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INFORMATION,                   MGMT 758

EVOLUTION AND UTILITY                  Paul M. Cohen

          Samuelson & Swinkels, 2006
THE PROBLEM




 good!              awesome!
(2.8 utils)         (3.6 utils)
THE PROBLEM




Problem: utility of a choice depends on
  the salience of alternative choices
      i.e., choice set-dependent preferences
      e.g., compromise effect & decoy effect
      good!
      ehh…
       ehh…                               awesome!
                                           awesome!
    (2.8 utils)
  (2.8 2.2 utils)
   (2.8 2.2 utils)                          (3.6 utils)
                                             (3.6 utils)

  Changing utility = don’t represent evolutionary benefits of
        consumption (if it did, it would be consistent)
THE PROBLEM




Problem: utility of a choice depends on
  the salience of alternative choices
     i.e., choice set-dependent preferences
     e.g., compromise effect & decoy effect
     good!                       awesome!
THE PROBLEM


It makes sense to attach utility to outcomes if we
know the perfect relationship between the two.

    Sex            Offspring

If your goal is to maximize offspring , and you have a
perfect prior statistical understanding of the
world, then you can attach a utility to maximizing
offspring.
                    typical conception of utility
THE MODEL


But, if you don’t know these perfect correlations….
(because it’s impossible to do so)                      e.g., an opportunity
                 is faced with an          OPTION               to eat
You can’t attach utilities to outcomes
 ACTOR


You have to attach utilities to actions to (not eating)
          (eating)   accept         reject   learn
more about the world 1- p
                   p             q         1- q

                   success       failure      success      failure
Especially the xpart of the world where you don’t
                                          x

know the consequences= of actions
                          x success utility



                    Success: survive long enough to reproduce
THE MODEL

Overview                          If outcomes are perfectly understood in their
                                 effect on success, then actions have no utility.
                                                                    e.g., an opportunity
1.   The probabilities of                                  OPTION              to eat
     p and q are not
     ACTOR
     know (e.g., the             But, you can’t perfectly process signals about
     danger of not eating)                 the probability of success

2.   Actors face noisy
                             (eating)
                                  You     accept                      reject   (not eating)
                                        can’t attach utilities to outcomes, because
     signals of p and q                   you can’t perfectly process signals
                                    p               1- p                   q    1- q

3.   Signals are                Instead, you have to attach utilities to accepting
                                 success       failure     success        failure
     transformed using a          or rejecting an option at the marginal signal
                                   x                          x
     rule (Φ) to estimate
     the probability of                              x = success utility
                                We incorporate irrelevant factors into our utility
     success                      because they are correlated with quality of
                                 Success: survive information to reproduce
                                                  long enough
THE MODEL

Overview                                    If outcomes are perfectly understood in their
                                           effect on success, then actions have no utility.
                                                                                   e.g., an opportunity
1.   The probabilitiesfaced with an
                     is of                         OPTION           OPTION
                                                                 e.g., an opportunity
                                                                                           to eat
     p and q are not                                                           to eat
     ACTOR
     know (e.g., the                       But, you can’t perfectly process signals about
     danger of not eating)                           the probability of success

2.   Actors face noisy
                                      (eating) accept                   (notreject
                                   acceptYou can’t attach utilities to outcomes, because
                                                                                             (not eating)
                    (eating)                               reject            eating)
     signals of p and q                            you can’t perfectly process signals
                                             p                                   q
                               p            1- p            q1- p               1- q
                                                                                            1- q

3.   Signals are                         Instead, you have to attach utilities to accepting
                                          success      failure      success        failure
                        success          failure     success       failure
     transformed using a                    or rejecting an option at the marginal signal
                                             x                          x
     rule (Φ) to estimatex+y                y              x                    0
     the probability of                                        x = success utility
                                     Wexincorporate irrelevant factors into our utility
                                           = success utility
     success                            y = accepting utility
                                        because they are correlated with quality of
                                       Success: survive information to reproduce
                                                              long enough
                         Success: survive long enough to reproduce
THE MODEL

Overview have an accurate statisticalare perfectly understood world, and
  We (a) don’t         If outcomes representation of the in their
       The we can’t accurately process the signals we get about the world eat
       (b) probabilities of             effect on success, then actions have no utility.
                                                                                e.g., an opportunity
1.                     is faced with an      OPTION        OPTION
                                                              e.g., an opportunity
                                                                                        to
       p and q are not                                                to eat
      ACTOR utility does not involve selecting the evolutionary signals of an
       Optimal
       know (e.g., the                  But, you can’t perfectly process value about
       danger of not eating)                       the probability of success
       action, but the “information-processing problem” that the individual
       faces in choosing between actions (especially when info quality is (not eating)
                                      You accept                                  poor)
                                                                     (notreject
                                 (eating) can’t attach utilities to outcomes, because
2.     Actors face noisy
                     (eating) accept                    reject            eating)
       signals of p and q                         you can’t perfectly process signals
                                             p                                       q
   By making mistakes in
                        p            different contexts,q1- p
                                            1- p         our
                                                      information processing
                                                               1- q
                                                                              1- q

3. Signals are better tailored to the world, failure attach utilities to acceptingus
    abilities are                              because these contexts allow
                                Instead, you have to
                                 success                    success       failure
                     success   failure       success       failure
    transformed using a outcome of x rejecting an option at the marginal signal
    to understand the             orchoices in different circumstances
                                                               x
       rule (Φ) to estimatex+y               y             x                    0
       the probability of                                      x = success utility
                                        Wexincorporate irrelevant factors into our utility
                                              = success utility
       success                             y = accepting utility
                                           because they are correlated with quality of
                                          Success: survive information to reproduce
                                                                 long enough
                            Success: survive long enough to reproduce

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Information, Evolution, and Utility (Samuelson & Swinkels, 2006)

  • 1. INFORMATION, MGMT 758 EVOLUTION AND UTILITY Paul M. Cohen Samuelson & Swinkels, 2006
  • 2. THE PROBLEM good! awesome! (2.8 utils) (3.6 utils)
  • 3. THE PROBLEM Problem: utility of a choice depends on the salience of alternative choices i.e., choice set-dependent preferences e.g., compromise effect & decoy effect good! ehh… ehh… awesome! awesome! (2.8 utils) (2.8 2.2 utils) (2.8 2.2 utils) (3.6 utils) (3.6 utils) Changing utility = don’t represent evolutionary benefits of consumption (if it did, it would be consistent)
  • 4. THE PROBLEM Problem: utility of a choice depends on the salience of alternative choices i.e., choice set-dependent preferences e.g., compromise effect & decoy effect good! awesome!
  • 5. THE PROBLEM It makes sense to attach utility to outcomes if we know the perfect relationship between the two. Sex Offspring If your goal is to maximize offspring , and you have a perfect prior statistical understanding of the world, then you can attach a utility to maximizing offspring. typical conception of utility
  • 6. THE MODEL But, if you don’t know these perfect correlations…. (because it’s impossible to do so) e.g., an opportunity is faced with an OPTION to eat You can’t attach utilities to outcomes ACTOR You have to attach utilities to actions to (not eating) (eating) accept reject learn more about the world 1- p p q 1- q success failure success failure Especially the xpart of the world where you don’t x know the consequences= of actions x success utility Success: survive long enough to reproduce
  • 7. THE MODEL Overview If outcomes are perfectly understood in their effect on success, then actions have no utility. e.g., an opportunity 1. The probabilities of OPTION to eat p and q are not ACTOR know (e.g., the But, you can’t perfectly process signals about danger of not eating) the probability of success 2. Actors face noisy (eating) You accept reject (not eating) can’t attach utilities to outcomes, because signals of p and q you can’t perfectly process signals p 1- p q 1- q 3. Signals are Instead, you have to attach utilities to accepting success failure success failure transformed using a or rejecting an option at the marginal signal x x rule (Φ) to estimate the probability of x = success utility We incorporate irrelevant factors into our utility success because they are correlated with quality of Success: survive information to reproduce long enough
  • 8. THE MODEL Overview If outcomes are perfectly understood in their effect on success, then actions have no utility. e.g., an opportunity 1. The probabilitiesfaced with an is of OPTION OPTION e.g., an opportunity to eat p and q are not to eat ACTOR know (e.g., the But, you can’t perfectly process signals about danger of not eating) the probability of success 2. Actors face noisy (eating) accept (notreject acceptYou can’t attach utilities to outcomes, because (not eating) (eating) reject eating) signals of p and q you can’t perfectly process signals p q p 1- p q1- p 1- q 1- q 3. Signals are Instead, you have to attach utilities to accepting success failure success failure success failure success failure transformed using a or rejecting an option at the marginal signal x x rule (Φ) to estimatex+y y x 0 the probability of x = success utility Wexincorporate irrelevant factors into our utility = success utility success y = accepting utility because they are correlated with quality of Success: survive information to reproduce long enough Success: survive long enough to reproduce
  • 9. THE MODEL Overview have an accurate statisticalare perfectly understood world, and  We (a) don’t If outcomes representation of the in their The we can’t accurately process the signals we get about the world eat (b) probabilities of effect on success, then actions have no utility. e.g., an opportunity 1. is faced with an OPTION OPTION e.g., an opportunity to p and q are not to eat  ACTOR utility does not involve selecting the evolutionary signals of an Optimal know (e.g., the But, you can’t perfectly process value about danger of not eating) the probability of success action, but the “information-processing problem” that the individual faces in choosing between actions (especially when info quality is (not eating) You accept poor) (notreject (eating) can’t attach utilities to outcomes, because 2. Actors face noisy (eating) accept reject eating) signals of p and q you can’t perfectly process signals p q  By making mistakes in p different contexts,q1- p 1- p our information processing 1- q 1- q 3. Signals are better tailored to the world, failure attach utilities to acceptingus abilities are because these contexts allow Instead, you have to success success failure success failure success failure transformed using a outcome of x rejecting an option at the marginal signal to understand the orchoices in different circumstances x rule (Φ) to estimatex+y y x 0 the probability of x = success utility Wexincorporate irrelevant factors into our utility = success utility success y = accepting utility because they are correlated with quality of Success: survive information to reproduce long enough Success: survive long enough to reproduce