fbpx
Wikipedia

Culturomics

Culturomics is a form of computational lexicology that studies human behavior and cultural trends through the quantitative analysis of digitized texts.[1][2] Researchers data mine large digital archives to investigate cultural phenomena reflected in language and word usage.[3] The term is an American neologism first described in a 2010 Science article called Quantitative Analysis of Culture Using Millions of Digitized Books, co-authored by Harvard researchers Jean-Baptiste Michel and Erez Lieberman Aiden.[4]

Michel and Aiden helped create the Google Labs project Google Ngram Viewer which uses n-grams to analyze the Google Books digital library for cultural patterns in language use over time.

Because the Google Ngram data set is not an unbiased sample,[5] and does not include metadata,[6] there are several pitfalls when using it to study language or the popularity of terms.[7] Medical literature accounts for a large, but shifting, share of the corpus,[8] which does not take into account how often the literature is printed, or read.

Studies edit

 
Narrative network of US Elections 2012[9]

In a study called Culturomics 2.0, Kalev H. Leetaru examined news archives including print and broadcast media (television and radio transcripts) for words that imparted tone or "mood" as well as geographic data.[10][11] The research retroactively predicted the 2011 Arab Spring and successfully estimated the final location of Osama bin Laden to within 124 miles (200 km).[10][11]

In a 2012 paper by Alexander M. Petersen and co-authors,[12] they found a "dramatic shift in the birth rate and death rates of words":[13] Deaths have increased and births have slowed. The authors also identified a universal "tipping point" in the life cycle of new words at about 30 to 50 years after their origin, they either enter the long-term lexicon or fall into disuse.[13]

Culturomic approaches have been taken in the analysis of newspaper content in a number of studies by I. Flaounas and co-authors. These studies showed macroscopic trends across different news outlets and countries. In 2012, a study of 2.5 million articles suggested that gender bias in news coverage depends on topic and how the readability of newspaper articles is related to topic.[14] A separate study by the same researchers, covering 1.3 million articles from 27 countries,[15] showed macroscopic patterns in the choice of stories to cover. In particular, countries made similar choices when they were related by economic, geographical and cultural links. The cultural links were revealed by the similarity in voting for the Eurovision song contest. This study was performed on a vast scale, by using statistical machine translation, text categorisation and information extraction techniques.

The possibility to detect mood shifts in a vast population by analysing Twitter content was demonstrated in a study by T. Lansdall-Welfare and co-authors.[16] The study considered 84 million tweets generated by more than 9.8 million users from the United Kingdom over a period of 31 months, showing how public sentiment in the UK has changed with the announcement of spending cuts.

In a 2013 study by S Sudhahar and co-authors, the automatic parsing of textual corpora has enabled the extraction of actors and their relational networks on a vast scale, turning textual data into network data. The resulting networks, which can contain thousands of nodes, are then analysed by using tools from Network theory to identify the key actors, the key communities or parties, and general properties such as robustness or structural stability of the overall network, or centrality of certain nodes.[17]

In a 2014 study by T Lansdall-Welfare and co-authors, 5 million news articles were collected over 5 years[18] and then analyzed to suggest a significant shift in sentiment relative to coverage of nuclear power, corresponding with the disaster of Fukushima. The study also extracted concepts that were associated with nuclear power before and after the disaster, explaining the change in sentiment with a change in narrative framing.

In 2015, a study revealed the bias of the Google books data set, which "suffers from a number of limitations which make it an obscure mask of cultural popularity,"[5] and calls into question the significance of many of the earlier results.

Culturomic approaches can also contribute towards conservation science through a better understanding of human-nature relationships, with the first research published by McCallum and Bury in 2013.[19] This study revealed a precipitous decline in public interest in environmental issues. In 2016, a publication by Richard Ladle and colleagues[20] highlighted five key areas where culturomics can be used to advance the practice and science of conservation, including recognizing conservation-oriented constituencies and demonstrating public interest in nature, identifying conservation emblems, providing new metrics and tools for near-real-time environmental monitoring and to support conservation decision making, assessing the cultural impact of conservation interventions, and framing conservation issues and promoting public understanding.

In 2017, a study correlated joint pain with Google search activity and temperature.[21] While the study observed higher search activity for hip and knee pain (but not arthritis) during higher temperatures, it does not (and cannot) control for relevant other factors such as activity. Mass media misinterpreted this as "myth busted: rain does not increase joint pain",[22][23] while the authors speculate the observed correlation is due to "changes in physical activity levels".[24]

Criticism edit

Linguists and lexicographers have expressed skepticism regarding the methods and results of some of these studies, including one by Petersen et al.[25] Others have demonstrated bias in the Ngram data set. Their results "call into question the vast majority of existing claims drawn from the Google Books corpus":[5] "Instead of speaking about general linguistic or cultural change, it seems to be preferable to explicitly restrict the results to linguistic or cultural change ‘as it is represented in the Google Ngram data’"[6] because it is unclear what caused the observed change in the sample. Ficetola critiqued the use of Google Trends, suggesting interest was actually increasing.[26] But, in their rebuttal McCallum and Bury[27] provided that as far as public policy was concerned, proportional data was important and absolute numbers irrelevant, explaining that policy is driven by the opinion of the largest portion of the population not the absolute number with decisions made according to majority influence, not simply number of votes.

See also edit

References edit

  1. ^ Cohen, Patricia (16 December 2010). "In 500 Billion Words, New Window on Culture". New York Times.
  2. ^ Hayes, Brian (May–June 2011). . American Scientist. 99 (3): 190. doi:10.1511/2011.90.190. Archived from the original on 2016-10-18. Retrieved 2011-09-09.
  3. ^ Letcher, David W. (April 6, 2011). (PDF). American Institute of Higher Education 6th International Conference Proceedings. 4 (1): 228. Archived from the original (PDF) on March 3, 2016. Retrieved September 9, 2011.
  4. ^ Michel, Jean-Baptiste; Liberman Aiden, Erez (16 December 2010). "Quantitative Analysis of Culture Using Millions of Digitized Books". Science. 331 (6014): 176–82. doi:10.1126/science.1199644. PMC 3279742. PMID 21163965.
  5. ^ a b c Pechenick, Eitan Adam; Danforth, Christopher M.; Dodds, Peter Sheridan (2015-10-07). "Characterizing the Google Books Corpus: Strong Limits to Inferences of Socio-Cultural and Linguistic Evolution". PLOS ONE. 10 (10): e0137041. arXiv:1501.00960. Bibcode:2015PLoSO..1037041P. doi:10.1371/journal.pone.0137041. ISSN 1932-6203. PMC 4596490. PMID 26445406.
  6. ^ a b Koplenig, Alexander (April 2017). "The impact of lacking metadata for the measurement of cultural and linguistic change using the Google Ngram data sets—Reconstructing the composition of the German corpus in times of WWII". Digital Scholarship in the Humanities. 32 (1): 169–188. doi:10.1093/llc/fqv037. ISSN 2055-7671.
  7. ^ Zhang, Sarah. "The Pitfalls of Using Google Ngram to Study Language". WIRED. Retrieved 2017-05-24.
  8. ^ Comparison of example terms
  9. ^ Sudhahar, Saatviga; Veltri, Giuseppe A.; Cristianini, Nello (2015). "Automated analysis of the US presidential elections using Big Data and network analysis". Big Data & Society. 2. doi:10.1177/2053951715572916. hdl:2381/31767. S2CID 62188746.
  10. ^ a b Leetaru, Kalev H. (5 September 2011). "Culturomics 2.0: Forecasting Large-Scale Human Behavior Using Global News Media Tone In Time And Space". First Monday. 16 (9). doi:10.5210/fm.v16i9.3663.
  11. ^ a b Quick, Darren (7 September 2011). "Culturomics research uses quarter-century of media coverage to forecast human behavior". Gizmag.com. Retrieved 9 September 2011.
  12. ^ Petersen, Alexander M. (15 March 2012). "Statistical Laws Governing Fluctuations in Word Use from Word Birth to Word Death". Scientific Reports. 2: 313. arXiv:1107.3707. Bibcode:2012NatSR...2E.313P. doi:10.1038/srep00313. PMC 3304511. PMID 22423321.
  13. ^ a b "The New Science of the Birth and Death of Words ", CHRISTOPHER SHEA, Wall Street Journal, March 16, 2012
  14. ^ Flaounas, Ilias; Ali, Omar; Lansdall-Welfare, Thomas; De Bie, Tijl; Mosdell, Nick; Lewis, Justin; Cristianini, Nello (2013). "Research Methods in the Age of Digital Journalism". Digital Journalism. 1: 102–116. doi:10.1080/21670811.2012.714928. S2CID 61080552.
  15. ^ Flaounas, Ilias; Turchi, Marco; Ali, Omar; Fyson, Nick; De Bie, Tijl; Mosdell, Nick; Lewis, Justin; Cristianini, Nello (2010). "The Structure of the EU Mediasphere". PLOS ONE. 5 (12): e14243. Bibcode:2010PLoSO...514243F. doi:10.1371/journal.pone.0014243. PMC 2999531. PMID 21170383.
  16. ^ Lansdall-Welfare, Thomas; Lampos, Vasileios; Cristianini, Nello (2012). "Effects of the recession on public mood in the UK". Proceedings of the 21st international conference companion on World Wide Web - WWW '12 Companion. p. 1221. doi:10.1145/2187980.2188264. ISBN 9781450312301. S2CID 1825992.
  17. ^ Sudhahar, Saatviga; De Fazio, Gianluca; Franzosi, Roberto; Cristianini, Nello (2015). "Network analysis of narrative content in large corpora". Natural Language Engineering. 21: 81–112. doi:10.1017/S1351324913000247. hdl:1983/dfb87140-42e2-486a-91d5-55f9007042df. S2CID 3385681.
  18. ^ Lansdall-Welfare, Thomas; Sudhahar, Saatviga; Veltri, Giuseppe A.; Cristianini, Nello (2014). "On the coverage of science in the media: A big data study on the impact of the Fukushima disaster". 2014 IEEE International Conference on Big Data (Big Data). pp. 60–66. doi:10.1109/BigData.2014.7004454. hdl:2381/31439. ISBN 978-1-4799-5666-1. S2CID 7686818.
  19. ^ McCallum, Malcolm L; Bury, Gwendolynn W (2016). "Conservation culturomics". Biodiversity and Conservation. 22 (6–7): 1355–1367. doi:10.1002/fee.1260. S2CID 199392763.
  20. ^ Ladle, Richard J.; Correia, Ricardo A.; Do, Yuno; Joo, Gea-Jae; Malhado, Ana CM; Proulx, Raphaël; Roberge, Jean-Michel; Jepson, Paul (2016). "Conservation culturomics". Frontiers in Ecology and the Environment. 14 (5): 269–275. doi:10.1002/fee.1260. S2CID 199392763.
  21. ^ Telfer, Scott; Obradovich, Nick (2017-08-09). "Local weather is associated with rates of online searches for musculoskeletal pain symptoms". PLOS ONE. 12 (8): e0181266. Bibcode:2017PLoSO..1281266T. doi:10.1371/journal.pone.0181266. ISSN 1932-6203. PMC 5549896. PMID 28792953.
  22. ^ "Are achy joints associated with rain? Google suggests otherwise". NBC News. Retrieved 2017-08-10.
  23. ^ "This Myth About Joint Pain Is Total Crap". Men's Health. 2017-08-10. Retrieved 2017-08-10.
  24. ^ "Rain increases joint pain? Google suggests otherwise: People's activity levels -- increasing as temperatures rise, to a point -- are likelier than the weather itself to cause pain that motivates online searches, researchers say". ScienceDaily. Retrieved 2017-08-10.
  25. ^ "When physicists do linguistics", BEN ZIMMER, Boston Globe, February 10, 2013
  26. ^ Ficetola, G. F. (2014). "Is interest toward the environment really declining? The complexity of analysing trends using internet search data". Biodiversity and Conservation. 23 (12): 2983–2988. doi:10.1007/s10531-013-0552-y. S2CID 17003129.
  27. ^ McCallum, Malcolm L. (2014). "Public interest in the environment is falling: a response to Ficetola (2013)". Biodiversity and Conservation. 23 (2): 1057–1062. doi:10.1007/s10531-014-0640-7. S2CID 7056654.

Further reading edit

  • Michel, Jean-Baptiste; Liberman Aiden, Erez; Aiden, A. P.; Veres, A.; Gray, M. K.; Pickett, J. P.; Hoiberg, D.; Clancy, D.; Norvig, P.; Orwan, John; Nowak, Martin; Pinker, Steven (16 December 2010). "Quantitative Analysis of Culture Using Millions of Digitized Books". Science. 331 (6014): 176–82. doi:10.1126/science.1199644. PMC 3279742. PMID 21163965.
  • Leetaru, Kalev H. (5 September 2011). "Culturomics 2.0: Forecasting Large-Scale Human Behavior Using Global News Media Tone In Time And Space". First Monday. 16 (9). doi:10.5210/fm.v16i9.3663.
  • Bohannon, John (14 January 2011). "Google Books, Wikipedia, and the Future of Culturomics". Science. 331 (6014): 135. Bibcode:2011Sci...331..135B. doi:10.1126/science.331.6014.135. PMID 21233356.
  • Schwartz, Tim (1 April 2011). "Culturomics: Periodicals Gauge Culture's Pulse". Science. 332 (6025): 35–36. Bibcode:2011Sci...332...35S. doi:10.1126/science.332.6025.35-c. PMID 21454770.
  • Morse-Gagné, Elise E. (1 April 2011). "Culturomics: Statistical Traps Muddy the Data". Science. 332 (6025): 35, author reply 36–7. Bibcode:2011Sci...332...35M. doi:10.1126/science.332.6025.35-b. PMID 21454771.
  • Shea, Christopher (16 March 2012). "The New Science of the Birth and Death of Words". Wall Street Journal. Retrieved 15 January 2013.
  • Acerbi, Alberto; Lampos, Vasileios; Garnett, Philip; Bentley, Alexander (20 March 2013). "The Expression of Emotions in 20th Century Books". PLoS ONE. 8 (3): e59030. Bibcode:2013PLoSO...859030A. doi:10.1371/journal.pone.0059030. PMC 3604170. PMID 23527080.
  • Bentley, Alexander; Acerbi, Alberto; Ormerod, Paul; Lampos, Vasileios (8 January 2014). "Books Average Previous Decade of Economic Misery". PLoS ONE. 9 (1): e83147. Bibcode:2014PLoSO...983147B. doi:10.1371/journal.pone.0083147. PMC 3885402. PMID 24416159.
  • Lansdall-Welfare, Thomas; Sudhahar, Saatviga; Thompson, James; Lewis, Justin; Cristianini, Nello (2017). "Content Analysis of 150 Years of British Periodicals". Proceedings of the National Academy of Sciences of the United States of America. 114 (4): E457–E465. Bibcode:2017PNAS..114E.457L. doi:10.1073/pnas.1606380114. PMC 5278459. PMID 28069962.

External links edit

  • Culturomics.org, website by The Cultural Observatory at Harvard directed by Erez Lieberman Aiden and Jean-Baptiste Michel

culturomics, confused, with, microbiology, form, computational, lexicology, that, studies, human, behavior, cultural, trends, through, quantitative, analysis, digitized, texts, researchers, data, mine, large, digital, archives, investigate, cultural, phenomena. Not to be confused with Culturomics microbiology Culturomics is a form of computational lexicology that studies human behavior and cultural trends through the quantitative analysis of digitized texts 1 2 Researchers data mine large digital archives to investigate cultural phenomena reflected in language and word usage 3 The term is an American neologism first described in a 2010 Science article called Quantitative Analysis of Culture Using Millions of Digitized Books co authored by Harvard researchers Jean Baptiste Michel and Erez Lieberman Aiden 4 Michel and Aiden helped create the Google Labs project Google Ngram Viewer which uses n grams to analyze the Google Books digital library for cultural patterns in language use over time Because the Google Ngram data set is not an unbiased sample 5 and does not include metadata 6 there are several pitfalls when using it to study language or the popularity of terms 7 Medical literature accounts for a large but shifting share of the corpus 8 which does not take into account how often the literature is printed or read Contents 1 Studies 2 Criticism 3 See also 4 References 5 Further reading 6 External linksStudies edit nbsp Narrative network of US Elections 2012 9 In a study called Culturomics 2 0 Kalev H Leetaru examined news archives including print and broadcast media television and radio transcripts for words that imparted tone or mood as well as geographic data 10 11 The research retroactively predicted the 2011 Arab Spring and successfully estimated the final location of Osama bin Laden to within 124 miles 200 km 10 11 In a 2012 paper by Alexander M Petersen and co authors 12 they found a dramatic shift in the birth rate and death rates of words 13 Deaths have increased and births have slowed The authors also identified a universal tipping point in the life cycle of new words at about 30 to 50 years after their origin they either enter the long term lexicon or fall into disuse 13 Culturomic approaches have been taken in the analysis of newspaper content in a number of studies by I Flaounas and co authors These studies showed macroscopic trends across different news outlets and countries In 2012 a study of 2 5 million articles suggested that gender bias in news coverage depends on topic and how the readability of newspaper articles is related to topic 14 A separate study by the same researchers covering 1 3 million articles from 27 countries 15 showed macroscopic patterns in the choice of stories to cover In particular countries made similar choices when they were related by economic geographical and cultural links The cultural links were revealed by the similarity in voting for the Eurovision song contest This study was performed on a vast scale by using statistical machine translation text categorisation and information extraction techniques The possibility to detect mood shifts in a vast population by analysing Twitter content was demonstrated in a study by T Lansdall Welfare and co authors 16 The study considered 84 million tweets generated by more than 9 8 million users from the United Kingdom over a period of 31 months showing how public sentiment in the UK has changed with the announcement of spending cuts In a 2013 study by S Sudhahar and co authors the automatic parsing of textual corpora has enabled the extraction of actors and their relational networks on a vast scale turning textual data into network data The resulting networks which can contain thousands of nodes are then analysed by using tools from Network theory to identify the key actors the key communities or parties and general properties such as robustness or structural stability of the overall network or centrality of certain nodes 17 In a 2014 study by T Lansdall Welfare and co authors 5 million news articles were collected over 5 years 18 and then analyzed to suggest a significant shift in sentiment relative to coverage of nuclear power corresponding with the disaster of Fukushima The study also extracted concepts that were associated with nuclear power before and after the disaster explaining the change in sentiment with a change in narrative framing In 2015 a study revealed the bias of the Google books data set which suffers from a number of limitations which make it an obscure mask of cultural popularity 5 and calls into question the significance of many of the earlier results Culturomic approaches can also contribute towards conservation science through a better understanding of human nature relationships with the first research published by McCallum and Bury in 2013 19 This study revealed a precipitous decline in public interest in environmental issues In 2016 a publication by Richard Ladle and colleagues 20 highlighted five key areas where culturomics can be used to advance the practice and science of conservation including recognizing conservation oriented constituencies and demonstrating public interest in nature identifying conservation emblems providing new metrics and tools for near real time environmental monitoring and to support conservation decision making assessing the cultural impact of conservation interventions and framing conservation issues and promoting public understanding In 2017 a study correlated joint pain with Google search activity and temperature 21 While the study observed higher search activity for hip and knee pain but not arthritis during higher temperatures it does not and cannot control for relevant other factors such as activity Mass media misinterpreted this as myth busted rain does not increase joint pain 22 23 while the authors speculate the observed correlation is due to changes in physical activity levels 24 Criticism editLinguists and lexicographers have expressed skepticism regarding the methods and results of some of these studies including one by Petersen et al 25 Others have demonstrated bias in the Ngram data set Their results call into question the vast majority of existing claims drawn from the Google Books corpus 5 Instead of speaking about general linguistic or cultural change it seems to be preferable to explicitly restrict the results to linguistic or cultural change as it is represented in the Google Ngram data 6 because it is unclear what caused the observed change in the sample Ficetola critiqued the use of Google Trends suggesting interest was actually increasing 26 But in their rebuttal McCallum and Bury 27 provided that as far as public policy was concerned proportional data was important and absolute numbers irrelevant explaining that policy is driven by the opinion of the largest portion of the population not the absolute number with decisions made according to majority influence not simply number of votes See also edit omicsReferences edit Cohen Patricia 16 December 2010 In 500 Billion Words New Window on Culture New York Times Hayes Brian May June 2011 Bit Lit American Scientist 99 3 190 doi 10 1511 2011 90 190 Archived from the original on 2016 10 18 Retrieved 2011 09 09 Letcher David W April 6 2011 Cultoromics A New Way to See Temporal Changes in the Prevalence of Words and Phrases PDF American Institute of Higher Education 6th International Conference Proceedings 4 1 228 Archived from the original PDF on March 3 2016 Retrieved September 9 2011 Michel Jean Baptiste Liberman Aiden Erez 16 December 2010 Quantitative Analysis of Culture Using Millions of Digitized Books Science 331 6014 176 82 doi 10 1126 science 1199644 PMC 3279742 PMID 21163965 a b c Pechenick Eitan Adam Danforth Christopher M Dodds Peter Sheridan 2015 10 07 Characterizing the Google Books Corpus Strong Limits to Inferences of Socio Cultural and Linguistic Evolution PLOS ONE 10 10 e0137041 arXiv 1501 00960 Bibcode 2015PLoSO 1037041P doi 10 1371 journal pone 0137041 ISSN 1932 6203 PMC 4596490 PMID 26445406 a b Koplenig Alexander April 2017 The impact of lacking metadata for the measurement of cultural and linguistic change using the Google Ngram data sets Reconstructing the composition of the German corpus in times of WWII Digital Scholarship in the Humanities 32 1 169 188 doi 10 1093 llc fqv037 ISSN 2055 7671 Zhang Sarah The Pitfalls of Using Google Ngram to Study Language WIRED Retrieved 2017 05 24 Comparison of example terms Sudhahar Saatviga Veltri Giuseppe A Cristianini Nello 2015 Automated analysis of the US presidential elections using Big Data and network analysis Big Data amp Society 2 doi 10 1177 2053951715572916 hdl 2381 31767 S2CID 62188746 a b Leetaru Kalev H 5 September 2011 Culturomics 2 0 Forecasting Large Scale Human Behavior Using Global News Media Tone In Time And Space First Monday 16 9 doi 10 5210 fm v16i9 3663 a b Quick Darren 7 September 2011 Culturomics research uses quarter century of media coverage to forecast human behavior Gizmag com Retrieved 9 September 2011 Petersen Alexander M 15 March 2012 Statistical Laws Governing Fluctuations in Word Use from Word Birth to Word Death Scientific Reports 2 313 arXiv 1107 3707 Bibcode 2012NatSR 2E 313P doi 10 1038 srep00313 PMC 3304511 PMID 22423321 a b The New Science of the Birth and Death of Words CHRISTOPHER SHEA Wall Street Journal March 16 2012 Flaounas Ilias Ali Omar Lansdall Welfare Thomas De Bie Tijl Mosdell Nick Lewis Justin Cristianini Nello 2013 Research Methods in the Age of Digital Journalism Digital Journalism 1 102 116 doi 10 1080 21670811 2012 714928 S2CID 61080552 Flaounas Ilias Turchi Marco Ali Omar Fyson Nick De Bie Tijl Mosdell Nick Lewis Justin Cristianini Nello 2010 The Structure of the EU Mediasphere PLOS ONE 5 12 e14243 Bibcode 2010PLoSO 514243F doi 10 1371 journal pone 0014243 PMC 2999531 PMID 21170383 Lansdall Welfare Thomas Lampos Vasileios Cristianini Nello 2012 Effects of the recession on public mood in the UK Proceedings of the 21st international conference companion on World Wide Web WWW 12 Companion p 1221 doi 10 1145 2187980 2188264 ISBN 9781450312301 S2CID 1825992 Sudhahar Saatviga De Fazio Gianluca Franzosi Roberto Cristianini Nello 2015 Network analysis of narrative content in large corpora Natural Language Engineering 21 81 112 doi 10 1017 S1351324913000247 hdl 1983 dfb87140 42e2 486a 91d5 55f9007042df S2CID 3385681 Lansdall Welfare Thomas Sudhahar Saatviga Veltri Giuseppe A Cristianini Nello 2014 On the coverage of science in the media A big data study on the impact of the Fukushima disaster 2014 IEEE International Conference on Big Data Big Data pp 60 66 doi 10 1109 BigData 2014 7004454 hdl 2381 31439 ISBN 978 1 4799 5666 1 S2CID 7686818 McCallum Malcolm L Bury Gwendolynn W 2016 Conservation culturomics Biodiversity and Conservation 22 6 7 1355 1367 doi 10 1002 fee 1260 S2CID 199392763 Ladle Richard J Correia Ricardo A Do Yuno Joo Gea Jae Malhado Ana CM Proulx Raphael Roberge Jean Michel Jepson Paul 2016 Conservation culturomics Frontiers in Ecology and the Environment 14 5 269 275 doi 10 1002 fee 1260 S2CID 199392763 Telfer Scott Obradovich Nick 2017 08 09 Local weather is associated with rates of online searches for musculoskeletal pain symptoms PLOS ONE 12 8 e0181266 Bibcode 2017PLoSO 1281266T doi 10 1371 journal pone 0181266 ISSN 1932 6203 PMC 5549896 PMID 28792953 Are achy joints associated with rain Google suggests otherwise NBC News Retrieved 2017 08 10 This Myth About Joint Pain Is Total Crap Men s Health 2017 08 10 Retrieved 2017 08 10 Rain increases joint pain Google suggests otherwise People s activity levels increasing as temperatures rise to a point are likelier than the weather itself to cause pain that motivates online searches researchers say ScienceDaily Retrieved 2017 08 10 When physicists do linguistics BEN ZIMMER Boston Globe February 10 2013 Ficetola G F 2014 Is interest toward the environment really declining The complexity of analysing trends using internet search data Biodiversity and Conservation 23 12 2983 2988 doi 10 1007 s10531 013 0552 y S2CID 17003129 McCallum Malcolm L 2014 Public interest in the environment is falling a response to Ficetola 2013 Biodiversity and Conservation 23 2 1057 1062 doi 10 1007 s10531 014 0640 7 S2CID 7056654 Further reading editMichel Jean Baptiste Liberman Aiden Erez Aiden A P Veres A Gray M K Pickett J P Hoiberg D Clancy D Norvig P Orwan John Nowak Martin Pinker Steven 16 December 2010 Quantitative Analysis of Culture Using Millions of Digitized Books Science 331 6014 176 82 doi 10 1126 science 1199644 PMC 3279742 PMID 21163965 Leetaru Kalev H 5 September 2011 Culturomics 2 0 Forecasting Large Scale Human Behavior Using Global News Media Tone In Time And Space First Monday 16 9 doi 10 5210 fm v16i9 3663 Bohannon John 14 January 2011 Google Books Wikipedia and the Future of Culturomics Science 331 6014 135 Bibcode 2011Sci 331 135B doi 10 1126 science 331 6014 135 PMID 21233356 Schwartz Tim 1 April 2011 Culturomics Periodicals Gauge Culture s Pulse Science 332 6025 35 36 Bibcode 2011Sci 332 35S doi 10 1126 science 332 6025 35 c PMID 21454770 Morse Gagne Elise E 1 April 2011 Culturomics Statistical Traps Muddy the Data Science 332 6025 35 author reply 36 7 Bibcode 2011Sci 332 35M doi 10 1126 science 332 6025 35 b PMID 21454771 Shea Christopher 16 March 2012 The New Science of the Birth and Death of Words Wall Street Journal Retrieved 15 January 2013 Acerbi Alberto Lampos Vasileios Garnett Philip Bentley Alexander 20 March 2013 The Expression of Emotions in 20th Century Books PLoS ONE 8 3 e59030 Bibcode 2013PLoSO 859030A doi 10 1371 journal pone 0059030 PMC 3604170 PMID 23527080 Bentley Alexander Acerbi Alberto Ormerod Paul Lampos Vasileios 8 January 2014 Books Average Previous Decade of Economic Misery PLoS ONE 9 1 e83147 Bibcode 2014PLoSO 983147B doi 10 1371 journal pone 0083147 PMC 3885402 PMID 24416159 Lansdall Welfare Thomas Sudhahar Saatviga Thompson James Lewis Justin Cristianini Nello 2017 Content Analysis of 150 Years of British Periodicals Proceedings of the National Academy of Sciences of the United States of America 114 4 E457 E465 Bibcode 2017PNAS 114E 457L doi 10 1073 pnas 1606380114 PMC 5278459 PMID 28069962 External links editCulturomics org website by The Cultural Observatory at Harvard directed by Erez Lieberman Aiden and Jean Baptiste Michel Retrieved from https en wikipedia org w index php title Culturomics amp oldid 1194347064, wikipedia, wiki, book, books, library,

article

, read, download, free, free download, mp3, video, mp4, 3gp, jpg, jpeg, gif, png, picture, music, song, movie, book, game, games.