| Literature DB >> 30921406 |
Avgusta Y Shestyuk1,2, Karthik Kasinathan1, Viswajith Karapoondinott1, Robert T Knight2,3, Ram Gurumoorthy1.
Abstract
Television (TV) programming attracts ever-growing audiences and dominates the cultural zeitgeist. Viewership and social media engagement have become standard indices of programming success. However, accurately predicting individual episode success or future show performance using traditional metrics remains a challenge. Here we examine whether TV viewership and Twitter activity can be predicted using electroencephalography (EEG) measures, which are less affected by reporting biases and which are commonly associated with different cognitive processes. 331 participants watched an hour-long episode from one of nine prime-time shows (~36 participants per episode). Three frequency-based measures were extracted: fronto-central alpha/beta asymmetry (indexing approach motivation), fronto-central alpha/theta power (indexing attention), and fronto-central theta/gamma power (indexing memory processing). All three EEG measures and the composite EEG score significantly correlated across episode segments with the two behavioral measures of TV viewership and Twitter volume. EEG measures explained more variance than either of the behavioral metrics and mediated the relationship between the two. Attentional focus was integral for both audience retention and Twitter activity, while emotional motivation was specifically linked with social engagement and program segments with high TV viewership. These findings highlight the viability of using EEG measures to predict success of TV programming and identify cognitive processes that contribute to audience engagement with television shows.Entities:
Mesh:
Year: 2019 PMID: 30921406 PMCID: PMC6438528 DOI: 10.1371/journal.pone.0214507
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
TV episode information and pre-processing details.
| Show | Network | Network type | Show type | Average Twitter volume | Average TV viewers | Twitter lag | Omit start | Omit end |
|---|---|---|---|---|---|---|---|---|
| CBS | Broadc. | Reality | 979.0 | 3,345,932 | 2 | 3 | 2 | |
| CBS | Broadc. | Reality | 502.3 | 4,109,862 | 0 | 2 | 1 | |
| Fox | Broadc. | Drama | 66.2 | 1,288,583 | 2 | 0 | 0 | |
| Fox | Broadc. | Reality | 101.7 | 2,825,495 | 1 | 3 | 2 | |
| Disc. | Cable | Reality | 58.1 | 1,205,048 | 0 | 3 | 2 | |
| ABC | Broadc. | DS | 41.4 | 4,025,144 | 1 | 0 | 0 | |
| CBS | Broadc. | Drama | 30.2 | 2,897,098 | 2 | 2 | 2 | |
| USA | Cable | Drama | 120.4 | 1,438,171 | 1 | 2 | 2 | |
| NBC | Broadc. | Drama | 22.0 | 3,324,714 | 1 | 2 | 3 |
Broadc.–broadcast, Ep.–episode, Disc.–Discovery, DS–documentary series.
a For each episode, numbers of tweets and TV viewers were calculated for each minute of the show and then averaged across the show duration.
b Twitter lag (in minutes) was used to align minute-by-minute Twitter volume values with EEG and TV viewership values, correcting for the lag between what people see on the screen and when they type and post tweets online. For example, a lag of 2 minutes means that tweets from minute (t+2) are aligned with EEG and viewership values for minute t.
c Omit start (in minutes) reflects the number of minutes at the beginning of each show that were omitted from analyses due to outlier Twitter or viewership values (audiences tuning in late or tweeting about the show in general rather than about the content of the specific episode).
d Omit end (in minutes) reflects the number of minutes at the end of each show that were omitted from analyses due to outlier Twitter or Viewership values (audiences for the next show tuning in early or tweeting about the upcoming episode rather than about the content of the current episode).
Fig 1Minute-by-minute changes in Twitter volume and TV viewership across episode duration.
(A) Minute-by-minute changes in Twitter volume for a sample episode (NY Med). Shaded areas denote commercial breaks. Twitter activity increased during commercial breaks relative to show segments. (B) Minute-by-minute changes in viewership for a sample episode (NY Med). Shaded areas denote commercial breaks. TV viewership decreased during commercial breaks, with subsequent rebound during the next show segment. These patterns of Twitter and TV viewership fluctuations across the show duration were typical for most tested TV episodes; p = 0.03 for Twitter volume; p < 10−5 for TV viewership.
Regression results predicting TV viewership and Twitter volume.
| Dependent Variable | Model | Independent Variable(s) | Model R2 | Model Adj. R2 | Model | Beta Coefficient (standardized) | Beta |
|---|---|---|---|---|---|---|---|
| LR | Composite EEG score | 0.57 | .57 | <10−5 | 0.76 | <10−5 | |
| SWMR | Full model | 0.68 | .66 | <10−5 | |||
| Alpha/theta power | 1.07 | <10−5 | |||||
| Alpha/beta asym. | 0.41 | <10−3 | |||||
| Theta/gamma power | 0.30 | 0.003 | |||||
| SWMR | Full model | 0.72 | 0.69 | <10−5 | |||
| Alpha/theta power | 1.10 | <10−5 | |||||
| Alpha/beta asym. | 0.52 | 0.002 | |||||
| SWMR | Alpha/theta power | 0.17 | 0.13 | 0.048 | 0.41 | 0.048 | |
| LR | Composite EEG Score | 0.63 | 0.62 | <10−5 | 0.80 | <10−5 | |
| SWMR | Full model | 0.63 | 0.61 | <10−5 | |||
| Alpha/theta power | 0.71 | <10−5 | |||||
| Theta/gamma power | 0.50 | <10−5 | |||||
| Alpha/beta asym. | 0.39 | <10−3 | |||||
| SWMR | Alpha/beta asym. | 0.48 | 0.44 | <10−3 | 0.68 | <10−5 | |
| SWMR | - | - | - | - | - | - | |
| LR | Twitter volume | 0.51 | 0.50 | <10−3 | 0.72 | <10−5 | |
| SWMR | Full model | 0.67 | 0.66 | <10−5 | |||
| Composite EEG score | 0.51 | <10−5 | |||||
| Twitter volume | 0.40 | 0.001 | |||||
| SWMR | Full model | 0.67 | 0.66 | <10−5 | |||
| Composite EEG score | 0.58 | <10−3 | |||||
| TV viewership | 0.29 | 0.027 |
Adj.–adjusted, Asym.–assymmetry, LR–linear regression, SWMR–step-wise multiple regression.
a For these analyses, TV viewership and Twitter volume values were split along the median for each variable and full step-wise multiple regression models were conducted on each median-split subgroup of data.
Fig 2Composite EEG score predicts Twitter volume and TV viewership across program segments.
(A) Correlation between minute-by-minute changes in the composite EEG score (consisting of a z-scored average of the fronto-central left-to-right alpha/beta asymmetry, alpha power decrease/theta increase, and theta and gamma power increases) and Twitter volume across discrete program segments (n = 49). (B) Minute-by-minute changes in Twitter volume are plotted against changes in Twitter volume predicted based on the composite EEG score. (C) Correlation between minute-by-minute changes in composite EEG score and TV viewership across discrete program segments (n = 49). (D) Minute-by-minute changes in TV viewership are plotted against changes in Viewership predicted based on the composite EEG score.
Fig 3The relationship between individual EEG metrics and TV viewership, Twitter volume.
Correlation coefficients were calculated to assess the relationship between individual EEG metrics (n = 49) and TV viewership as well as Twitter volume. Correlation coefficients were computed for fronto-central alpha power decreases/theta power increases typically associated with content-specific attention, alpha/beta asymmetry typically associated with motivational approach, and theta/gamma power increases typically associated with memory processing. The fronto-central alpha power decreases/theta power increases were significant predictors of minute-by-minute changes in both TV viewership and Twitter volume, while the alpha/beta asymmetry was exclusively linked with minute-by-minute changes in Twitter volume.