| Literature DB >> 28405057 |
Tamás Csermely1,2,3, Alexander Rabas1.
Abstract
The question of how to measure and classify people's risk preferences is of substantial importance in the field of economics. Inspired by the multitude of ways used to elicit risk preferences, we conduct a holistic investigation of the most prevalent method, the multiple price list (MPL) and its derivations. In our experiment, we find that revealed preferences differ under various versions of MPLs as well as yield unstable results within a 30-minute time frame. We determine the most stable elicitation method with the highest forecast accuracy by using multiple measures of within-method consistency and by using behavior in two economically relevant games as benchmarks. A derivation of the well-known method by Holt and Laury (American Economic Review 92(5):1644-1655, 2002), where the highest payoff is varied instead of probabilities, emerges as the best MPL method in both dimensions. As we pinpoint each MPL characteristic's effect on the revealed preference and its consistency, our results have implications for preference elicitation procedures in general.Entities:
Keywords: MPL; Multiple price list; Revealed preferences; Risk; Risk preference elicitation methods
Year: 2017 PMID: 28405057 PMCID: PMC5366177 DOI: 10.1007/s11166-016-9247-6
Source DB: PubMed Journal: J Risk Uncertain ISSN: 0895-5646
Risk parameter intervals (Holt/Laury)
| Interpretation | Switching | Risk parameter |
|---|---|---|
| by Holt and Laury ( | Point | Interval |
| Highly risk loving | 1 |
|
| Very risk loving | 2 | −0.95 < |
| Risk loving | 3 | −0.49 < |
| Risk neutral | 4 | −0.15 < |
| Slightly risk averse | 5 | 0.15 < |
| Risk averse | 6 | 0.41 < |
| Very risk averse | 7 | 0.68 < |
| Highly risk averse | 8 | 0.97 < |
| Stay in bed | Never |
|
Notes: This table indicates the mapping from a subject’s chosen switching point into the resulting risk parameter intervals in each method; the leftmost column contains the interpretation of the risk intervals; “Never” means a subject prefers the option “Left” in each row
Method overview
| What is changing? | ||||
|---|---|---|---|---|
| Method | Probability | Highest payoff | Lowest payoff | Sure payoff |
| SGp | yes | no | no | no |
| SGhigh | no | yes | no | no |
| SGlow | no | no | yes | no |
| SGsure | no | no | no | yes |
| SGall | no | yes | yes | yes |
| PGp | yes | no | no | NA |
| PGhigh | no | yes | no | NA |
| PGlow | no | no | yes | NA |
| PGall | yes | yes | yes | NA |
Notes: This table indicates which parameters change from row to row in each method, where SG stands for “standard gamble” and PG stands for “paired gamble.”
Link between MPL representation and literature
| Method | Corresponding Literature |
|---|---|
| SGp | Bruner ( |
| SGhigh | Bruner ( |
| SGlow | |
| SGsure | Cohen et al. ( |
| SGall | Binswanger ( |
| PGp | Holt and Laury ( |
| PGhigh | Drichoutis and Lusk ( |
| PGlow | Drichoutis and Lusk ( |
| PGall | Sabater-Grande and Georgantzis ( |
| Andreoni and Harbaugh ( | |
| Questionnaire | Weber et al. ( |
Notes: On the left, this table lists all MPL and questionnaire methods, and on the right the corresponding literature.
Comparison of results to previous studies
| Method | Our study | Previous Studies | t-test | ||||
|---|---|---|---|---|---|---|---|
| Mean | SD | Mean | SD | Subjects | Study | p-value | |
| PGhigh | 0.87 | 0.56 | 0.35 | 0.18 | 100 | Drichoutis and Lusk ( | .001 |
| PGlow | 0.57 | 0.67 | 0.35 | 0.18 | 100 | Drichoutis and Lusk ( | .002 |
| PGp | 0.62 | 0.54 | 0.32 | 0.41 | 175 | Holt and Laury ( | .001 |
| 0.23 | 0.14 | 39 | Abdellaoui et al. ( | .001 | |||
| 0.59 | 0.07 | 100 | Drichoutis and Lusk ( | .145 | |||
| 0.39 | 0.54 | 78 | Dulleck et al. ( | .006 | |||
| 0.43 | 0.6 | 444 | Crosetto and Filippin ( | .004 | |||
| 0.62 | 0.8 | 268 | Andersen et al. ( | 1 | |||
| 0.67 | 0.57 | 881 | Dave et al. ( | .455 | |||
| PGall | 0.47 | 0.62 | 0.82 | − | 86 | Lejuez et al. ( | − |
| 1.13 | 0.64 | 444 | Crosetto and Filippin ( | .001 | |||
| 0.7 | 0.83 | 444 | Crosetto and Filippin ( | .011 | |||
| SGhigh | 0.4 | 0.65 | 0.51 | 0.59 | 157 | Bruner ( | .168 |
| SGlow | 0.69 | 0.68 | |||||
| SGsure | 0.31 | 0.66 | 0.2 | 0.08 | 39 | Abdellaoui et al. ( | .302 |
| SGp | 0.02 | 0.72 | 0.45 | 0.45 | 157 | Bruner ( | .001 |
| SGall | 0.07 | 0.63 | 0.6 | 0.59 | 256 | Eckel and Grossman ( | .001 |
| 0.73 | 0.9 | 30 | Reynaud and Couture ( | .001 | |||
| 0.694 | 0.33 | 444 | Crosetto and Filippin ( | .001 | |||
Notes: mean and standard deviation in terms of CRRA-coefficients; N=96 in our study; PGp by Crosetto and Filippin (2016) follows the method in Lejuez et al. (2002); in Lejuez et al. (2002) no standard deviation was reported
Fig. 1Distributions of risk preferences; a low value indicates risk loving and a high value indicates risk averse behavior; x-axis: switching points (e.g. risk preferences) of subjects, where 1 means a subject switches from left to right in the first row and 9 means a subject never switches; y-axis: frequency of switching point
Pairwise Wilcoxon test for equality of distribution
| SGp | SGhigh | SGlow | SGsure | SGall | PGp | PGhigh | PGlow | PGall | GQ | |
|---|---|---|---|---|---|---|---|---|---|---|
| SGhigh | .00*** | |||||||||
| SGlow | .00*** | .00*** | ||||||||
| SGsure | .00*** | .37 | .00*** | |||||||
| SGall | .79 | .00*** | .00*** | .01** | ||||||
| PGp | .00*** | .01** | .28 | .00*** | .00*** | |||||
| PGhigh | .00*** | .00*** | .02* | .00*** | .00*** | .00*** | ||||
| PGlow | .00*** | .02* | .23 | .01** | .00*** | .68 | .00*** | |||
| PGall | .00*** | .31 | .02* | .04* | .00*** | .08 | .00*** | .39 | ||
| GQ | .02* | .03* | .00*** | .29 | .04* | .00*** | .00*** | .00*** | .01** | |
| FQ | .00*** | .64 | .01** | .29 | .00*** | .02* | .00*** | .04* | .36 | .00*** |
Notes: p-values of pairwise Wilcoxon tests are displayed; GQ: general question; FQ: financial question; stars are given as follows: *: p <0.05; **: p <0.01; ***: p <0.001
Spearman rank correlation coefficients
| SGp | SGhigh | SGlow | SGsure | SGall | PGp | PGhigh | PGlow | PGall | GQ | |
|---|---|---|---|---|---|---|---|---|---|---|
| SGhigh | .46 | |||||||||
| SGlow | .33*** | .44*** | ||||||||
| SGsure | .05 | .22* | .26* | |||||||
| SGall | .03 | .18 | -.03 | .19 | ||||||
| PGp | .17 | .15 | .17 | .21* | -.04 | |||||
| PGhigh | .20 | .39*** | .21* | .03** | .21* | .25* | ||||
| PGlow | .31** | .28** | .25* | .19 | -.02 | .13 | .21* | |||
| PGall | .24 | .21* | -.01 | .08 | .19 | .04 | -.01 | .08 | ||
| GQ | .15 | .13* | .06 | -.12 | .11 | .02 | .14 | .04 | .06 | |
| FQ | .26* | .23* | .29* | .18 | .10 | -.04 | .04 | .24* | .13 | .46*** |
Notes: Table includes the nine different methods and the questionnaires (GQ: general questionnaire, FQ: financial questionnaire); stars are given as follows: *: p <0.05; **: p <0.01; ***: p <0.001
Correlation coefficients between the methods
| SGp | SGhigh | SGlow | SGsure | SGall | PGp | PGhigh | PGlow | PGall | GQ | |
|---|---|---|---|---|---|---|---|---|---|---|
| SGhigh | .46*** | |||||||||
| SGlow | .37*** | .46*** | ||||||||
| SGsure | .01 | .18 | .25* | |||||||
| SGall | .02 | .12 | 0 | .16 | ||||||
| PGp | .13 | .12 | .15 | .23** | −.08 | |||||
| PGhigh | .07 | .27** | .10 | .26* | .12 | .26* | ||||
| PGlow | .27** | .21* | .20 | .17 | −.04 | .12 | .10 | |||
| PGall | .17 | .16 | −.06 | .04 | .17 | −.01 | −.08 | .03 | ||
| GQ | .12 | .16 | 0 | −.14 | .09 | −.07 | .12 | .02 | .01 | |
| FQ | .25** | .17 | .27** | .19 | .07 | −.05 | −.02 | .20 | .03 | .46** |
Notes: This table shows standard correlations as opposed to Spearman rank correlations as in Table 5. SG stands for “standard gamble” and PG for “paired gamble”. Our conclusions remain qualitatively the same. Stars are given as follows: *: p <0.05; **: p <0.01; ***: p <0.001
Similarities across all methods
| Not Repeated | Repeated | |
|---|---|---|
| High Payoff changes | −.108 ∗∗ | .052 |
| Low Payoff changes | .208 ∗∗∗ | .206 ∗∗∗ |
| Probability changes | −.306 ∗∗∗ | −.335 ∗∗∗ |
| Certainty Equivalent changes | .086 ∗ | −.039 |
| Has Certainty Equivalent | −.496 ∗∗∗ | −.504 ∗∗∗ |
| Top-Down Representation | .085 ∗∗ | .035 |
| Constant | .835 | .205 |
|
| .121 | .190 |
| Number of Observations | 864 | 288 |
Notes: OLS regressions clustered by individual subjects with one observation being the outcome from one answer of one subject in one method; dependent variable is the resulting CRRA-coefficient, with low scores indicating risk-loving behavior; independent variables on the left are dummies; nonsignificant controls for age, gender, order, BIG5 scores, income and CRT scores are included in the regressions but omitted in the table; first column gives results for the first time subjects encountered one of the nine methods, second column for the repeated measurements; stars are given as follows (differently than in the other tables, due to the absence of a multiple testing problem): *: p <0.10; **: p <0.05; ***: p <0.01
Explanatory power
| SGp | SGhigh | SGlow | SGsure | SGall | PGp | PGhigh | PGlow | PGall | GQ | FQ | |
|---|---|---|---|---|---|---|---|---|---|---|---|
| Auction | OLS coefficients | ||||||||||
| .68 | .52 | .57 | −.03 | −.3 | .03 | 0 | .58 | −.52 | .13 | −.08 | |
| (.05) | (.03) | (.04) | (.02) | (.02) | (.02) | (.02) | (.04) | (.03) | (.03) | (.03) | |
| Inv. Low | −.09 | −.94* | −.48 | .01 | −.67 | −.39 | −1.48*** | −.23 | −.44 | .3* | .09 |
| (.00) | (.03) | (.00) | (.00) | (.00) | (.00) | (.08) | (.00) | (.00) | (.02) | (.00) | |
| Inv. High | −.9** | −.68 | −.28 | .22 | .58 | −.46 | −.66 | −.65 | .2 | .28** | .25** |
| (.16) | (.12) | (.09) | (.09) | (.11) | (.09) | (.11) | (.12) | (.08) | (.13) | (.13) | |
| Auct. | |||||||||||
| Auct. | .23* | .09 | .14 | .17 | .07 | .11 | .06 | .16 | −.13 | .10 | .11 |
| Inv. Low | .02 | .19 | .17 | .06 | .06 | .11 | .36*** | .12 | .04 | .19 | .11 |
| Inv. High | .28** | .28** | .05 | .00 | .03 | .13 | .26** | .23* | .09 | .31** | .28** |
Notes: In the OLS regression, the dependent variable is the outcome in one of the four benchmark games, the independent variables are the outcome in terms of ρ from one method plus controls (age, gender, BIG5, CRT test, income, years of university education); the adjusted R 2 value for the regression can be found below a coefficient; Stars are given as follows: *: p <0.05; **: p <0.01; ***: p <0.001
Deviations from predictions
| SGp | SGhigh | SGlow | SGsure | SGall | PGp | PGhigh | PGlow | PGall | |
|---|---|---|---|---|---|---|---|---|---|
| Deviation | 1.91 | 2.41 | 2.19 | 2.03 | 2.11 | 2.27 | 1.75 | 2.17 | 2.11 |
Notes: Absolute average deviations from the predictions in the benchmark games
Stability Measures
| Method | KS-Test | Rank Corr. | AAD | Complexity |
|---|---|---|---|---|
| SGp | .453 | .51*** | 1.60 | 3.42 |
| SGsure | .003 | .51*** | 1.37 | 3.92 |
| SGhigh | .644 | .39** | 1.48 | 3.97 |
| SGlow | .007 | .35 | 1.96 | 3.20 |
| SGall | .005 | .16 | 1.8 | 4.81 |
| PGp | .240 | .23 | 1.33 | 4.21 |
| PGhigh | .879 | .45*** | 1.24 | 3.78 |
| PGlow | .006 | .25 | 2.04 | 4.29 |
| PGall | .000 | .19 | 1.85 | 5.75 |
Notes: First column: P-values for a Kolmogorov-Smirnov test of equality of distributions; Second column: Rank correlation between the distributions of first and second answers (stars indicate significant rank correlation); Third column: Absolute average deviation (AAD) between the first and the second decision in the same method; Fourth column: Indicates a subject’s perceived complexity of a method; Stars are given as follows: *: p <0.1; **: p <0.05; ***: p <0.01
Fig. 2Distributions of absolute differences in switching points between the first and the second time a method is encountered
Testing for order effects – No significant effects
| Method | Dependent Variable | |
|---|---|---|
| CRRA Standard Deviation | CRRA | |
| PGhigh | −0.001 | 0.006 |
| PGlow | −0.013 | 0.019 |
| PGp | −0.021 | 0.028 |
| PGall | −0.013 | 0.013 |
| SGhigh | −0.007 | −0.014 |
| SGlow | −0.023 | 0.029 |
| SGsure | 0.031 | −0.037 |
| SGp | 0.021 | −0.020 |
| SGall | −0.011 | −0.004 |
| Overall | −0.004 | 0.000 |
Notes: Reported coefficients for OLS regressions; the dependent variable is the standard deviation (column 1) of the CRRA-coefficient or the CRRA score (column 2) across all subjects in one particular order, the independent variable is the order in which a method appeared, i.e. the number of previously encountered MPLs; stars are given as follows: *: p <0.1; **: p <0.05; ***: p <0.01