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eezeer data lab collects, moderates and
aggregates on a real-time basis the public
timeline of twitter feeds of all airline brands
and the consumers interacting with them.

From this source, we provide a complete set
of statistical information on twitter usage in
the airline industry.
Section 1 :

               ‘Best in class’ :
               Top performing airline brand with the
                greatest number of public tweets
                exchanged this month between an
                airline and its consumers.
               Accounts for all the tweets collected :
                  outbound (from airline to consumer)
                   and
                  inbound (from consumer to airline).
Section 1 :




 186 airlines have registered, at least, one twitter
  account
 88 airlines have an active twitter account
Section 1 :




 ‘Airline Listening Champions” :
 the top three airlines having received the most tweets
  from consumers.
Section 1 :




 ‘Airline Talking Champions” :
 the top three airlines having sent the most tweets to
  consumers.
Section 2 :
 Beyond collecting, moderating and aggregating the
  twitter time line on the conversation between
  consumer and brands, eezeer data lab, also,
  monitors the information available directly at twitter
  on the airlines accounts.
 It allows for additional sets of data that permits
  other view of the airlines‟ activity over twitter.
Section 2 :
               Comparing September
                2011 to August 2011, we
                see:
               Public tweets = + 28%
               Growth comes from the
                consumers interacting
                more and more with
                airlines
Section 2 :




 ‘Total number of tweeting airlines’ :
 accounts for all the airlines that have created one or
  more accounts on twitter.
Section 2 :



 ‘Active tweeting airlines’ :
 some airlines have created accounts that are not yet
  active. For eezeer data lab, an “active tweeting
  airline” has sent or received an average of at least 5
  tweets daily over the month of September 2011.
Section 2 :




 ‘Inbound tweets’ :
 is the total number of tweets received by airline
  brands from consumers in September 2011.
Section 2 :



 „Outbound tweets‟ :
 is the total number of tweets emitted by airlines to
  consumers in September 2011.
Section 2 :



   ‘Most Followed Airline’
        twitter accounts can be followed by other twitter accounts.
        The “Most Followed Airline”, „Asia Focus‟ is the Asian airline with the most followers at the end of
         September 2011.
   ‘Most Following Airline’
        twitter accounts can follow other twitter accounts, consequently listening to the chatter on the public timeline
         of these users.
        The “Most Following Airline” Asia Focus‟ is the Asian airline who follows the most other twitter accounts at
         the end of September 2011.
Section 3 :
 eezeer data lab collects, moderates and aggregates the
  content of all the tweets to and from airlines brands.
 These tweets are assigned and rated according to one or more
  of six consumer‟s category of interest :
    social conversation,
    customer service,
    timeliness,
    food & entertainment,
    comfort &security and
    luggage handling.
 This section focuses on the tweets from the consumers to the
  airlines (inbound tweets).
 From the moderated tweets, we can calculate for each and
  every airline, the nature of the messages sent by consumers.
Section 3 :



 Airlines talk to consumers while consumers tweet their
  concerns and satisfactions to airlines.
 Consumers have « subjects » about which they talk
  positively or negatively.
 Often, airlines answer in a much more neutral manner
Section 3 :



 From a record high of 93.8% in March 2011, consumers
  tweeted less about Customer Service in recent months,
  reducing by nearly 10% to June‟s result of 83.1%.
 But we saw a rise in July, making Customer Service the
  Trending Topic of the month with an increase of 3.73%, with
  much the same result in August with 88.2% and a fair drop in
  September with a result of 83.9%.
Section 3 :



 This category has only decreased ever so slightly from
  4.2% in April to May‟s result, but saw a 59% increase in
  June to 7.8%. June‟s result was slightly less at 6%.
  August saw a result of 4.8%, slightly more than in April.
  September saw a rise again to 7%.
Section 3 :



 The category « Food & Entertainment » has decreased a
 whole 1% from 3.4% in April to May‟s result, but has
 stayed much the same in June and again in July. In
 August it was in fact our Trending Topic of the month
 with a 10.6% increase to 1.8% and again in September
 to 3.9%.
Section 3 :



 « Comfort & Security » has nearly halved in concern
 from a record high of 2.2% in April 2011 to 1.4% in May
 2011, but remained much the same in June, with a slight
 decrease in July and now a slight increase in August to
 1.3%. Septembers result matched August‟ with 1.3%.
Section 3 :



 In April 2011, 4.3 % of the tweets mentioned « Luggage
 Handling » concerns. This category increased slightly in
 May 2011 to 3.9% and increased over 1% in June,
 decreasing slightly in July. In August there was a 1%
 decrease, matching May‟s result as was September‟s
 result.
Section 4 :
 As tweets are assigned to a consumer‟s category of interest,
  they are also reviewed and rated by eezeer‟s moderation
  team. The rating attributed can be positive, neutral or
  negative. By aggregating category and rating data, we can
  rank the airlines on each of these categories of interest.
 eezeer data lab calculations compare positive and negative
  tweets to the total number of tweets received by each airline
  for that category of interest.
 This method attributes a score to the airline on each category
  of interest. These scores rank and compare airlines together.
  A score of 100 represents the average of all airlines in a
  category.
 This section, based on Septembers 2011 consumer tweets,
  presents the best airline for every category of interest.
Section 4 :
Section 4 :
Section 4 :
Section 4 :
Section 4 :
Section 5 :
Section 5 :
Section 5 :
Section 5 :
Airlines Monthly Twitter Report September 2011 data

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Airlines Monthly Twitter Report September 2011 data

  • 2. eezeer data lab collects, moderates and aggregates on a real-time basis the public timeline of twitter feeds of all airline brands and the consumers interacting with them. From this source, we provide a complete set of statistical information on twitter usage in the airline industry.
  • 3. Section 1 :  ‘Best in class’ :  Top performing airline brand with the greatest number of public tweets exchanged this month between an airline and its consumers.  Accounts for all the tweets collected :  outbound (from airline to consumer) and  inbound (from consumer to airline).
  • 4. Section 1 :  186 airlines have registered, at least, one twitter account  88 airlines have an active twitter account
  • 5. Section 1 :  ‘Airline Listening Champions” :  the top three airlines having received the most tweets from consumers.
  • 6. Section 1 :  ‘Airline Talking Champions” :  the top three airlines having sent the most tweets to consumers.
  • 7. Section 2 :  Beyond collecting, moderating and aggregating the twitter time line on the conversation between consumer and brands, eezeer data lab, also, monitors the information available directly at twitter on the airlines accounts.  It allows for additional sets of data that permits other view of the airlines‟ activity over twitter.
  • 8. Section 2 :  Comparing September 2011 to August 2011, we see:  Public tweets = + 28%  Growth comes from the consumers interacting more and more with airlines
  • 9. Section 2 :  ‘Total number of tweeting airlines’ :  accounts for all the airlines that have created one or more accounts on twitter.
  • 10. Section 2 :  ‘Active tweeting airlines’ :  some airlines have created accounts that are not yet active. For eezeer data lab, an “active tweeting airline” has sent or received an average of at least 5 tweets daily over the month of September 2011.
  • 11. Section 2 :  ‘Inbound tweets’ :  is the total number of tweets received by airline brands from consumers in September 2011.
  • 12. Section 2 :  „Outbound tweets‟ :  is the total number of tweets emitted by airlines to consumers in September 2011.
  • 13. Section 2 :  ‘Most Followed Airline’  twitter accounts can be followed by other twitter accounts.  The “Most Followed Airline”, „Asia Focus‟ is the Asian airline with the most followers at the end of September 2011.  ‘Most Following Airline’  twitter accounts can follow other twitter accounts, consequently listening to the chatter on the public timeline of these users.  The “Most Following Airline” Asia Focus‟ is the Asian airline who follows the most other twitter accounts at the end of September 2011.
  • 14. Section 3 :  eezeer data lab collects, moderates and aggregates the content of all the tweets to and from airlines brands.  These tweets are assigned and rated according to one or more of six consumer‟s category of interest :  social conversation,  customer service,  timeliness,  food & entertainment,  comfort &security and  luggage handling.  This section focuses on the tweets from the consumers to the airlines (inbound tweets).  From the moderated tweets, we can calculate for each and every airline, the nature of the messages sent by consumers.
  • 15. Section 3 :  Airlines talk to consumers while consumers tweet their concerns and satisfactions to airlines.  Consumers have « subjects » about which they talk positively or negatively.  Often, airlines answer in a much more neutral manner
  • 16. Section 3 :  From a record high of 93.8% in March 2011, consumers tweeted less about Customer Service in recent months, reducing by nearly 10% to June‟s result of 83.1%.  But we saw a rise in July, making Customer Service the Trending Topic of the month with an increase of 3.73%, with much the same result in August with 88.2% and a fair drop in September with a result of 83.9%.
  • 17. Section 3 :  This category has only decreased ever so slightly from 4.2% in April to May‟s result, but saw a 59% increase in June to 7.8%. June‟s result was slightly less at 6%. August saw a result of 4.8%, slightly more than in April. September saw a rise again to 7%.
  • 18. Section 3 :  The category « Food & Entertainment » has decreased a whole 1% from 3.4% in April to May‟s result, but has stayed much the same in June and again in July. In August it was in fact our Trending Topic of the month with a 10.6% increase to 1.8% and again in September to 3.9%.
  • 19. Section 3 :  « Comfort & Security » has nearly halved in concern from a record high of 2.2% in April 2011 to 1.4% in May 2011, but remained much the same in June, with a slight decrease in July and now a slight increase in August to 1.3%. Septembers result matched August‟ with 1.3%.
  • 20. Section 3 :  In April 2011, 4.3 % of the tweets mentioned « Luggage Handling » concerns. This category increased slightly in May 2011 to 3.9% and increased over 1% in June, decreasing slightly in July. In August there was a 1% decrease, matching May‟s result as was September‟s result.
  • 21. Section 4 :  As tweets are assigned to a consumer‟s category of interest, they are also reviewed and rated by eezeer‟s moderation team. The rating attributed can be positive, neutral or negative. By aggregating category and rating data, we can rank the airlines on each of these categories of interest.  eezeer data lab calculations compare positive and negative tweets to the total number of tweets received by each airline for that category of interest.  This method attributes a score to the airline on each category of interest. These scores rank and compare airlines together. A score of 100 represents the average of all airlines in a category.  This section, based on Septembers 2011 consumer tweets, presents the best airline for every category of interest.