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Hypothesis Testing

by Ron on February 27th, 2007.

Hypothesis TestingOne of my favorite statistical tools is hypothesis testing. We can use hypothesis testing for many purposes.  For example, we would use the popular 2-sample t-test when we have two samples of variable data and want to understand if they represent different populations, statistically speaking of course. 

State the Null and Alternate Hypothesis

The first order of business when completing hypothesis tests is to state the null hypothesis (Ho) and the alternative hypothesis (Ha). The null hypothesis is the statement of no change. I always remember it like this, “Ho hum… there is no difference here.” Conversely, the alternative hypothesis is the statement of change. Just remember, “a Ha, there is a change!”

In our 2-sample t-test example, Ho would be that the means are equal and Ha would be that the means are not equal. It’s as simple as that.

Collect Data and Run Test

Next, we need to carefully collect some data and run the actual hypothesis test. You can program spreadsheets to do this test or use a standard off the shelf software package to do it for you. Personally, I prefer Minitab but I suppose that is just because it is what I have always used.

We Never “Accept” Anything!

When we run the actual hypothesis test we will get a P value. We use this P value to determine whether enough evidence exists to REJECT the null hypothesis. I emphasize REJECT since the most common error I see people make is when they speak of “accepting” a null hypothesis. We never accept a null hypothesis for the same reason we never prove someone innocent in the US judicial system. Instead, we prove someone guilty or not guilty. So with hypothesis testing we either reject or fail to reject the null hypothesis.

If P is Low, Ho must Go!

Now then, the P value is the probability of incorrectly rejecting the null hypothesis. Since we are making important decisions with this P value we tend to error on the safe side. Typically, if the P value is less than 5% we reject the null hypothesis. If the P value is greater than 5% we fail to reject the null hypothesis.

If all this makes your head hurt no worries. Just remember this saying, “If P is low, Ho must go. If P is high, Ho can fly.”

Alpha Risk Explained

Why 5%? Because I said so… quit asking so many questions! Just kidding. The standard is usually to go with 5% since this the risk most people are willing to take at being wrong. This is also why you often hear about 95% confidence intervals. If you are sending people to the moon or testing something ultra serious you may consider tightening this “alpha value” as it is called to something like 1% or 2%. I will resort to the response any good Black Belt should give when asked what alpha value to use – it depends!

Until next time, I wish you all the best on your journey towards continuous improvement.

Related Posts:

  1. How to apply the one sample t-test
  2. Regression – Part 2
  3. How beer influenced statistics
  4. Explaining the Central Limit Theorem
  5. Graphs 101 – By Seth Godin

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13 comments...What do you think?

  1. Posted by robert 27th February, 2007 at 5:52 am

    Hi Ron

    Hypothesis testing is one of the simpler but most powerful tools which can be deployed. I posted a couple of articles on this subject here: http://tinyurl.com/ypjxp2

    I can’t figure out why it is not more widely deployed throughout industry? Any ideas?

    Rob

  2. Posted by Ron Pereira 27th February, 2007 at 11:30 am

    Good question. I guess it all comes back to awareness. The more aware we make people the more it will get used.

  3. Posted by Jon Miller 27th February, 2007 at 12:16 pm

    Very useful tidbit. Keep it up.

  4. Posted by Ron Pereira 27th February, 2007 at 1:35 pm

    Thanks Jon. I will do my best!

  5. Posted by Joe 1st March, 2007 at 5:38 am

    Hi Ron

    The article which you have posted was very simple and useful for the beginners like me and hope to get more thoughts on REGRESSION Analysis too,

  6. Posted by Ron Pereira 2nd March, 2007 at 2:18 am

    Thanks for the idea Joe. I will write something on regression soon.

  7. Posted by Lean Six Sigma Academy » Dealing with Non Normal Data 15th June, 2007 at 8:26 pm

    [...] Sigma is often criticized for it’s analysis paralysis approach to problem solving.  Hypothesis testing is powerful and should be used by all continuous improvement practitioners, lean and six sigma [...]

  8. Posted by How beer influenced statistics 20th June, 2007 at 3:17 pm

    [...] There are some assumptions we need to satisfy as well as some tricks we can play making this hypothesis test extremely powerful for both lean and six sigma practitioners [...]

  9. Posted by Anonymous 8th August, 2007 at 7:12 am

    Good use of legal system to explain hypothesis test.

  10. Posted by Ron Pereira 8th August, 2007 at 12:39 pm

    Thank you Anonymous. Please stop back again.

  11. Posted by Regression - Part 1 | Lean Six Sigma Academy 23rd March, 2008 at 8:53 pm

    [...] posting my recent blog on hypothesis testing I received a request to write about regression in a similar manner.  As I am always focused on [...]

  12. Posted by Regression - Part 2 | Lean Six Sigma Academy 23rd March, 2008 at 10:33 pm

    [...] our friend the P value from our hypothesis testing discussion? Well, he’s back! When we do regression we also state a null (Ho) and alternative (Ha) [...]

  13. Posted by The PIT Factor in Change Management | MANAGEMENT-TOPICS.COM 14th September, 2008 at 3:00 pm

    [...] of incorrectly rejecting the null hypothesis. Learn more about the p value and its use at the Lean Six Sigma Academy. Maybe we can talk Ron into running an experiment to determine the P value on the null hypothesis [...]

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