Kiva lenders have provided over $1 billion USD in loans to over 2 million people.  
+
Kiva is an online crowdfunding platform which extends financial services in the form of loans to the poor and financially excluded people around the world, who are otherwise unable to raise funds from financial institutions and banks given their financial capacity and background. Since its inception, Kiva lenders have provided over $1 billion USD in loans to over 2 million people. This project provides a journey of starts with an overview of the business and the motivations and activities for people in Philippines taking up these loans, followed by kernel density analysis to observe how the intensity of spatial point patterns differ across the different islands and provinces, and lastly the implementation of Exploratory Spatial Data Analysis using measures of spatial autocorrelation and Local Indicators of Spatial Association (LISA) to gain insights into the impact of neighbouring areas and presence of clusters, by using Queen’s case contiguity-based weights, and 2 distance-based weighting methods, namely the K-Nearest Neighbour and the Inverse Distance Weighting.
 
 
</font></div>
 
 
 
<div style="height: 2em"></div>
 
 
 
<div style="background: #FFD700; line-height: 0.3em; border-left: #008000 solid 13px;"><div style="border-left: #FFFFFF solid 5px; padding:15px;"><font face ="Elephant" color= "black" size="3">Objectives</font></div></div>
 
<div style="height: 1em"></div>
 
<div><font face="Arimo" size="4">
 
As the bulk of loan records are from the Philippines, this project covers the use of geospatial analysis and statistical techniques, specifically Kernel Density Analysis and Exploratory Spatial Data Analytics techniques aimed at studying how geographical locations affect the presence and concentration of loans, and how loans are dispersed across geography based on different industry sectors, and how the spatial patterns differ across the different cities and municipalities within the Visayas.
 
 
 
 
</font></div>
 
</font></div>
  
 
<div style="height: 2em"></div>
 
<div style="height: 2em"></div>
 
<!--/Content-->
 
<!--/Content-->

Latest revision as of 16:37, 15 April 2018



Home

 

Project Overview

 

Project Findings

 

Project Management

 

Documentation

 

About Us

 

ANLY482 Main Page


Project Description
Kivalogo.png

Kiva is an online crowdfunding platform which extends financial services in the form of loans to the poor and financially excluded people around the world, who are otherwise unable to raise funds from financial institutions and banks given their financial capacity and background. Since its inception, Kiva lenders have provided over $1 billion USD in loans to over 2 million people. This project provides a journey of starts with an overview of the business and the motivations and activities for people in Philippines taking up these loans, followed by kernel density analysis to observe how the intensity of spatial point patterns differ across the different islands and provinces, and lastly the implementation of Exploratory Spatial Data Analysis using measures of spatial autocorrelation and Local Indicators of Spatial Association (LISA) to gain insights into the impact of neighbouring areas and presence of clusters, by using Queen’s case contiguity-based weights, and 2 distance-based weighting methods, namely the K-Nearest Neighbour and the Inverse Distance Weighting.