| Literature DB >> 26283988 |
Noémi K Schuurman1, Jan H Houtveen2, Ellen L Hamaker1.
Abstract
Measurement error is omnipresent in psychological data. However, the vast majority of applications of autoregressive time series analyses in psychology do not take measurement error into account. Disregarding measurement error when it is present in the data results in a bias of the autoregressive parameters. We discuss two models that take measurement error into account: An autoregressive model with a white noise term (AR+WN), and an autoregressive moving average (ARMA) model. In a simulation study we compare the parameter recovery performance of these models, and compare this performance for both a Bayesian and frequentist approach. We find that overall, the AR+WN model performs better. Furthermore, we find that for realistic (i.e., small) sample sizes, psychological research would benefit from a Bayesian approach in fitting these models. Finally, we illustrate the effect of disregarding measurement error in an AR(1) model by means of an empirical application on mood data in women. We find that, depending on the person, approximately 30-50% of the total variance was due to measurement error, and that disregarding this measurement error results in a substantial underestimation of the autoregressive parameters.Entities:
Keywords: Bayesian modeling; autoregressive modeling; idiographic; measurement error; n = 1; time series analysis
Year: 2015 PMID: 26283988 PMCID: PMC4516825 DOI: 10.3389/fpsyg.2015.01038
Source DB: PubMed Journal: Front Psychol ISSN: 1664-1078
Figure 1(A) Graphical representation of an AR(1) model. (B) Graphical representation of an AR(1)+WN model. (C) Graphical representation of an ARMA(1,1) model.
Figure 2Coverage rates, absolute errors, and bias for the parameter estimates for the frequentist and Bayesian AR(1), ARMA(1,1), and AR(1)+WN models across different proportions of measurement error variance to the total variance.
Figure 3Coverage rates, absolute errors, and bias for the parameter estimates for the frequentist and Bayesian AR(1), ARMA(1,1), and AR(1)+WN models across different values for ϕ.
Figure 4Coverage rates, absolute errors, and bias for the parameter estimates for the frequentist and Bayesian AR(1), ARMA(1,1), and AR(1)+WN models across sample sizes.
Parameter estimates for the AR(1), ARMA(1,1), and AR+WN model for the mood of eight women, estimated with Bayesian software.
| 1 | AR1 | 75 (72, 79) | 0.08 (−0.17, 0.32) | 166 (122, 235) | – | – | – |
| ARMA | 76 (72, 81) | 0.53 (−0.32, 0.90) | 21.34 (− 91, 180) | 125 (− 6, 278) | 160 (117, 227) | −0.41 (−0.81, 0.29) | |
| ARWN | 76 (72, 79) | 0.39 (−0.23, 0.77) | 42 (3, 160) | 112 (16, 193) | – | – | |
| 2 | AR1 | 63 (59, 68) | 0.36 (0.13, 0.57) | 188 (141, 256) | – | – | – |
| ARMA | 63 (58, 69) | 0.48 (−0.21, 0.97) | 103 (−740, 1087) | 69 (−870, 960) | 189 (142, 257) | −0.13 (−0.64, 0.49) | |
| ARWN | 63 (58, 68) | 0.52 (0.15, 0.84) | 101 (20, 208) | 77 (7, 184) | – | – | |
| 3 | AR1 | 63 (61, 66) | 0.21 (0, 0.42) | 108 (81, 148) | – | – | – |
| ARMA | 64 (61, 66) | 0.02 (−0.72, 0.81) | −1 (−288, 251) | 109 (−134, 418) | 105 (79, 144) | 0.19 (−0.64, 0.95) | |
| ARWN | 64 (61, 67) | 0.40 (−0.01, 0.82) | 38 (4, 112) | 64 (6, 118) | – | – | |
| 4 | AR1 | 56 (53, 58) | 0.21 (0.01, 0.42) | 103 (78, 141) | – | – | – |
| ARMA | 54 (40, 59) | 0.85 (0.35, 0.99) | 7 (1, 47) | 75 (44, 112) | 95 (71, 130) | −0.68 (−0.87,−0.14) | |
| ARWN | 55 (49, 59) | 0.69 (0.07, 0.97) | 19 (2, 88) | 70 (17, 111) | – | – | |
| 5 | AR1 | 69 (64, 75) | 0.48 (0.28, 0.67) | 174 (131, 239) | – | – | – |
| ARMA | 69 (62, 77) | 0.67 (0.20, 0.92) | 86 (24, 348) | 61 (−139, 143) | 173 (130, 237) | −0.26 (−0.58, 0.24) | |
| ARWN | 69 (62, 77) | 0.67 (0.37, 0.91) | 90 (27, 190) | 66 (6, 140) | – | – | |
| 6 | AR1 | 73 (71, 74) | 0.27 (0.07, 0.46) | 31 (24, 42) | – | – | – |
| ARMA | 73 (71, 74) | 0.18 (−0.43, 0.66) | 22 (−305, 349) | 8 (−314, 339) | 31 (24, 42) | 0.09 (−0.45, 0.61) | |
| ARWN | 73 (71, 74) | 0.33 (0.01, 0.62) | 21 (4, 35) | 10 (0.51, 30) | – | – | |
| 7 | AR1 | 71 (69, 73) | 0.08 (−0.13, 0.28) | 105 (79, 144) | – | – | – |
| ARMA | 71 (65, 75) | 0.48 (−0.77, 0.99) | 7 (−132, 175) | 87 (−63, 248) | 104 (78, 142) | −0.36 (−0.90, 0.77) | |
| ARWN | 71 (68, 74) | 0.26 (−0.57, 0.92) | 23 (1, 101) | 76 (8, 123) | – | – | |
| 8 | AR1 | 73 (71, 74) | 0.03 (−0.18, 0.24) | 59 (44, 80) | – | – | – |
| ARMA | 73 (71, 74) | −0.22 (−0.81, 0.84) | −5 (−131, 102) | 67 (−41, 197) | 57 (43, 78) | 0.31 (−0.98, 0.95) | |
| ARWN | 73 (71, 74) | −0.03 (−0.65, 0.51) | 16 (0.35, 61) | 42 (2, 70) | – | – |
Note that the negative values for in the credible interval for and for the ARMA(1,1) models result, because they are calculated a posterior based on the samples for ϕ, θ, and based on Equations (8) and (9): It is possible that for certain combinations of these parameters and become negative. For participants 3 and 8 the ARMA(1,1) model did not converge properly, so that these results should be interpreted with caution.