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Recent Yieldbot Intent Streams Related to Steve Jobs

At Yieldbot our focus is on collection, organization and realtime activation of visit intent in publisher content. We do this not as a network but on a publisher-by-publisher basis because of this simple fact; every publisher has a unique audience and unique content. What that means is that even if the keyword is the same across publishers, the intent associated with it varies in each domain. 

The original purpose of this post however was not to point out the flaws of networked based keyword buying vs the performance advantage of Yieldbot’s publisher direct model. Nor was the purpose to show you how much we truly understand publisher side intent at the keyword level and how use that intelligence in an automated way to achieve the highest degrees of relevant matching. 

The original purpose of the post was to meet the request of a few people that had asked me to share some more data visualization of our Intent Streams™ after we originally shared a few on our recent blog post about our data visualization methods.

It occurred to me the other day that the best representative example over the last month was intent around “Steve Jobs” so below we are sharing our 30-day Intent Streams™ from four publishers. 

If you’re new to our streamgraphs the width of the stream is the measure of pageviews of intent associated with the root intent “Steve Jobs.” The other useful data points in these visualizations are the emergence, increases, decreases and elimination of the associated intent over time. As well as how many terms are seen to be associated with the root intent.

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Another way we visualize intent data is across a scatter plot. Here you see the performance of the “Steve Jobs tribute” compared to the other intent related to Steve Jobs looking at the number of entrances (aka landings) on the y-axis and the bounce rate of that intent on the x-axis. 

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It’s important to note in this scatter plot visualization that the analytics are predictive. We are estimating performance forward over the next 30 days. The four streamgraph visualizations were based entirely on historical data –in their case a 30-day look back as noted on their x-axis.

We hope you find this intent data as interesting as we do.

 

How Yieldbot uses D3.js + jQuery for Streamgraph Data Visualization and Navigation

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One problem we needed to solve early on at Yieldbot was understanding intent trends in the publisher data. This couldn’t just be shallow understanding. We needed to expose multiple data trends at the same time around thresholds and similarity. Our need:

  1. Allow what we call the “root intent” trend to be apparent.
  2. Break out the “other words” that are associated with the root intent.

Making this happen in an integrated fashion meant we needed some flexible and powerful tools. We found that d3.js and jQuery UI were the right tools for this job.

Looking through the excellent documentation and examples from d3.js we saw the potential to build exactly the type of visualization we needed. We used a stacked layout with configurable smoothing to allow good visibility into both the overall and individual trends. Smoothing the data made it very easy to follow the individual trends throughout the visualization.

Having settled on this information rich way to visualize the data with d3 we then took the prototype static visualization and made it into a dynamic piece of our interface. It was very important for us that the data be more than just a visualization - we wanted it to be navigation. We wanted the data to be part a tangible and clickable part of the interface. The result was that each of the intent layers is clickable and navigates to another deeper level of data.

Having the core functionality in hand we used the jQuery UI Widget Factory to provide a configurable stateful widget that encapsulates the implementation details behind a consistent API. This makes using the widget very easy. Creating a trend visualization is just a one liner - while the raw power and flexibility is wrapped up and contained in the implementation of the widget.

Here are a few examples of this visualization in action:

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With this reusable widget in hand we could use this trend visualization across our application in numerous places. This provides consistency to our interface that is extremely important UI concern for such a data intensive product.

Our approach to developing innovative data visualizations has been consistently repeatable as we now have 3 additional visualizations in the product and have played around with many more than that. Each time these are the steps we take when creating a new data viz.

Throughout the process the flexibility that d3 provides meant we never bumped into a wall where the framework complexity jumped drastically. It appears that the wall of complexity is still far off in the distance if it exists at all. As our understanding of d3 increased and with the use of prototypes driven by live data we are able to quickly iterate on ideas and design. This flexibility will continue to be one of the many long-term benefits that we’ll get from using d3.

Data visualization plays an important role in our product and we’re excited to keep using it to solved data comprehension problems. Not to mention it really brings the data to life. If you're interesting in data visualization or this process we'd love to hear your thoughts.