Earlier this month, I wrote a blog post reflecting on Eugene Bardach’s A Practical Guide for Policy Analysis: The Eightfold Path to More Effective Problem Solving. I wrote about the “Grandma Bessie Test,” a strategy Bardach recommends to make sure we understand the conclusions from our work well. To conduct the “Grandma Bessie Test,” we try to explain our data, findings, and conclusions to an intelligent but non-expert audience (like our Grandma Bessie) in about one minute.
Bardach’s eightfold path is a book that we reference a lot at Scioto Analysis. In some ways, it’s the very bread and butter of our work as policy analysts. The eightfold path is an eight-step framework to help us understand public policy and conduct policy analysis more effectively. The eight steps in the framework are as follows:
Define the Problem
Assemble Some Evidence
Construct the Alternatives
Select the Criteria
Project the Outcomes
Confront the Trade-Offs
Decide!
Tell Your Story
As Bardach develops these eight steps throughout his book, an important theme of credibility emerges repeatedly. Today, I want to focus on an important theme that Bardach references throughout his book: what makes an analysis credible, and what makes one not credible?
What makes policy analysis credible?
When we’re doing policy analysis, we should be thinking about credibility multiple times throughout the analysis. Credibility means selecting trusted sources, creating well-researched methodologies, and fact-checking our analysis at the end. The following considerations can help ensure our work is credible.
Defending against Politically Inspired Criticism
Defending against politically inspired criticism is the first strategy Bardach recommends to protect credibility. If we think there might be parties who will oppose or attempt to undermine our work, then we should touch base with them before publishing our analysis.
We can do this by having conversations or conducting interviews with parties who might be opposed. To bolster our analysis, we can include quotes from opposing parties. In addition, we should always be thorough with our analysis: we shouldn’t conduct analysis that heavily favors one side without considering the other.
Ultimately, conducting evidence-based analysis with data and statistics may be the best way to defend against politically inspired criticism. If our findings are grounded in data and statistics, then critics cannot so easily sweep these findings aside as mere personal bias.
Preparing for Premature Exposure
The second strategy Bardach recommends to protect credibility is to prepare for premature exposure. Research and policy analysis can be a slow process. Throughout our analysis, we should be prepared for unexpected deadlines or sudden windows of opportunity. For example, reporters might reach out suddenly looking for a quote on a certain policy. Alternatively, an event might pop up that our analysis would be useful for.
To help prepare for these opportunities without sacrificing credibility, Bardach recommends that we spend time early in our analysis figuring out the answers to the most basic, crude questions that people are bound to ask. That way, if opportunities pop up throughout our analysis, we can share information without overstating our analysis.
Sensitivity Analysis
One of my favorite parts of performing policy analysis is sensitivity analysis. Sensitivity analysis is the process of estimating how assumptions included in an analysis impact the uncertainty around the findings of the analysis. Conducting sensitivity analysis is an exercise in testing the precision of our results.
Bardach recommends we ask ourselves the question, “how big a mistake can I afford in this assumption before this analysis is in really big trouble?” Sensitivity analysis helps answer that question by forcing us to look at our assumptions and determine where results might be vulnerable. By conducting sensitivity analysis, we can prove that our results aren’t just based on a couple of key assumptions.
What makes policy analysis not credible?
Understanding how to produce credible analysis is important, but so is recognizing the pitfalls that can undermine its credibility. Bardach points out that some of the biggest problems with a project’s credibility come from carelessness and letting our own opinions get in the way of the data.
The quickest way to destroy our credibility is by allowing our preferred solution to interfere with how we define the problem. For instance, if we define a problem as “there is too little funding for this program”, we have already assumed the answer to the problem before doing any research. To ensure credibility, we should leave the door open for all potential solutions.
We can also kill our credibility by letting optimism get in the way of our analysis. Bardach warns us not to count on one of our alternatives working out just because we expect it to. Instead of assuming results, we should rely on data to show us what the truth of a certain policy really is.
