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Rescorla-Wagner 1972 Theory of Classical Conditioning

Rescorla-Wagner Theory (1972). Organisms only learn when events violate their expectations (like Kamin's surprise hypothesis)Expectations are built up when

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Rescorla-Wagner 1972 Theory of Classical Conditioning

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    1. Rescorla-Wagner (1972) Theory of Classical Conditioning

    2. Rescorla-Wagner Theory (1972) Organisms only learn when events violate their expectations (like Kamin’s surprise hypothesis) Expectations are built up when ‘significant’ events follow a stimulus complex These expectations are only modified when consequent events disagree with the composite expectation

    3. Rescorla-Wagner Theory These concepts were incorporated into a mathematical formula: Change in the associative strength of a stimulus depends on the existing associative strength of that stimulus and all others present If existing associative strength is low, then potential change is high; If existing associative strength is high, then very little change occurs The speed and asymptotic level of learning is determined by the strength of the CS and UCS

    4. Rescorla-Wagner Mathematical Formula ?Vcs = c (Vmax – Vall) V = associative strength ? = change (the amount of change) c = learning rate parameter Vmax = the maximum amount of associative strength that the UCS can support Vall = total amount of associative strength for all stimuli present Vcs = associative strength to the CS

    5. Before conditioning begins: Vmax = 100 (number is arbitrary & based on the strength of the UCS) Vall = 0 (because no conditioning has occurred) Vcs = 0 (no conditioning has occurred yet) c = .5 (c must be a number between 0 and 1.0 and is a result of multiplying the CS intensity by the UCS intensity)

    6. First Conditioning Trial Trial c (Vmax - Vall) = ?Vcs 1 .5 * 100 - 0 = 50

    7. Second Conditioning Trial Trial c (Vmax - Vall) = ?Vcs 2 .5 * 100 - 50 = 25

    8. Third Conditioning Trial Trial c (Vmax - Vall) = ?Vcs 3 .5 * 100 - 75 = 12.5

    9. 4th Conditioning Trial Trial c (Vmax - Vall) = ?Vcs 4 .5 * 100 - 87.5 = 6.25

    10. 5th Conditioning Trial Trial c (Vmax - Vall) = ?Vcs 5 .5 * 100 - 93.75 = 3.125

    11. 6th Conditioning Trial Trial c (Vmax - Vall) = ?Vcs 6 .5 * 100 - 96.88 = 1.56

    12. 7th Conditioning Trial Trial c (Vmax - Vall) = ?Vcs 7 .5 * 100 - 98.44 = .78

    13. 8th Conditioning Trial Trial c (Vmax - Vall) = ?Vcs 8 .5 * 100 - 99.22 = .39

    14. 1st Extinction Trial Trial c (Vmax - Vall) = ?Vcs 1 .5 * 0 - 99.61 = -49.8

    15. 2nd Extinction Trial Trial c (Vmax - Vall) = ?Vcs 2 .5 * 0 - 49.8 = -24.9

    16. Extinction Trials Trial c (Vmax - Vall) = ?Vcs 3 .5 * 0 - 12.45 = -12.46 Trial c (Vmax - Vall) = ?Vcs 4 .5 * 0 - 6.23 = -6.23 Trial c (Vmax - Vall) = ?Vcs 5 .5 * 0 - 3.11 = -3.11 Trial c (Vmax - Vall) = ?Vcs 6 .5 * 0 - 1.56 = -1.56

    17. Hypothetical Acquisition & Extinction Curves with c=.5 and Vmax = 100

    18. Acquisition & Extinction Curves with c=.5 vs. c=.2 (Vmax = 100)

    19. Theory Handles other Phenomena Overshadowing Whenever there are multiple stimuli or a compound stimulus, then Vall = Vcs1 + Vcs2 Trial 1: ?Vnoise = .2 (100 – 0) = (.2)(100) = 20 ?Vlight = .3 (100 – 0) = (.3)(100) = 30 Total Vall = current Vall + ?Vnoise + ?Vlight = 0 +20 +30 =50 Trial 2: ?Vnoise = .2 (100 – 50) = (.2)(50) = 10 ?Vlight = .3 (100 – 50) = (.3)(50) = 15 Total Vall = current Vall + ?Vnoise + ?Vlight = 50+10+15=75

    20. Theory Handles other Phenomena Blocking Clearly, the first 16 trials in Phase 1 will result in most of the Vmax accruing to the first CS, leaving very little Vmax available to the second CS in Phase 2 Overexpectation Effect When CSs trained separately (where both are close to Vmax) are then presented together you’ll actually get a decrease in associative strength

    21. Rescorla-Wagner Model The theory is not perfect: Can’t handle configural learning without a little tweaking Can’t handle latent inhibition But, it has been the “best” theory of Classical Conditioning

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