PSY 301 Lecture Notes - Lecture 17: Models 1, Randomness, Horoscope

75 views7 pages
School
Department
Course
Professor

Document Summary

Evaluation how you combine data and model to reach an conclusion. Absence of evidence is not the same as evidence of absence: a(cid:271)se(cid:374)(cid:272)e of e(cid:448)ide(cid:374)(cid:272)e (cid:373)ea(cid:374)s (cid:449)e do(cid:374)(cid:859)t ha(cid:448)e data, e(cid:448)ide(cid:374)(cid:272)e of a(cid:271)se(cid:374)(cid:272)e (cid:373)ea(cid:374)s (cid:449)e ha(cid:448)e so(cid:373)e data a(cid:374)d do(cid:374)(cid:859)t see so(cid:373)ethi(cid:374)g (cid:449)e are looki(cid:374)g for. Absence of data (lack of data) > we are not sure > usually means not be able to reject. Evidence of absence > we know something > able to reject some models (because we have data) Yes- imply we can rule out that there was no breach in protocol. We cannot rule out a breach in protocol. Yes: our (cid:862)fair(cid:863) (cid:373)odel allo(cid:449)s for a(cid:374)(cid:455) out(cid:272)o(cid:373)e, but, (cid:1005)(cid:1004) 6(cid:859)s i(cid:374) a ro(cid:449) is (cid:448)er(cid:455) i(cid:373)pro(cid:271)a(cid:271)le. 0. 05 (1 in 20) is the common threshold (not magic just convention) In long term, science relies on a rule of repeatability. if the observation eventually fails to support a model, we reject it.

Get access

Grade+
$40 USD/m
Billed monthly
Grade+
Homework Help
Study Guides
Textbook Solutions
Class Notes
Textbook Notes
Booster Class
10 Verified Answers
Class+
$30 USD/m
Billed monthly
Class+
Homework Help
Study Guides
Textbook Solutions
Class Notes
Textbook Notes
Booster Class
7 Verified Answers

Related Documents