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CLIMR_primary-results.qmd
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CLIMR_primary-results.qmd
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---
format: docx
---
## Temporal Distance
The temporal distance studies — direct replications of Liberman & Trope (1998,
Study 1) — yielded a meta-analytic effect of
`r report_meta_effect(meta_temporal)`. The lower bound of the 95% confidence
interval for this estimate `r report_meta_ci(meta_temporal)`. Transforming the
meta-analytic estimate to an unstandardized effect, we found that on average
participants gave `r report_meta_bt(bt_temporal)` abstract responses on the
study specific 19-item BIF when they were assigned to the distant condition,
compared to the close condition. A Q-test indicated an amount of heterogeneity
`r report_meta_het(meta_temporal)`.
In a two-group experiment, the meta-analytic effect size for the temporal
studies would require N = `r format(ceiling(power_80_n_temporal), nsmall = 0)` participants to
detect with 80% power and N = `r format(ceiling(power_95_n_temporal), nsmall = 0)` participants to
detect with 95% power. Of the experiments in the previous literature, `r report_power_80(smaller_prop_temporal)` had at least 80% power to detect the meta-analytic effect size for this replication. Across sample sizes from
previous experiments, the median power for this effect size estimate was `r format(round(100 * median_power_temporal, 1), nsmall = 1)`%.
Across labs, the meta-analytic estimate for the effect on the manipulation check
for temporal distance was `r report_meta_effect(meta_mc_temporal)`. The lower
bound of the 95% confidence interval for this estimate `r report_meta_ci(meta_mc_temporal)`.
## Spatial Distance
The spatial distance studies — direct replications of Fujita et al. (2006, Study
1) — yielded a meta-analytic effect of `r report_meta_effect(meta_spatial)`. The
lower bound of the 95% confidence interval for this estimate `r report_meta_ci(meta_spatial)`. Transforming the meta-analytic estimate to an unstandardized effect, we found that on average participants gave `r report_meta_bt(bt_spatial)` abstract responses on the study specific 13-item BIF when they were assigned to the distant condition, compared to the close
condition. A Q-test indicated an amount of heterogeneity `r report_meta_het(meta_spatial)`.
In a two-group experiment, the meta-analytic effect size for the spatial
studies would require N = `r format(ceiling(power_80_n_spatial), nsmall = 0)` participants to
detect with 80% power and N = `r format(ceiling(power_95_n_spatial), nsmall = 0)` participants to
detect with 95% power. Of the experiments in the previous literature, `r report_power_80(smaller_prop_spatial)` had at least 80% power to detect the meta-analytic effect size for this replication. Across sample sizes from
previous experiments, the median power for this effect size estimate was `r format(round(100 * median_power_spatial, 1), nsmall = 1)`%.
Across labs, the meta-analytic estimate for the effect on the manipulation check
for spatial distance was `r report_meta_effect(meta_mc_spatial)`. The lower
bound of the 95% confidence interval for this estimate `r report_meta_ci(meta_mc_spatial)`.
## Social Distance
The social distance studies yielded a meta-analytic effect of
`r report_meta_effect(meta_social)`. The lower bound of the 95% confidence
interval for this estimate `r report_meta_ci(meta_social)`. Transforming the
meta-analytic estimate to an unstandardized effect, we found that on average
participants gave `r report_meta_bt(bt_social)` abstract responses on the
full 25-item BIF when they were assigned to the distant condition,
compared to the close condition. A Q-test indicated an amount of heterogeneity
`r report_meta_het(meta_social)`.
In a two-group experiment, the meta-analytic effect size for the social
studies would require N = `r format(ceiling(power_80_n_social), nsmall = 0)` participants to
detect with 80% power and N = `r format(ceiling(power_95_n_social), nsmall = 0)` participants to
detect with 95% power. Of the experiments in the previous literature, `r report_power_80(smaller_prop_social)` had at least 80% power to detect the meta-analytic effect size for this replication. Across sample sizes from
previous experiments, the median power for this effect size estimate was `r format(round(100 * median_power_social, 1), nsmall = 1)`%.
Across labs, the meta-analytic estimate for the effect on the manipulation check
for social distance was `r report_meta_effect(meta_mc_social)`. The lower
bound of the 95% confidence interval for this estimate `r report_meta_ci(meta_mc_social)`.
## Likelihood
The likelihood studies yielded a meta-analytic effect of
`r report_meta_effect(meta_likelihood)`. The lower bound of the 95% confidence
interval for this estimate `r report_meta_ci(meta_likelihood)`. Transforming the
meta-analytic estimate to an unstandardized effect, we found that on average
participants gave `r report_meta_bt(bt_likelihood)` abstract responses on the
study specific 9-item BIF when they were assigned to the distant condition,
compared to the close condition. A Q-test indicated an amount of heterogeneity
`r report_meta_het(meta_likelihood)`.
In a two-group experiment, the meta-analytic effect size for the likelihood
studies would require N = `r format(ceiling(power_80_n_likelihood), nsmall = 0)` participants to
detect with 80% power and N = `r format(ceiling(power_95_n_likelihood), nsmall = 0)` participants to
detect with 95% power. Of the experiments in the previous literature, `r report_power_80(smaller_prop_likelihood)` had at least 80% power to detect the meta-analytic effect size for this replication. Across sample sizes from
previous experiments, the median power for this effect size estimate was `r format(round(100 * median_power_likelihood, 1), nsmall = 1)`%.
Across labs, the meta-analytic estimate for the effect on the manipulation check
for likelihood distance was `r report_meta_effect(meta_mc_likelihood)`. The lower
bound of the 95% confidence interval for this estimate `r report_meta_ci(meta_mc_likelihood)`.