Tuesday 20 March 2012

Do you chatterbox while you watch TV?

A new term has become popular - chatterboxing, defined  here as watching a TV programme while talking to others about it online.  A lot of people are doing it, mostly via Twitter

Many TV programmes encourage you to tweet about them by displaying their hashtag at the start.  Some presenters draw your attention to it, while the latest trend is to display the hashtag discretely onscreen throughout the programme.  The aim is to attract and retain viewers by allowing them to share their experience of watching the show.  As yet there don't seem to have been many public studies of doing this.  In this post we're giving some details of a very recent analysis of one use of hashtags by a TV channel.

The hashtag related to the coverage of the World Indoor Athletics championships by the UK's Channel 4 during the period 9-11 March 2012.  This is a significant event in the athletics calendar and it was the first time that Channel 4 had broadcast it.   The channel promoted the hashtag #c4athletics.  Tweets containing the text c4athletics were collected and analysed for a four day period covering the championships themselves and the day prior to it.   The collected tweets contained both those from and mentioning the programme's Twitter account, C4Athletics, and also the hashtag #c4athletics.


Overall the numbers were not large.  The totals of tweets and of people tweeting on each day was as follows:

Date Tweets  People tweeting
8-Mar   74   51
9-Mar887613
10-Mar441195
11-Mar715395

The total audience figures are not available to us, but will undoubtedly have been at least several hundred thousand.  So we see immediately that quite a small proportion of viewers actually tweeted.

We  also looked at the number of days each person tweeted; chatterboxing for these viewers seems to be a one-off activity, perhaps a reaction to something on screen that they respond strongly to. 

Number of days tweeted   1   2   3 4
Tweeters 955 108 24 3

In more detail the following table gives the number of people who posted various numbers of tweets on each of the four days.


Number of tweets >=4  3  2   1
8-Mar   2   1   2   46
9-Mar 18 14 51 530
10-Mar 14   8 32 141
11-Mar 23 33 69 268


Again the picture that emerges is of people only tweeting fairly rarely, or at least only using this hashtag rarely. Of those who tweeted most frequently several were members of the production team or the presenters.  Others were tweeting very frequently about the athletics but using several  hashtags including #c4athletics.  But the vast majority posted only once or at most twice during the day.  They felt a need to make a one-off comment but not to keep up a stream of posts nor to get involved in a lengthy conversation.  A very few people posted on the day before the event, reflecting some knowledge of what was coming, but it was not until the event was underway that most people thought of posting.


To get an idea of what happens during an event, in the following charts we have also plotted the number of tweets per hour containing the text c4athletics.  The columns in brown are for times when the channel was broadcasting the athletics, those in blue for other times.  









































 


These charts give a picture of how viewers used Twitter for this one event.  No doubt other events would give a different pattern, but there are several point of interest.  As we might expect, most activity was during the transmission.  There were also significant numbers of postings at other times especially in the lead up to transmission.  On the 10 March in the morning the athletics was broadcast from 7 am to 10.30 am, but from 8-9 it was interrupted by a programme on another sport, regularly broad cast in that slot.  To maintain the other sport in its regular slot may well have ensured the satisfaction of its viewers, but, judged by the numbers of tweets, it lowered interest in the athletics, an effect that continued throughout the day.    

What conclusions can we draw from these numbers?

Although the numbers of tweets using the programme's hashtag was comparatively  small, their influence was potentially much wider, as that hashtag will have been propagated to the followers of those tweeting.  More details on this in a later post.

It is arguable that those numbers would have been larger if the hashtag had been actively promoted before the programme in all pre-programme publicity such as trails.  The downside of doing that might have been to discourage those who do not tweet from watching the programmes.

The pattern of tweets, such as that for 10 March above, gives information about viewer response to programme scheduling.



An analysis of the tweet contents will be produced later since they contain much of interest such as  reactions to individual presenters and the programme content.  Automatic analysis doesn't necessarily give a good picture.  In practice such analysis would best be done in conjunction with the analysis of audience data since those tweeting are only a small (perhaps atypical) part of the audience.



Thursday 8 March 2012

Can you tell males from females




In analysing usage of social media sites such as Twitter one of the categories often used is male/female.  On this scale there are some sites with a preponderance of males (Slashdot, Google+ and Reddit), others where they are roughly equal (Facebook and Twitter) and maybe some where females are in the majority (possibly MySpace and Bebo).

This raises the question, how do you count the numbers of males and females on a social media site?  Take Twitter as an example.  There is nothing about gender on a user's profile and so the analyst can only deduce the gender from the name or information in the profile.  It's often said (e.g. http://www.sysomos.com/insidetwitter/mostactiveusers/#males-vs-female) that a user's gender can be found by looking up the first name in lists and databases.   I decided to try this approach by getting the genders of the users I'm currently following (my followees) on Twitter.  Hardly a representative or large sample but a simple starting point.

The results changed my thinking:

Genders of my followees on Twitter

















In my case there were considerably more more males than females, but the surprise was the number of users who were neither. In some cases it wasn't possible to identify gender even with the help of those lists of names.  Of course some names such as Lesley are inherently ambiguous.  Others are not on the lists, being unusual or nicknames.  I could identify gender for some users from their profile photos but have not included these in the male/female numbers as I was trying to replicate what an automated system based upon text analysis might do.

However these exceptions were only a small proportion of the Other category (some 10%).   The rest of the Other users were organisations.  One's first impression of Twitter is that it is for people to communicate their interests to other people and this may well have been what happened in its early days.  But the results here, which I believe are not atypical, show that the situation has changed as commercial and other organisations establish a presence.  A lot of questions follow from this.  What kinds of organisations have a Twitter presence?  What use do they make of it?  What interest do they attract? Does their activity vary over time?   From that perspective the ratio of males to females seems of minor importance.  It's more a question of people versus organisations now.