When two hypotheses agree, what evidence does it give?

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In summary, the conversation discusses the revision of beliefs in two hypotheses (H1 and H2) and a conclusion (C) based on new information (A) that shows H1 and H2 agreeing on the same conclusion. This is done through the use of probability theory and Bayes rule to update the prior joint probability distribution of the three variables.
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mXSCNT
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Suppose we have two hypotheses H1 and H2. We also have a potential conclusion C. We know all prior probabilities involving H1, H2, and C.

Now, we are given new information that H1 -> C and also H2 -> C - they agree on the same conclusion. Let's call this new information A (for Agreement). That is, A is the statement "H1 -> C and H2 -> C."

How should we revise our belief in H1, H2, and C, given A?
 
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To turn this into a mathematical question, we would need to define "belief". There are systems such as the Dempster-Shafer theory of evidence that might apply, but I can only comment on the approach by ordinary probability theory.

The question assumes that we know the "prior" joint probability distribution of 3 binary random variables F(x,y,z). The variable x has only two possible outcomes, 0 (for "not-H1") or 1 (for "H1"). Likewise y may be 0 or 1, representing "not-H2" or "H2" and z may be 0 or 1, representing "not-C" or "C".

The implication "H1->C" is equivalent to the statement "not-C or H1". So the updated prior is F(x,y,z | (z = 0 or x = 1) and (z = 0 or y=1) ).

Expressing the prior by Bayes rule involves figuring out the joint probability of some convoluted logical statements. For example as one step in figuring out
F(1,0,1|(z=0 or x=1) and (z = 0 or y = 1) ),
we need to compute the probability of the event:
(x = 1 and y =0 and z = 1) and ( (z =0 or x = 1) and (z = 0 or y = 1) ).

I trust that anyone actually interested in working this problem will do such things and show us the answer!
 

1. What does it mean when two hypotheses agree?

When two hypotheses agree, it means that the results of an experiment or study support both hypotheses, and there is no significant difference between them. This indicates that the evidence gathered is consistent with both hypotheses being true.

2. How do you determine if two hypotheses agree?

To determine if two hypotheses agree, you would need to analyze the data collected from the experiment or study. This can be done through statistical tests, such as t-tests or ANOVA, to compare the results and determine if there is a significant difference between the two hypotheses. If the results are not significantly different, then the hypotheses can be considered to agree.

3. What type of evidence supports two hypotheses agreeing?

The evidence that supports two hypotheses agreeing is empirical evidence gathered from experiments or studies. This evidence can include numerical data, observations, and other measurements that support the conclusions of both hypotheses. The more robust and reliable the evidence is, the stronger the support for the agreement between the hypotheses.

4. Can two hypotheses always agree?

No, two hypotheses may not always agree. It is possible for one hypothesis to be supported by the evidence while the other is not, or one hypothesis may be partially supported while the other is fully supported. It is also possible for the evidence to be inconclusive and not support either hypothesis. In such cases, further research and analysis may be needed to determine the validity of the hypotheses.

5. What implications does it have when two hypotheses agree?

When two hypotheses agree, it means that there is strong evidence supporting both hypotheses and that the results of the study or experiment are consistent with what was expected. This can have significant implications for further research and can provide a more complete understanding of the phenomenon being studied. It also strengthens the validity and reliability of the evidence and conclusions drawn from the study.

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