Yıl: 2018 Cilt: 15 Sayı: 1 Sayfa Aralığı: 5 - 21 Metin Dili: İngilizce İndeks Tarihi: 07-11-2019

Web scraping and mapping urban data to support urban design decisions

Öz:
Cities generate data in increasing speed, volume and variety which is more eas-ily accessed and processed by the advance of technology every day. Consequently,the potential for this data to feedback into the city to improve living conditionsand efficiency of utilizing resources grows. Departing from this potential, this pa-per presents a study that proposes methods to collect and visualize urban datawith the aim of supporting urban design decisions. We employed web scrapingtechniques to collect a variety of publicly available data within the Kadıköy mu-nicipal boundaries of Istanbul and utilized a visual programming software to mapand visualize this information. Through this method and superposition of our re-sulting maps, we visually communicate urban conditions including demographicand economic trends based on online real estate listings as well as spatial distri-bution and accessibility of public and commercial resources. We propose thatthis method and resulting visualizations present valuable potential in supportingurban design decision-making processes.
Anahtar Kelime:

Konular: Mimarlık Çevre Çalışmaları Kentsel Çalışmalar
Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
  • Balaban, O., & Tuncer, B. (2016). Vi- sualizing Urban Sports Movement. In Complexity & Simplicity - Proceedings of the 34th eCAADe Conference (Vol. 2, pp. 89–94). Oululu, Finland: eCAADe and University of Oulu.
  • Batty, M. (2013). Urban Informatics and Big Data. London.
  • Batty, M., Axhausen, K., Giannotti, F., Pozdnoukhov, A., Bazzani, A., Wa- chowicz, M., Ouzounis, G., Portugali, Y. (2012). Smart cities of the future. Eu- ropean Physical Journal: Special Topics, 214, 481–518.
  • Bency, A., Rallapalli, S., Ganti, R., Srivatsa, M., & Manjunath, B. (2017). Beyond Spatial Auto-Regressive Mod- els: Predicting Housing Prices with Satellite Imagery. In 2017 IEEE Winter Conference on Applications of Comput- er Vision (pp. 320–329). Santa Rosa, CA, USA: IEEE.
  • Boeing, G., & Waddell, P. (2016). New Insights into Rental Housing Markets across the United States: Web Scraping and Analyzing Craigslist Rental Listings. Journal of Planning Ed- ucation and Research, 1–20.
  • Chen, N. C. (2012). Urban Data Mining: Social Media Data Analysis as a Complementary Tool for Urban De- sign. MIT.
  • Clarke, A., & Steele, R. (2011). How personal fitness data can be re-used by smart cities. In 7th International Con- ference on Intelligent Sensors, Sensor Networks and Information Processing (pp. 395–400). Adelaide, SA, Australia: IEEE.
  • Cohen, J. P., & Coughlin, C. C. (2008). Spatial hedonic models of air- port noise, proximity, and housing prices. Journal of Regional Science, 48(5), 859–878.
  • Cranshaw, J., Schwartz, R., Hong, J. I., & Sadeh, N. (2012). The Livehoods Project: Utilizing Social Media to Un- derstand the Dynamics of a City. In Proceedings of the Sixth International AAAI Conference on Weblogs and So- cial Media (pp. 58–65). Palo Alto, CA, USA: The AAAI Press.
  • Geoghegan, J., Wainger, L. a., & Bockstael, N. E. (1997). Analysis Spa- tial landscape indices in a hedonic framework:an ecological economics analysis using GIS. Ecological Econom- ics, 23, 251–264.
  • Glaeser, E. L., Duke-Kominers, S., Luca, M., & Nalk, N. (2015). Big Data and Big Cities: The Promises and Lim- itations of Improved Measures of Urban Life. HKS Faculty Research Working Pa- per Series. Cambridge, MA. Jacobs, J. (1961). The Death and Life of Great American Cities. New York, NY, USA: Random House.
  • Jenkins, A., Croitoru, A., Crooks, A. T., & Stefanidis, A. (2016). Crowd- sourcing a collective sense of place. PLoS ONE, 11(4), 1–20.
  • Jiang, S., Alves, A., Rodrigues, F., Ferreira, J., & Pereira, F. C. (2015). Mining point-of-interest data from so- cial networks for urban land use clas- sification and disaggregation. Comput- ers, Environment and Urban Systems, 53, 36–46.
  • Kurgan, L. (2013). Million-Dollar Blocks. In Close up at a distance: map- ping, technology, and politics. Zone Books.
  • Lee, J.-G., & Kang, M. (2015). Geo- spatial Big Data: Challenges and Op- portunities. Big Data Research, 2(2), 74–81.
  • Li, S., Ye, X., Lee, J., Gong, J., & Qin, C. (2017). Spatiotemporal Analysis of Housing Prices in China: A Big Data Perspective. Applied Spatial Analysis and Policy, 10(3), 421–433.
  • Niederer, S., Colombo, G., Mauri, M., & Azzi, M. (2015). Street-level City Ana- lytics: Mapping the Amsterdam Knowl- edge Mile. In Hybrid City 2015: Data to the People (pp. 215–220). URIAC.
  • Pettit, C., Widjaja, I., Russo, P., Sin- nott, R., Stimson, R., & Tomko, M. (2012). Visualisation support for ex- ploring urban space and place. ISPRS Annals of Photogrammetry, Remote Sensing and Spatial Information Scienc- es, I-2, 153–158.
  • Schreck, T., & Keim, D. (2013). Vi- sual Analysis of Social Media Data. Computer, 46(5), 68–75.
  • Peng, D., Biagi, L., & Ito, U. (2016). Leading countries based on number of monthly active Instagram users as of 1st quarter 2016. Retrieved October 5, 2017, from http://www.statista.com
  • Townsend, A. M. (2013). Smart Cit- ies: Big Data, Civic Hackers, and the Quest for a New Utopia. New York: W. W. Norton & Company Inc.
  • Waddell, P., Berry, B. J. L., & Hoch, I. (1993). Residential property values in a multinodal urban area: New evi- dence on the implicit price of location. The Journal of Real Estate Finance and Economics, 7(2), 117–141.
  • Yemeksepeti’nden 2016 lezzet al- manağı. (2016). Retrieved October 5, 2017, from http://www.yemeksepeti. com/
APA ENSARİ E, KOBAŞ B (2018). Web scraping and mapping urban data to support urban design decisions. , 5 - 21.
Chicago ENSARİ Elif,KOBAŞ Bilge Web scraping and mapping urban data to support urban design decisions. (2018): 5 - 21.
MLA ENSARİ Elif,KOBAŞ Bilge Web scraping and mapping urban data to support urban design decisions. , 2018, ss.5 - 21.
AMA ENSARİ E,KOBAŞ B Web scraping and mapping urban data to support urban design decisions. . 2018; 5 - 21.
Vancouver ENSARİ E,KOBAŞ B Web scraping and mapping urban data to support urban design decisions. . 2018; 5 - 21.
IEEE ENSARİ E,KOBAŞ B "Web scraping and mapping urban data to support urban design decisions." , ss.5 - 21, 2018.
ISNAD ENSARİ, Elif - KOBAŞ, Bilge. "Web scraping and mapping urban data to support urban design decisions". (2018), 5-21.
APA ENSARİ E, KOBAŞ B (2018). Web scraping and mapping urban data to support urban design decisions. A|Z ITU Mimarlık Fakültesi Dergisi, 15(1), 5 - 21.
Chicago ENSARİ Elif,KOBAŞ Bilge Web scraping and mapping urban data to support urban design decisions. A|Z ITU Mimarlık Fakültesi Dergisi 15, no.1 (2018): 5 - 21.
MLA ENSARİ Elif,KOBAŞ Bilge Web scraping and mapping urban data to support urban design decisions. A|Z ITU Mimarlık Fakültesi Dergisi, vol.15, no.1, 2018, ss.5 - 21.
AMA ENSARİ E,KOBAŞ B Web scraping and mapping urban data to support urban design decisions. A|Z ITU Mimarlık Fakültesi Dergisi. 2018; 15(1): 5 - 21.
Vancouver ENSARİ E,KOBAŞ B Web scraping and mapping urban data to support urban design decisions. A|Z ITU Mimarlık Fakültesi Dergisi. 2018; 15(1): 5 - 21.
IEEE ENSARİ E,KOBAŞ B "Web scraping and mapping urban data to support urban design decisions." A|Z ITU Mimarlık Fakültesi Dergisi, 15, ss.5 - 21, 2018.
ISNAD ENSARİ, Elif - KOBAŞ, Bilge. "Web scraping and mapping urban data to support urban design decisions". A|Z ITU Mimarlık Fakültesi Dergisi 15/1 (2018), 5-21.