Citizen security using machine learning algorithms through open data

The following work is an application proposal based on machine learning algorithms for a possible solution for the public safety problem in a South American city. The aim of this application is to reduce the threat risk of the physical integrity of pedestrians by geolocating, in real-time, safer places to walk. In this context for a city, San Isidro, a business district of Lima, has been established as study case. The district has been divided into map sectors and subsectors, so that by using the GPS location service integrated in mobile devices, it is possible to identify areas that have the highest incidence of different types of incidents. This functionality will allow users to choose safer routes by taking into account the information provided for each sector. The data used in this application has been obtained from an Open Data platform managed by the San Isidro municipality. In this application, we have processed the data enabling the easy and friendly access to the information by the end user. The importance of this work is how we have used the machine learning algorithm for incident rates in real and future time, trying to make predictions that can not only provide safe routes to users, but also predict disasters and allow public authorities to act in advance, thus minimizing the impact of future incidents.

[1]  Gaël Varoquaux,et al.  Scikit-learn: Machine Learning in Python , 2011, J. Mach. Learn. Res..

[2]  Randal S. Olson,et al.  Python machine learning : unlock deeper insights into machine learning with this vital guide to cutting-edge predictive analytics , 2015 .

[3]  Awais Ahmad,et al.  Urban planning and building smart cities based on the Internet of Things using Big Data analytics , 2016, Comput. Networks.

[4]  S. Barns Mine your data: open data, digital strategies and entrepreneurial governance by code , 2016 .

[5]  Nor Badrul Anuar,et al.  The role of big data in smart city , 2016, Int. J. Inf. Manag..

[7]  C. Y. Peng,et al.  An Introduction to Logistic Regression Analysis and Reporting , 2002 .

[8]  Haimonti Dutta,et al.  Machine Learning for the New York City Power Grid , 2012, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[9]  Jameela Al-Jaroodi,et al.  Applications of big data to smart cities , 2015, Journal of Internet Services and Applications.

[10]  Nikos Petrellis Low Power OFDM Receiver Exploiting Data Sparseness and DFT Symmetry , 2016, Int. J. Distributed Sens. Networks.

[11]  Shai Ben-David,et al.  Understanding Machine Learning: From Theory to Algorithms , 2014 .

[12]  Erik Mannens,et al.  Internet of Things, Linked Data, and Citizen Participation as Enablers of Smarter Cities , 2016, Int. J. Distributed Sens. Networks.

[13]  John Langford,et al.  Weighted One-Against-All , 2005, AAAI.

[14]  Adegboyega K. Ojo,et al.  A Tale of Open Data Innovations in Five Smart Cities , 2015, 2015 48th Hawaii International Conference on System Sciences.

[15]  Sebastian Raschka,et al.  Python Machine Learning , 2015 .

[16]  Gavin Hackeling,et al.  Mastering Machine Learning With scikit-learn , 2014 .

[17]  Victoria Lopez,et al.  Big+Open Data: Some applications for a Smartcity , 2015, 2015 IEEE International Conference on Progress in Informatics and Computing (PIC).

[18]  Gavin Hackeling Mastering machine learning with scikit-learn : apply effective learning algorithms to real-world problems using scikit-learn , 2014 .