1,974
Views
60
CrossRef citations to date
0
Altmetric

References

  • Andresen, M. A. (2006). A spatial analysis of crime in Vancouver, British Columbia: A synthesis of social disorganization and routine activity theory. The Canadian Geographer/Le Géographe canadien , 50 , 487-502.10.1111/cag.2006.50.issue-4
  • Andresen, M. A. (2011). The ambient population and crime analysis. The Professional Geographer , 63 , 193-212.10.1080/00330124.2010.547151
  • Andresen, M. A. , & Jenion, G. W. (2010). Ambient populations and the calculation of crime rates and risk. Security Journal , 23 , 114-133.10.1057/sj.2008.1
  • Andresen, M. A. , & Malleson, N. (2015). Intra-week spatial-temporal patterns of crime. Crime Science , 4 , 1-11.
  • Anselin, L. , & Williams, S. (2015). Digital neighborhoods. Journal of Urbanism: International Research on Placemaking and Urban Sustainability , 1-24.
  • Ashby, M. P. J. , & Bowers, K. J. (2013). A comparison of methods for temporal analysis of aoristic crime. Crime Science , 2 , 1-16.10.1186/2193-7680-2-1
  • Barberá, P. (2016). Less is more? How demographic sample weights can improve public opinion estimates based on Twitter data . Working paper. London: London School of Economics.  12 pages. http://pablobarbera.com/static/less-is-more.pdf
  • Bendler, J. , Brandt, T. , Wagner, S. , & Neumann, D. (2014). Investigating crime-to-twitter relationships in urban environments-facilitating a virtual neighborhood watch. Proceedings of the European Conference on Information Systems (ECIS) 2014, Tel Aviv, Israel, June 9-11, 2014, ISBN 978-0-9915567-0-0. http://aisel.aisnet.org/ecis2014/proceedings/track11/10
  • Bernasco, W. , & Block, R. L. (2011). Robberies in Chicago: A block-level analysis of the influence of crime generators, crime attractors, and offender anchor points. Journal of Research in Crime and Delinquency , 48 , 33-57.10.1177/0022427810384135
  • Birkin, M. , Harland, K. , & Malleson N. (2013). The classification of space-time behaviour patterns in a British City from crowd-sourced data. In B. Murgante et al . (Eds.), Computational science and its applications – ICCSA 2013. ICCSA 2013 . Lecture Notes in Computer Science, (Vol 7974). Springer, Berlin, Heidelberg.
  • Boessen, A. (2014). Geographic Space and Time: The Consequences of the Spatial Footprint for Neighborhood Crime ( Unpublished dissertation). Irvine, CA.
  • Boggs, S. L. (1965). Urban crime patterns. American Sociological Review , 30 , 899-908.10.2307/2090968
  • Bogomolov, A. , Lepri, B. , Staiano, J. , Oliver, N. , Pianesi, F. , & Pentland, A. (2014). Once upon a crime: Towards crime prediction from demographics and mobile data. arXiv.org .
  • Boivin, R. (2013). On the use of crime rates. Canadian Journal of Criminology and Criminal Justice , 55 , 263-277.10.3138/cjccj.2012-E-06
  • Brantingham, P. J. , & Brantingham, P. L. (2008). Crime pattern theory. In R. Wortley & L. Mazerolle (Eds.), Environmental criminology and crime analysis (pp. 102-118). New York, NY : Routledge.
  • Ceccato, V. , & Uittenbogaard, A. C. (2014). Space–time dynamics of crime in transport nodes. Annals of the Association of American Geographers , 104 , 131-150.10.1080/00045608.2013.846150
  • Cohen, L. E. , & Felson, M. (1979). Social change and crime rate trends: A routine activity approach. American Sociological Review , 588-608.10.2307/2094589
  • Cohen, M. L. , & Zhang, X. D. (1988). The difficulty of improving statistical synthetic estimation . Washington, DC: Bureau of the Census.
  • Cranshaw, J. , Schwartz, R. , Hong, J. I. , & Sadeh, N. (2012). The livehoods project: Utilizing social media to understand the dynamics of a city. International AAAI Conference on Weblogs and Social Media , Dublin, Ireland. 58 pp.
  • Driscoll, K. , & Walker, S. (2014). Big data, big questions| working within a black box: Transparency in the collection and production of big twitter data. International Journal of Communication , 8 , 20.
  • Felson, M. , & Boba, R. L. (2010). Crime and everyday life Thousand Oaks, CA: Sage.10.4135/9781483349299
  • Felson, M. , & Boivin, R. (2015). Daily crime flows within a city. Crime Science , 4 , 1-10.
  • Felson, M. , & Poulsen, E. (2003). Simple indicators of crime by time of day. International Journal of Forecasting , 19 , 595-601.10.1016/S0169-2070(03)00093-1
  • Frias-Martinez, V. , & Frias-Martinez, E. (2014). Spectral clustering for sensing urban land use using Twitter activity. Engineering Applications of Artificial Intelligence , 35 , 237-245.10.1016/j.engappai.2014.06.019
  • Gibbs, J. P. , & Martin, W. T. (1962). Urbanization, technology, and the division of labor: International patterns. American Sociological Review , 27 , 667-677.10.2307/2089624
  • Gove, W. R. , Hughes, M. , & Galle, O. R. (1979). Overcrowding in the home: An empirical investigation of its possible pathological consequences. American Sociological Review , 59-80.10.2307/2094818
  • Groff, E. R. (2008). Adding the temporal and spatial aspects of routine activities: A further test of routine activity theory. Security Journal , 21 , 95-116.10.1057/palgrave.sj.8350070
  • Haberman, C. P. , & Ratcliffe, J. H. (2015). Testing for temporally differentiated relationships among potentially criminogenic places and census block street robbery counts. Criminology , 53 , 457-483.10.1111/crim.2015.53.issue-3
  • Harries, K. (2006). Property crimes and violence in United States: An analysis of the influence of population density. International Journal of Criminal Justice Sciences , 1 , 24-34.
  • Hecht, B. , & Stephens, M. (2014). A tale of cities: Urban biases in volunteered geographic information. ICWSM , 14 , 197-205.
  • Hipp, J. R. (2007). Income inequality, race, and place: Does the distribution of race and class within neighborhoods affect crime rates? Criminology , 45 , 665-697.10.1111/crim.2007.45.issue-3
  • Hipp, J. R. (2016). General theory of spatial crime patterns. Criminology , 54 , 653-679.10.1111/1745-9125.12117
  • Hipp, J. R. , Bauer, D. J. , Curran, P. J. , & Bollen, K. A. (2004). Crimes of opportunity or crimes of emotion: Testing two explanations of seasonal change in crime. Social Forces , 82 , 1333-1372.10.1353/sof.2004.0074
  • Koh, Y. (2014). Only 11% of new twitter users in 2012 are still tweeting. The Wall Street Journal https://blogs.wsj.com/digits/2014/04/11/new-data-quantifies-dearth-of-tweeters-on-twitter/
  • Kounadi, O. , Lampoltshammer, T. J. , Groff, E. , Sitko, I. , & Leitner, M. (2015). Exploring Twitter to analyze the public’s reaction patterns to recently reported homicides in London. PLOS ONE , 10 , e0121848.10.1371/journal.pone.0121848
  • Lazer, D. , Kennedy, R. , King, G. , & Vespignani, A. (2014). The parable of Google Flu: Traps in big data analysis. Science , 343 , 1203-1205.10.1126/science.1248506
  • Lee, J. H. , Davis, A. W. , & Goulias, K. G. (2016). Activity Space Estimation with Longitudinal Observations of Social Media Data. 95th Annual Transportation Research Board Meeting , Washington, D.C. January 10–14, 2016.
  • Leetaru, K. , Wang, S. , Cao, G. , Padmanabhan, A. , & Shook, E. (2013). Mapping the global Twitter heartbeat: The geography of Twitter. First Monday , 18 . http://firstmonday.org/article/view/4366/3654
  • Lenormand, M. , Picornell, M. , Cantú-Ros, O. G. , Tugores, A. , Louail, T. , Herranz, R. , … Ramasco, J. J. (2014). Cross-checking different sources of mobility information. PLoS ONE , 9 , e105184.10.1371/journal.pone.0105184
  • Malleson, N. , & Andresen, M. A. (2015a). The impact of using social media data in crime rate calculations: Shifting hot spots and changing spatial patterns. Cartography and Geographic Information Science , 42 , 112-121.10.1080/15230406.2014.905756
  • Malleson, N. , & Andresen, M. A. (2015b). Spatio-temporal crime hotspots and the ambient population. Crime Science 4 , 1-8.
  • Malleson, N. , & Andresen, M. A. (2016). Exploring the impact of ambient population measures on London crime hotspots. Journal of Criminal Justice , 46 , 52-63.10.1016/j.jcrimjus.2016.03.002
  • Malleson, N. , & Birkin, M. (2014). New insights into individual activity spaces using crowd-sourced big data.  IEEE Big Data Science Conference 2014 (pp. 10). Berkeley.
  • McCord, E. S. , & Ratcliffe, J. H. (2009). Intensity value analysis and the criminogenic effects of land use features on local crime patterns. Crime Patterns and Analysis , 2 , 17-30.
  • Raleigh, E. , & Galster, G. (2015). Neighborhood disinvestment, abandonment, and crime dynamics. Journal of Urban Affairs , 37 , 367-396.10.1111/juaf.12102
  • Sampson, R. J. , & Groves, W. B. (1989). Community structure and crime: Testing social-disorganization theory. American Journal of Sociology , 94 , 774-802.10.1086/229068
  • Sampson, R. J. , Raudenbush, S. W. , & Earls, F. (1997). Neighborhoods and violent crime: A multilevel study of collective efficacy. Science , 277 , 918-924.10.1126/science.277.5328.918
  • Shelton, T. , Poorthuis, A. , & Zook, M. (2015). Social media and the city: Rethinking urban socio-spatial inequality using user-generated geographic information. Landscape and Urban Planning , 142 , 198-211.10.1016/j.landurbplan.2015.02.020
  • Sherman, L. W. (1995). Hot spots of crime and criminal careers of places. Crime and place , 4 , 35-52.
  • Sherman, L. W. , Gartin, P. R. , & Buerger, M. E. (1989). Hot spots of predatory crime: Routine activities and the criminology of place*. Criminology , 27 , 27-56.10.1111/crim.1989.27.issue-1
  • Sloan, L. , Morgan, J. , Burnap, P. , & Williams, M. (2015). Who tweets? Deriving the demographic characteristics of age, occupation and social class from twitter user meta-data. PLOS ONE , 10 , e0115545.10.1371/journal.pone.0115545
  • Sorg, E. T. , & Taylor, R. B. (2011). Community-level impacts of temperature on urban street robbery. Journal of Criminal Justice , 39 , 463-470.
  • Steiger, E. , de Albuquerque, J. P. , & Zipf, A. (2015). An advanced systematic literature review on spatiotemporal analyses of twitter data. Transactions in GIS , 19 , 809-834.10.1111/tgis.12132
  • Steinberg, J. (1979). Synthetic estimates for small areas: Statistical workshop papers and discussion (National Institute on Drug Abuse Research Monograph Series, Vol. 24, 282 pp.). Washington, DC: National Institute on Drug Abuse.
  • Stults, B. J. , & Hasbrouck, M. (2015). The effect of commuting on city-level crime rates. Journal of Quantitative Criminology , 31 , 331-350.10.1007/s10940-015-9251-z
  • Tita, G. , & Griffiths, E. (2005). Traveling to violence: The case for a mobility-based spatial typology of homicide. Journal of Research in Crime and Delinquency , 42 , 275-308.10.1177/0022427804270051
  • Tompson, L. , & Townsley, M. (2010). (Looking) back to the future: Using space–time patterns to better predict the location of street crime. International Journal of Police Science & Management , 12 , 23-40.10.1350/ijps.2010.12.1.148
  • Wakamiya S. , Lee R. ,  & Sumiya K. (2013) Social-urban neighborhood search based on vrowd footprints network. In: A. Jatowt et al. (Eds.), Social informatics. SocInfo 2013. Lecture notes in computer science (Vol. 8238). Springer, Cham.
  • Wang, X. , Brown, D. E. , & Gerber, M. S. (2012). Spatio-temporal modeling of criminal incidents using geographic, demographic, and twitter-derived information: IEEE . Intelligence and Security Informatics (ISI), 2012 IEEE International Conference in June 2012 in Arlington, VA.
  • Wang, M. , & Gerber, M. S. (2015). Using twitter for next-place prediction, with an application to crime prediction. Computational Intelligence, 2015 IEEE Symposium Series on: IEEE (pp. 941-948) Cape Town, South Africa.10.1109/SSCI.2015.138
  • Weisburd, D. (2015). The law of crime concentration and the criminology of place*. Criminology , 53 , 133-157.10.1111/1745-9125.12070
  • Williams, M. L. , Burnap, P. , & Sloan, L. (2016). Crime sensing with big data: The affordances and limitations of using open source communications to estimate crime patterns. British Journal of Criminology , 57 , 320-340.
  • Wo, J. C. , Hipp, J. R. , & Boessen, A. (2016). Voluntary organizations and neighborhood crime: A dynamic perspective*. Criminology , 54 , 212-241.10.1111/crim.2016.54.issue-2

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.