Loss Leader
I would save the receptionist., Moderator
Q: Why do we need a definition of something we all experience every day?
For the same reason I need to be able to tell the difference between my wife and a hat.
Q: Why do we need a definition of something we all experience every day?
It never worked before. You ask him to move on, and he just keeps doing that fringe reset thing.
The only reason he abandoned his shroud thread was because his close ally surrendered the fight and closed his own pro-authenticity shroud web site.
At this point I think we just call in the "Jabba Length." It's like a Planck Length in physics but it is the point at which an argument cannot be subdivided anymore.
For the same reason I need to be able to tell the difference between my wife and a hat.
If an argument gets sub-issued 6.02 times 1023, it reaches homeopathic levels.
If an argument gets sub-issued 6.02 times 1023, it reaches homeopathic levels.
Dave and others,
- Moving right along -- hopefully, the rest of my premises:
11. To formally re-evaluate OOFLam, we can use the following formula from Bayesian statistics: P(H|E)=P(E|H)*P(H)/(P(E|H)*P(H)+P(E|~H)*P(~H)).
12. There are 3 variables in that formula -- we've already discussed P(E|H), the likelihood of the event occurring, given H (OOFLam).
13. Another variable is the prior probability of H (and ~H).
14. There is a reasonable probability of at least 1% for ~H -- and therefore, no more than 99% for H.
15. The remaining variable is P(E|~H), the likelihood of the event occurring, given ~H. For now, I'll suggest 99%.
16. Inserting the numbers, we get that the posterior probability of H, after adding E to the evidence is: P(H|E)=10-100*.99/(10-100*.99+.99*.01). And rounding off, we get P(H|E)=0/.099, or zero.
17. So, by adding this new info to the evidence for H and rounding off, we get that the probability of H being true is zero.
- That ought to give us some more disagreements to discuss.
The 'thing' that recognizes or experiences existence. Whatever it is that is aware.
that which would be looking out two sets of eyes if it were actually duplicated.
Dave and others,
- Moving right along -- hopefully, the rest of my premises:
Dave and others,
- Moving right along -- hopefully, the rest of my premises:
11. To formally re-evaluate OOFLam, we can use the following formula from Bayesian statistics: P(H|E)=P(E|H)*P(H)/(P(E|H)*P(H)+P(E|~H)*P(~H)).
12. There are 3 variables in that formula -- we've already discussed P(E|H), the likelihood of the event occurring, given H (OOFLam).
13. Another variable is the prior probability of H (and ~H).
14. There is a reasonable probability of at least 1% for ~H -- and therefore, no more than 99% for H.
15. The remaining variable is P(E|~H), the likelihood of the event occurring, given ~H. For now, I'll suggest 99%.
16. Inserting the numbers, we get that the posterior probability of H, after adding E to the evidence is: P(H|E)=10-100*.99/(10-100*.99+.99*.01). And rounding off, we get P(H|E)=0/.099, or zero.
17. So, by adding this new info to the evidence for H and rounding off, we get that the probability of H being true is zero.
- That ought to give us some more disagreements to discuss.
Jabba, you seem to be implying that this:
suggests this:
Can you explain why the one suggests the other to you?
14. There is a reasonable probability of at least 1% for ~H -- and therefore, no more than 99% for H.
15. The remaining variable is P(E|~H), the likelihood of the event occurring, given ~H. For now, I'll suggest 99%.
For the same reason I need to be able to tell the difference between my wife and a hat.
7. Often, however, all of the alternative possible results/events produced by the particular situation are extremely unlikely -- in such a case, the unlikelihood of the particular event produced is not evidence
against the hypothesis.
8. In such a case, in order to be evidence against the hypothesis, the particular event needs to be "set apart" from most of the other possible results in a way that is meaningful to the particular hypothesis. A good example is when a lottery is won by the second cousin of the lottery controller.
9. Consequently, in order for my current existence to be evidence against OOFLam, I need to be set apart in a way meaningful to OOFLam.
10. That is the case.
17. So, by adding this new info to the evidence for H and rounding off, we get that the probability of H being true is zero.
You need a description of your wife to tell the difference between her and a hat?
Dave and others,
- Moving right along -- hopefully, the rest of my premises:
11. To formally re-evaluate OOFLam, we can use the following formula from Bayesian statistics: P(H|E)=P(E|H)*P(H)/(P(E|H)*P(H)+P(E|~H)*P(~H)).
12. There are 3 variables in that formula -- we've already discussed P(E|H), the likelihood of the event occurring, given H (OOFLam).
13. Another variable is the prior probability of H (and ~H).
14. There is a reasonable probability of at least 1% for ~H -- and therefore, no more than 99% for H.
15. The remaining variable is P(E|~H), the likelihood of the event occurring, given ~H. For now, I'll suggest 99%.
16. Inserting the numbers, we get that the posterior probability of H, after adding E to the evidence is: P(H|E)=10-100*.99/(10-100*.99+.99*.01). And rounding off, we get P(H|E)=0/.099, or zero.
17. So, by adding this new info to the evidence for H and rounding off, we get that the probability of H being true is zero.
- That ought to give us some more disagreements to discuss.