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So this video, we're want to talk about asking questions.
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What makes a good question? How does a question relate to the broader context of what we're trying to do in this class?
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The learning outcomes for this video are few to understand what makes a good question.
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Understand how it relates to goals and analysis and start to think about data for a question.
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We're also going to introduce a key term operationalization that is going to come up throughout the rest of the class.
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To set the stage, I want to review our definition of data science that I introduced in the class introduction video that we're learning
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about how to use data to provide quantitative insights on questions of scientific business or social interest.
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But in order to do that effectively, we need to be able to write good questions, refine those questions,
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connect them both to the data we might be able to use to shed these quantitative insights and to the goals,
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the business purposes or scientific purposes for which we're asking the questions in the first place.
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So I want to work through this with you with an example.
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So suppose in the Boys State Computer Science Department, we have our introductory classes.
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Yes. One twenty one to twenty one. Three twenty one. Suppose we make some change to see.
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Yes. Twenty one. Like we change the way we do the assignments. And we want to assess whether this new change improved.
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C. S 121. So we have a business purpose here of we're making a change to one of our courses.
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And we want to see if that change is improving the course in some way.
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But in order to do that, we need to identify a number of things, such as what does it mean to improve C.
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S one twenty one? What data could we use to try to inform this assessment of whether we improved?
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Yes, 121. And what could we do with that data to measure improvement?
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And. So this process is called operationalization.
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We have a goal. Assess whether we improved 121. That, in turn is in service of the broader goal of delivering a high quality undergraduate education.
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Then we've refined through intermediate questions. I'm going to show some of those in a bit to determine a specific measurement to take.
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And at the end of the day, if we are fully operationalize the goal or a question,
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we know precisely what data we're going to collect or has been collected and how what measurement
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or measurements we're going to compute over that data in order to try to answer our question,
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we use the term in a couple of senses. First, operationalize can be a verb.
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It's the process of doing this operationalization. Then, as a tense of the verb operationalization is also a noun.
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And it's the result of this process.
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So the specific measurement and analysis that we're going to do over specific data can be called an operationalization of the question.
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So we have our goal of assessing whether some change improves.
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Yes, 121. We can ask an intermediate question.
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OK, so what does it mean to improve it? Well, students are better prepared to go excel in the workplace.
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Well, it's a while until this is the freshman class. It's a while until the students are going out and the job market.
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Or we have for information on how well equipped they were. So can we ask a shorter term question?
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That's going to help us get to that. Are students better prepared for the next class?
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And we call this intermediate question a proxy.
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So if our goal is better, prepare them for doing their work, they're doing the work we're training them for the proxy can be.
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Well, are they better prepared for the next class?
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So questions don't have one level and there's a there's a path here between goal our goal, improve education, deliver a high quality education,
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the subgoal of assess whether this change that was intended to improve the educational effectiveness of our introductory
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programing class actually did so to get all the way down to the data that we can use in order to try to measure it.
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We can also have multiple levels of questions, as we've already seen well.
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Are they prepared for for their work? Well, we can't. That's a long timeframe.
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It's difficult to measure that on the timeframe we need in order to iterate on the on class structures.
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So we use this that we step down one level. We use this proxy.
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Are they better prepared for the next class?
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So if we want to think about the quality of our questions, like we need a way to assess whether a question is good.
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And there's a couple of ways we do that. One is looking upward.
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So the question should advance the goal and we should be able to look at the goal and look at the question and say yes.
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Answering this question does move us forward in this goal.
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No one question is going to be the complete answer to our goal.
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But our students, better prepared for the next class, moves us one step closer.
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We can say yes, if we if students are better prepared for the next class,
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that is probably evidence that we have improved the effectiveness of the introductory class.
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Also, though, carrying out the analysis should answer the question.
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We want to work our questions down to the point where we have a question that's specific.
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We we can it's clear that the question will advance either the top level goal or a higher level question that in turn advances the goal.
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But also it's specific enough that we can look at a data analysis plan.
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Here's the data we're going to use. Here's the measurements we're going to take. Here's the analysis we're going to perform and we can say, yes,
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doing this data analysis plan will answer this question or at least answer the question in a useful sense.
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And so if we can make those connections that we can see, doing the analysis will answer the question, answer the question.
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Answering the question will advance the goal. Then we have a connection.
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We have a connectedness between the analysis and the data that we can actually do.
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And. The question or the goal that we're trying to advance through this data analysis.
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So a fully operationalized question is going to be specific and it's going to be answerable and with the available data.
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Now, there are lots of useful questions that we can't answer with available data.
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That does not mean they're bad or we should ignore them. They're incredibly useful for contextualizing the limits of a data analysis that we do.
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We have a data analysis. It can answer one question that will advance the goal.
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There are three other questions related to the goal that cannot be answered by our analysis.
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Well, that's useful in our report to talk about the limitations. Well, we can answer this question.
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We can't answer these others. Maybe we can think about how to how to answer those others questions.
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But when we're trying to get down to a question that we can answer with data.
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And remember, we're talking about data sciences, quantitative insights into these questions.
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We want to see, can we actually answer the question with data? And can we match the analysis plan to the question to the goal.
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So to go back to our example of trying to measure the effectiveness of improving one twenty one, are students better prepared for the next class?
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Well, we can make that more specific. Are they more likely to pass?
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Yes. To twenty one. Now we have a very specific question.
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We can answer it with the student grades from six to twenty one. We can look at students who took our class.
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Our new C. S one twenty one and took our old C as one.
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And we can compare the pass rates. Now there are many caveats.
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There are a lot of challenges to doing this properly. It can only measure one piece of what's going on.
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But it's a specific question that we can answer with data.
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Our students in the new version of our intro class more or less likely to pass the next class,
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will get to talk more about this question in the next video.
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Now, to get to this kind of a question, I've given you the example and work through it here.
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In practice, you're going to need to work with your boss, your client, your advisor, other stakeholders,
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whoever is going to be acting on the results of your data analysis, which may be yourself.
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To get to these operation, to get to these fully operationalized questions, they're going to have goals.
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They may have some some high level questions, they may have some specific questions that can't map to the data.
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One of the key ways to be able to do this refinement is through clarifying questions such as.
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So if if the department chair came to you and said,
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I would like you to help me measure the effect of this improvement to see us one twenty one, well, then we can ask questions.
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What do we mean by improve? What would be evidence that we did improve?
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Six one twenty one. And so we're gonna have practice in the synchronous time.
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That's one of the things we're gonna do this week in thinking about clarifying questions.
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But these clarifying questions that you can ask to your client.
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We're going to use the term client generally for whoever is you're doing the data
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analysis for to figure out what they actually want and what you can do with the data.
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That's going to advance their goals. So to wrap up, there are multiple layers to translate between our high level goals,
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deliver a high quality undergraduate education and what we can actually do with data
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measure whether this change increased students ability to pass the next class.
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Questions bridge this gap and we can have multiple layers of questions in order to get from high level goal to something we can do with data.
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You're gonna be doing this a lot through the rest of the semester.