TY - GEN
T1 - Predicting the decision for the provision of municipal services using data mining approaches
AU - Nuaimi, Eiman Al
AU - Marzooqi, Samira Al
AU - Zaki, Nazar
N1 - Publisher Copyright:
© 2016 IEEE.
PY - 2016/4/26
Y1 - 2016/4/26
N2 - Every year in certain areas of a city, the population tends to grow, causing a parallel growth in need for services. These needs can be new schools, hospitals, public facilities, road expansions, public parks, etc. These needs are handled by the municipal authorities in those cities, who are representatives of the government charged with carrying out such responsibilities. In this paper, the municipal authority focused on is AACM. We investigate how to improve the needs evaluation process in AACM to streamline the decision-making process. We present models for how these demands/needs can be evaluated to determine whether they will be chosen for implementation and, if not, the reasons for their rejection. The prediction model uses four different classification techniques (DT, SVM, KNN and NB) and proposes the best technique based on accuracy. Finally, we identify the challenges faced during the pre-processing stage and present our recommendations to the AACM for future data gathering techniques.
AB - Every year in certain areas of a city, the population tends to grow, causing a parallel growth in need for services. These needs can be new schools, hospitals, public facilities, road expansions, public parks, etc. These needs are handled by the municipal authorities in those cities, who are representatives of the government charged with carrying out such responsibilities. In this paper, the municipal authority focused on is AACM. We investigate how to improve the needs evaluation process in AACM to streamline the decision-making process. We present models for how these demands/needs can be evaluated to determine whether they will be chosen for implementation and, if not, the reasons for their rejection. The prediction model uses four different classification techniques (DT, SVM, KNN and NB) and proposes the best technique based on accuracy. Finally, we identify the challenges faced during the pre-processing stage and present our recommendations to the AACM for future data gathering techniques.
KW - Decision Tree
KW - Naïve Bayes
KW - Support Vector Machines
KW - classification
KW - data mining
KW - k-Nearest-Neighbor
KW - municipal services
KW - predicting demand
UR - http://www.scopus.com/inward/record.url?scp=84973568761&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=84973568761&partnerID=8YFLogxK
U2 - 10.1109/ICBDSC.2016.7460387
DO - 10.1109/ICBDSC.2016.7460387
M3 - Conference contribution
AN - SCOPUS:84973568761
T3 - 2016 3rd MEC International Conference on Big Data and Smart City, ICBDSC 2016
SP - 312
EP - 317
BT - 2016 3rd MEC International Conference on Big Data and Smart City, ICBDSC 2016
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 3rd MEC International Conference on Big Data and Smart City, ICBDSC 2016
Y2 - 15 March 2016 through 16 March 2016
ER -