Difference between revisions of "Group08 proposal"
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− | * The first dashboard that we would like to envision is to have a filter that is | + | * The first dashboard that we would like to envision is to have a filter that is visualized by the Singapore map. This will allow users to intuitively find an area that they are familiar with. Since this is only just a filter, it will not show the distribution of HDB Resale Flats in the map itself. |
− | * By clicking on a specific town, the dashboard will dynamically change (a) and provide insights of its submarket price distribution. This will be | + | * By clicking on a specific town, the dashboard will dynamically change (a) and provide insights of its submarket price distribution. This will be visualized in the form of a box plot. |
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+ | * Furthermore, by clicking on a specific box plot, it is used as a filter for graph (b), where there will be a histogram plot to visualize the distribution of flat sizes for each submarket, in each town. | ||
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− | * The final dashboard that we envision to complete is a Tree Map plot to | + | * The final dashboard that we envision to complete is a Tree Map plot to visualize the volume and price of HDB Resale flats by their Storeys. The size of the boxes will be equivalent to the volume transacted value and the colours will represent their respective price. |
− | * The dashboard will come with filters that enables users to select the particular towns that they will want to compare with. The maximum allowed number to select is up to 2 towns. The number of towns selected will generate the same number of graphs for | + | * The dashboard will come with filters that enables users to select the particular towns that they will want to compare with. The maximum allowed number to select is up to 2 towns. The number of towns selected will generate the same number of graphs for visualization. |
* Lastly, one other filter is the submarkets in which the user is able to select the type of submarket for deeper analysis. | * Lastly, one other filter is the submarkets in which the user is able to select the type of submarket for deeper analysis. | ||
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Revision as of 16:30, 28 February 2020
Wolf of HDB Street |
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Contents
PROBLEM & MOTIVATION
Problem
As a buyer looking for Resale HDB flats, it can be difficult to make a purchase decision due to the lack of information in the market. Information such as increasing or decreasing price trends over the years for each estate (e.g. Tampines) or submarket (e.g. 4-ROOM flats) could be essential in the decision making process.
Motivation
According to Ms. Christine Sun, head of research and consultancy at OrangeTee, She commented in November last year (2019) that demand for HDB resale flats has been strengthening in the recent months. However, our group felt that the statement was too generalised as there are several submarkets in the resale of HDB flats such as 3-ROOM flats and 5-ROOM flats just to name a few. Each submarket could have a different trend. Additionally, trends could also vary across different estates such as Bukit Merah and Tampines. The information online would not be useful for people looking at specific submarkets in certain estates.
OBJECTIVES
Target Group: Resale flat buyers
Our goal in this project is to design and create an interactive one-stop visualization tool that could provide Resale flat buyers with information such as:
- Changes of flat prices over time for each submarket by estate (e.g. 4-ROOM flats price changes over the past 5 years for Ang Mo Kio)
- High and low value estates based on past prices (e.g. Tampines is a low value estate based on prices from the past 5 years)
- Changes in resale prices based on remaining lease (i.e. age of the estate) for each estate
- Distribution of flat prices for each submarket and estate
These information would help buyers make better purchase decision(s).
DATASET
Data/Source | Variables/Description | Methodology |
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Resale Flat Prices (January 1, 2017 to January 31, 2020) |
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Obtain information on flat prices by:
The list is non exhaustive, more could be added in the future. |
BACKGROUND SURVEY OF RELATED WORK
In order for our group to design a new visualisation, it was important to us that we understand the current work out there in the field. This will enable us to make informed decisions on developing our own visualisations. We can also learn from the current visualisations to ensure that our own work adds value and to not repeat any mistakes made. Listed below are screenshots of visualisations and their learning points respectively.
Reference of Other Interactive Visualization | Learning Points |
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Title: Official HDB Map Services |
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Title: Average HDB resale prices by town treemap Source: http://sgyounginvestment.blogspot.com/2018/03/visualisation-of-hdb-resale-prices-in.html |
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Title: Distribution of Past HDB Transactions |
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Title: Distribution of 4-Room HDB Resale Prices By Town |
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REFERENCE LIST
References
- https://www.straitstimes.com/singapore/more-hdb-resale-flats-sold-in-october-after-higher-housing-grants-income-ceilings-kicked
- https://www.businesstimes.com.sg/hub-projects/property-2019-september-issue/hdb-resale-market-sees-strong-demand
- https://www.reddit.com/r/singapore/comments/dubsyk/visualising_30_years_of_hdb_resale_flat_prices/
- https://medium.com/@wojiefu/hdb-pusle-visualization-of-singapore-hdb-flat-resale-records-2e2fbedbee91
- http://sgyounginvestment.blogspot.com/2018/03/visualisation-of-hdb-resale-prices-in.html
- https://services2.hdb.gov.sg/web/fi10/emap.html
- https://hdbviz.shinyapps.io/hdbviz/
KEY TECHNICAL CHALLENGES & MITIGATION
No. | Challenge | Description | Mitigation |
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1. | Lack of Familiarity with Tools | Everyone in the group do not know how to program in RShiny for visualisation | We will learn Rshiny during class, call for consultation and rely on Googling for any programming challenges. Alternatively, there is also Datacamp available for us. |
2. | Viability of Ideas | We do not know if the current dataset is sufficient in providing all the information needed to conduct analysis and building of planned visualizations. | There are multiple dataset online to use and we can use Prof Kam's REALIS dataset provided to us to supplement our dataset if we are lacking of certain variables. We could also derive our own variables based on the current dataset if needed (e.g. Geocoding). |
3. | Lack of Domain Knowledge | HDB resale prices are affected by a spectrum of different factors such as policy measures and redevelopment. It is hard for us to understand without domain knowledge. | Learn from informative websites such as from HDB and iteratively discover and learn insights into the dataset |
STORYBOARD
Dashboards | Description |
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Dashboard 1: Overall Price Distribution by Submarket and Submarket Sizes |
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Dashboard 2: Comparison of price changes and volume transacted across time periods |
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Dashboard 3: Tree Map of HDB Storeys by Volume and Price |
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MILESTONES
COMMENTS
No. | Name | Date | Comments |
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1. | (Name) | (Date) | (Comment) |
2. | (Name) | (Date) | (Comment) |
3. | (Name) | (Date) | (Comment) |