LFD Book Forum Exercise 1.11
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#11
06-04-2016, 08:24 PM
 henry2015 Member Join Date: Aug 2015 Posts: 31
Re: Exercise 1.11

Thanks for confirming!

Appreciate it!
#12
04-29-2017, 11:00 AM
 phil123 Junior Member Join Date: Apr 2017 Posts: 1
Re: Exercise 1.11

Hi, everyone.

Regarding part d) of this problem, I think the answer is "no", correct, since isn't the real question whether or not sampled data has any value for infering a paramter?

Did I totally miss the point?

The first 3 I got.
#13
11-14-2017, 03:27 PM
 don slowik Member Join Date: Nov 2017 Posts: 11
Re: Exercise 1.11

If the probability of +1 is in fact less than 0.5, than h_C does better than h_S out of training data (as it will predict the more probable -1 for each point). But the probability of this happening (p being less than 0.5 with all 25 training data points showing y=+1) is P(|v-p|>0.5) < 2exp(-2*0.5**2 * 25) = 7.45e-06
#14
01-08-2018, 09:51 PM
 samyh Junior Member Join Date: Jan 2018 Posts: 2
Re: Exercise 1.11

Thank You Good Work!
العاب
#15
02-08-2018, 04:46 AM
 subbupd Member Join Date: Aug 2017 Location: Singapore Posts: 14
Re: Exercise 1.11

Thank you Prof. Yaser!

You're doing a great job!

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