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Micro-serendipity:
Meaningful Coincidences
in Everyday Life Shared on Twitter
iConference 2013, Fort Worth, TX
Toine Bogers & Lennart Björneborn
Royal School of Library and Information Science, Copenhagen
2
motivation (1/3)
why is serendipity interesting?
   serendipity: finding interesting things in unplanned ways

   important role in many scientific discoveries

   also integral part in everyday information behavior
       how we get new inspiration, ideas, insights in everyday life
       the very way we learn many new things in life since infanthood


   design for stimulating and supporting serendipity
       search engines, recommender systems (e.g., music), micro-
        blogging, …
                                                                         3
motivation (2/3)
needed: better understanding
   different definitions focus on different aspects:
       include active (foreground) interest?
       relate to latent (background) interest alone?


   needed: better understanding how people experience and
    communicate serendipitous occurrences in everyday life

   naturalistic studies of everyday serendipity
       based on data generated by users themselves (Erdelez, 2004)
       most previous studies based on data elicited from interviews
       everyday serendipitous experiences of bloggers (Rubin et al., 2011)
                                                                              4
motivation (3/3)
micro-serendipity on Twitter
   micro-serendipity: investigating contexts and attributes of
    everyday serendipity as shared on Twitter

   we use non-elicited, self-motivated user data from Twitter

   we omit a preset definition of serendipity
       understand what users themselves consider as serendipitous
        experiences and how they actually describe these experiences


   Twitter: window into everyday life of millions of users
       everyday experiences, interests, conversations, language use
                                                                       5
research questions
RQ 1 What types of serendipity do Twitter users
     experience?

RQ 2 How often do people share serendipitous
     experiences on Twitter?

RQ 3 What terminology do people use on Twitter to
     describe their serendipitous experiences?




                                                    6
methodology (1/4)
data collection
   crawled 30,000+ English-language tweets containing the
    term ‘serendipity’ from Aug 2011–Feb 2012

   used Topsy, social media search engine to access tweets
       can search further back in time than Twitter
       access to max. 1% of all tweets
       no obvious crawling bias, so assumed to be representative




                                                                    7
methodology (2/4)
coding tweets
   open coding approach to develop coding categories
    on Feb 2012 tweets

   category of interest: PERS (personal)
       clearly describe personal insight or experience of a
        serendipitous occurrence on the part of the tweeter
       we tried to eliminate our pre-conceptions of what serendipity is
       used context (included URLs and surrounding tweet stream)
        to disambiguate




                                                                           8
methodology (3/4)
coding tweets
   applied coding scheme to last three months of tweets
    with the hashtag #serendipity (Dec 2011–Feb 2012)
       open coding phase showed #serendipity more likely to contain
        PERS tweets
       inter-annotator agreement of 0.65
       remaining differences resolved through discussion


   coded 1073 tweets with 14.9% (N=160) in PERS category




                                                                       9
methodology (4/4)
‘serendipity’ noise




                      10
findings: RQ1 (1/4)
serendipity context: leisure vs. work
RQ 1 What types of serendipity do users experience?

   qualitative analysis of 160 tweets in PERS category
   distinction between leisure- and work-related activities
       141 tweets (88.1%) leisure-related
       14 tweets (8.8%) work-related
       1 tweet coded as both; 4 tweets too ambiguous to code

   rich diversity in leisure-related activities connected to
    serendipitous experiences
       all kinds of digital and physical spaces
       including media, shopping, sports and transportation
                                                                11
work- and
  leisure-
   related




         12
work-related




           13
leisure-
 related




       14
findings: RQ1 (2/4)
serendipity thresholds & continuum
   different serendipity thresholds
       when does a user find something unusual, unexpected, or surprising
        enough to consider it as serendipity?
       plain novelty or pleasant diversion may sometimes be enough
       serendipity is a highly subjective phenomenon


   serendipity continuum
       different degrees of surprise:
          unplanned                                 unanticipated eureka
          everyday incidents                         moments in science

       serendipity is not a discrete concept
                                                                           15
serendipity thresholds




                     16
findings: RQ1 (3/4)
background + foreground serendipity
   background serendipity (‘traditional’ serendipity)
       unexpectedly finding something meaningful related to a background
        interest; changing a person’s focus and direction
   foreground serendipity (‘synchronicity’)
       unexpectedly finding something meaningful related to a foreground
        interest/preoccupation; confirming a person’s focus and direction
       in everyday experiences and in science (e.g., Makri & Blandford, 2012)

   both types of serendipity deal with people experiencing
    meaningful coincidences
       people considering an occurrence as both meaningful and incidental


                                                                            17
foreground serendipity (‘synchronicity’)




                                       18
findings: RQ1 (4/4)
key elements in serendipity
   unexpectedness + insight + value (Makri & Blandford, 2012)
   unexpectedness + value + preoccupation
       some degree of insight always present in order to consider an
        occurrence as both unexpected/incidental and valuable/meaningful;
        – i.e., considering the occurrence as a meaningful coincidence




                                                                            19
unexpectedness + value + preoccupation




                                         20
unexpectedness + value + preoccupation




                                         21
findings: RQ2
frequency of sharing serendipity
RQ 2 How often do people share serendipitous
     experiences on Twitter?

   160 PERS tweets from 146 different users
       tweets from all users with >1 PERS tweets were identical
        repetitions


   extended this to the full 7-month, 30,000+ tweet crawl
       only a handful users had more than one tweet about serendipity
       not that common a (re-)occurrence on Twitter!
       we only focused on only one way of describing serendipity

                                                                         22
findings: RQ3 (1/3)
describing serendipity
RQ 3 What terminology do people use on Twitter to
     describe their serendipitous experiences?
   two reasons for answering this question
       general interest in how people describe serendipitous occurrences
       can we train an automatic classifier to pick out PERS tweets?

   focused on three ways of signaling serendipity
       words
       part-of-speech tags (e.g., noun, past tense verb, …)
       hashtags (e.g., #serendipitous, #insight, …)
   used log-likelihood to extract representative signals
       measures how surprising the usage of a signal between two text
        collections is
                                                                            23
findings: RQ3 (2/3)
describing serendipity
   words
       PERS:
        just, found, noticed, bumped, simultaneously, immediately, omg
       non-PERS:
        watching, serendipity, Kate, John, movie, chocolate, sundae
       no conclusive identification of serendipity vocabulary

   parts-of-speech
       past tense verbs more often used in PERS tweets
       present tense verbs more often used in non-PERS tweets
       nouns more likely in non-PERS tweets



                                                                         24
findings: RQ3 (3/3)
describing serendipity
   hashtags
       hashtags most commonly co-occurring with #serendipity belong
        to events: #nyc, #superbowl, #weezercruise, #saints
       promising hashtags for future work:
        #serendipitous, #synchronicity, #chance, #insight,
        #randomness, #accident, #wtf, #lucky, #surprise



   combination of different signals seems to show promise
    in automatic classification of PERS tweets




                                                                       25
conclusions
RQ 1: no single type of serendipity
     people experience this along a continuum with different thresholds


RQ 2: serendipity appears to be a rarely tweeted phenomenon
     perhaps because it is uncommon or in fact too common?
     longitudinal studies are necessary to confirm this though


RQ 3: no single signal singles out serendipitous occurrences
     combination of different signals shows promise for automatic
      classification



                                                                           26
future work
   actual word usage on Twitter may suggest terms for other
    serendipity studies

   developing an automatic serendipity classifier
       include data from surrounding tweets in tweet stream


   investigate how people describe matches between
    environmental factors and foreground/background interests
       include differences between physical and digital environments




                                                                        27
questions? comments?




     Lennart Björneborn @connecto



     Toine Bogers @toinebogers


                                    28

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Micro-serendipity: Meaningful coincidences in everyday life shared on Twitter

  • 1. Micro-serendipity: Meaningful Coincidences in Everyday Life Shared on Twitter iConference 2013, Fort Worth, TX Toine Bogers & Lennart Björneborn Royal School of Library and Information Science, Copenhagen
  • 2. 2
  • 3. motivation (1/3) why is serendipity interesting?  serendipity: finding interesting things in unplanned ways  important role in many scientific discoveries  also integral part in everyday information behavior  how we get new inspiration, ideas, insights in everyday life  the very way we learn many new things in life since infanthood  design for stimulating and supporting serendipity  search engines, recommender systems (e.g., music), micro- blogging, … 3
  • 4. motivation (2/3) needed: better understanding  different definitions focus on different aspects:  include active (foreground) interest?  relate to latent (background) interest alone?  needed: better understanding how people experience and communicate serendipitous occurrences in everyday life  naturalistic studies of everyday serendipity  based on data generated by users themselves (Erdelez, 2004)  most previous studies based on data elicited from interviews  everyday serendipitous experiences of bloggers (Rubin et al., 2011) 4
  • 5. motivation (3/3) micro-serendipity on Twitter  micro-serendipity: investigating contexts and attributes of everyday serendipity as shared on Twitter  we use non-elicited, self-motivated user data from Twitter  we omit a preset definition of serendipity  understand what users themselves consider as serendipitous experiences and how they actually describe these experiences  Twitter: window into everyday life of millions of users  everyday experiences, interests, conversations, language use 5
  • 6. research questions RQ 1 What types of serendipity do Twitter users experience? RQ 2 How often do people share serendipitous experiences on Twitter? RQ 3 What terminology do people use on Twitter to describe their serendipitous experiences? 6
  • 7. methodology (1/4) data collection  crawled 30,000+ English-language tweets containing the term ‘serendipity’ from Aug 2011–Feb 2012  used Topsy, social media search engine to access tweets  can search further back in time than Twitter  access to max. 1% of all tweets  no obvious crawling bias, so assumed to be representative 7
  • 8. methodology (2/4) coding tweets  open coding approach to develop coding categories on Feb 2012 tweets  category of interest: PERS (personal)  clearly describe personal insight or experience of a serendipitous occurrence on the part of the tweeter  we tried to eliminate our pre-conceptions of what serendipity is  used context (included URLs and surrounding tweet stream) to disambiguate 8
  • 9. methodology (3/4) coding tweets  applied coding scheme to last three months of tweets with the hashtag #serendipity (Dec 2011–Feb 2012)  open coding phase showed #serendipity more likely to contain PERS tweets  inter-annotator agreement of 0.65  remaining differences resolved through discussion  coded 1073 tweets with 14.9% (N=160) in PERS category 9
  • 11. findings: RQ1 (1/4) serendipity context: leisure vs. work RQ 1 What types of serendipity do users experience?  qualitative analysis of 160 tweets in PERS category  distinction between leisure- and work-related activities  141 tweets (88.1%) leisure-related  14 tweets (8.8%) work-related  1 tweet coded as both; 4 tweets too ambiguous to code  rich diversity in leisure-related activities connected to serendipitous experiences  all kinds of digital and physical spaces  including media, shopping, sports and transportation 11
  • 12. work- and leisure- related 12
  • 15. findings: RQ1 (2/4) serendipity thresholds & continuum  different serendipity thresholds  when does a user find something unusual, unexpected, or surprising enough to consider it as serendipity?  plain novelty or pleasant diversion may sometimes be enough  serendipity is a highly subjective phenomenon  serendipity continuum  different degrees of surprise: unplanned unanticipated eureka everyday incidents moments in science  serendipity is not a discrete concept 15
  • 17. findings: RQ1 (3/4) background + foreground serendipity  background serendipity (‘traditional’ serendipity)  unexpectedly finding something meaningful related to a background interest; changing a person’s focus and direction  foreground serendipity (‘synchronicity’)  unexpectedly finding something meaningful related to a foreground interest/preoccupation; confirming a person’s focus and direction  in everyday experiences and in science (e.g., Makri & Blandford, 2012)  both types of serendipity deal with people experiencing meaningful coincidences  people considering an occurrence as both meaningful and incidental 17
  • 19. findings: RQ1 (4/4) key elements in serendipity  unexpectedness + insight + value (Makri & Blandford, 2012)  unexpectedness + value + preoccupation  some degree of insight always present in order to consider an occurrence as both unexpected/incidental and valuable/meaningful; – i.e., considering the occurrence as a meaningful coincidence 19
  • 20. unexpectedness + value + preoccupation 20
  • 21. unexpectedness + value + preoccupation 21
  • 22. findings: RQ2 frequency of sharing serendipity RQ 2 How often do people share serendipitous experiences on Twitter?  160 PERS tweets from 146 different users  tweets from all users with >1 PERS tweets were identical repetitions  extended this to the full 7-month, 30,000+ tweet crawl  only a handful users had more than one tweet about serendipity  not that common a (re-)occurrence on Twitter!  we only focused on only one way of describing serendipity 22
  • 23. findings: RQ3 (1/3) describing serendipity RQ 3 What terminology do people use on Twitter to describe their serendipitous experiences?  two reasons for answering this question  general interest in how people describe serendipitous occurrences  can we train an automatic classifier to pick out PERS tweets?  focused on three ways of signaling serendipity  words  part-of-speech tags (e.g., noun, past tense verb, …)  hashtags (e.g., #serendipitous, #insight, …)  used log-likelihood to extract representative signals  measures how surprising the usage of a signal between two text collections is 23
  • 24. findings: RQ3 (2/3) describing serendipity  words  PERS: just, found, noticed, bumped, simultaneously, immediately, omg  non-PERS: watching, serendipity, Kate, John, movie, chocolate, sundae  no conclusive identification of serendipity vocabulary  parts-of-speech  past tense verbs more often used in PERS tweets  present tense verbs more often used in non-PERS tweets  nouns more likely in non-PERS tweets 24
  • 25. findings: RQ3 (3/3) describing serendipity  hashtags  hashtags most commonly co-occurring with #serendipity belong to events: #nyc, #superbowl, #weezercruise, #saints  promising hashtags for future work: #serendipitous, #synchronicity, #chance, #insight, #randomness, #accident, #wtf, #lucky, #surprise  combination of different signals seems to show promise in automatic classification of PERS tweets 25
  • 26. conclusions RQ 1: no single type of serendipity  people experience this along a continuum with different thresholds RQ 2: serendipity appears to be a rarely tweeted phenomenon  perhaps because it is uncommon or in fact too common?  longitudinal studies are necessary to confirm this though RQ 3: no single signal singles out serendipitous occurrences  combination of different signals shows promise for automatic classification 26
  • 27. future work  actual word usage on Twitter may suggest terms for other serendipity studies  developing an automatic serendipity classifier  include data from surrounding tweets in tweet stream  investigate how people describe matches between environmental factors and foreground/background interests  include differences between physical and digital environments 27
  • 28. questions? comments? Lennart Björneborn @connecto Toine Bogers @toinebogers 28