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Revision as of 23:20, 9 October 2016
Proposal | Poster | Application | Research Paper |
Contents
Problem and Motivation
Is it possible to predict how good a movie will be before it even screens? This is a subjective question. While some rely on movie critics and early reviews, others depend on instinct. However, we know reviews can take a long time to gather and human instinct is simply unreliable. Thousands of movies are produced every year and all of them our clamouring for the $11 we spend on movie tickets!
And this information is not just for consumers like us. The entertainment industry has always stayed strong despite economical factors. Investors are always looking for opportunities such as purchasing the rights to produce themed goods or services based on popular movies. If only looking for a deal after the movie is successful, why not predict their success and make a move first?
Not stopping there, movie sponsors are getting popular these recent years. Remember the Chevrolet cars all over the Transformer movies, Bumblebee? That was marketing done right, where all eyes are fixated on the battle machines bearing a real company's brand name. But what kinds of movie should your brand appear in? Maybe through this project, we can discover some trends that may help lead to an answer.
Our group wants to know if we can predict which movies are worth you spending your money and time on.
Data
We are using the IMDB 5000 Movie Dataset from Kaggle. The Internet Movie Database (IMDB) is an online database of information related to films, television programs and video games [1]. Amongst its functions, IMDB allows users rate movies on a scale of 1 to 10.
The dataset contains the following variables, including but not limited to:
- movie title
- director name
- actors’ names and Facebook likes
- length of movie
- year
- gross earnings
- genres
- language
- country
- content rating
- budget
- IMDB rating
Related Work
Visualizations | Learning Points |
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Technical Challenges
Challenges | Approach | |
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Data Cleaning & Exploration |
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Use of Javascript and D3 |
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Implementing Interactive Visualizations |
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Method of Approach
Features:
Our team felt that a Sunburst chart will be useful to visualize the data as users will be able to go deeper and understand the the data as they break it down further. It is important to note that a detailed guide for its usage is needed as this is a rather uncommon visualization chart. | |
Features:
Our team felt that a Treemap will be useful for delivery insights of the data easily to everyone. As compared to visualizations like sunburst where users are required to learn about interacting with the chart for more insights, Treemaps deliver them effortlessly and usage is also simple. | |
Features:
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Proposed Storyboard
Our first proposed storyboard includes line/bar/scatter chart that works together like the Tablaeu dashboard, the Sunburst diagram and the Treemap. This initial mockup will be done in tableau allowing us to easily try out different combinations of variables and see the kind of results we will get. The line/bar/scatter chart will be used for showing if a relationship exist between variables and if they are correlated strongly. We plan to experiment on the following but not limited to:
The Sunburst diagram will let users breakdown deeper into each category based on:
The Treemap will be used to display movie popularity or grossing based on their Directors.
This proposed visualization gives our users 2 interactive charts in the line/bar/scatter combination and sunburst, where they can explore further to gain more insights. The Treemap will display immediately understandable data such as which director are the most popular or profitable and which movie are bringing in these figures. Simply hover-over-for-information on the Treemap diagram is also easy for users to gain more details about the specific item. We will be testing these ideas out and other visualization charts to find the most optimal one for our dataset. |