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This is the final step where ConversationAlign
will
compute summary statistics including main effects and alignment
statistics for the vectorized dataframe you produced using
prep_dyads()
. Users have several options for how to output
their data, and these choices should be guided by your analysis
strategy. For example, a linear mixed effects approach might involve
modeling the rise and fall of values across turns. In contrast, a
standard ANOVA would work on grouped summary data.
Arguments to
summarize_dyads()
include:
1)
df_prep= dataframe created by
prep_dyads()
function
2) custom_lags=
default is NULL, any additional user-specified lagged correlations. will
automatically produce lead of 2 turns, immediate response, lag of 2
turns for each dimension of interest.
3)
sumdat_only= boolean default is TRUE, produces grouped
summary dataframe with averages by conversation and participant for each
alignment dimension, FALSE retrains all of the original rows, filling
down empty rows of summary statistics for the conversation (e.g., AUC)
4) corr_type= default=‘Pearson’, other option
‘Spearman’ for computing turn-by-turn correlations across interlocutors
for each dimension of interest.
MarySumDat <- summarize_dyads(df_prep = NurseryRhymes_Prepped, custom_lags=NULL, sumdat_only = TRUE, corr_type='Pearson')
colnames(MarySumDat)
#> [1] "Event_ID" "Participant_ID" "Dimension"
#> [4] "Dimension_Mean" "AUC_raw" "AUC_scaled100"
#> [7] "Talked_First" "TurnCorr_Lead2" "TurnCorr_Immediate"
#> [10] "TurnCorr_Lag2"
knitr::kable(head(MarySumDat, 15), format = "simple", digits = 3)
Event_ID | Participant_ID | Dimension | Dimension_Mean | AUC_raw | AUC_scaled100 | Talked_First | TurnCorr_Lead2 | TurnCorr_Immediate | TurnCorr_Lag2 |
---|---|---|---|---|---|---|---|---|---|
ItsySpider | Maya | emo_anger | 0.001 | 0.783 | 1.630 | Yin | -1 | -1 | -1 |
ItsySpider | Yin | emo_anger | -0.033 | 0.783 | 1.630 | Yin | -1 | -1 | -1 |
JackJill | Ana | emo_anger | -0.066 | 3.729 | 4.662 | Franklin | 1 | 1 | 1 |
JackJill | Franklin | emo_anger | 0.030 | 3.729 | 4.662 | Franklin | 1 | 1 | 1 |
LittleLamb | Dave | emo_anger | -0.001 | 1.486 | 1.486 | Mary | NA | NA | NA |
LittleLamb | Mary | emo_anger | -0.031 | 1.486 | 1.486 | Mary | NA | NA | NA |
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.