Two analytical tools were used in the proposed model for air quality health risk – Analytical Hierarchy Process (AHP) and Geographic Information System (GIS). AHP is a multi-criteria decision analysis (MCDA) tool that enables the decision maker to develop a certain hierarchy of alternatives or factors according to priority or importance. It was designed by Saaty (2008) to cope with both the subjective and qualitative attributes of a given problem, deriving weights using pairwise comparisons. Through a survey, the decision maker or stakeholder decides a score using fundamental scale on how dominant an element is to another. The priority vector or Eigen values that defines the relative preferences can then be obtained through Eigen vector method. Several studies were already made using AHP to describe the risk or vulnerability of certain areas to air pollutants present in the atmosphere and this study was inspired by the work of Khan and Sadiq (2005). In their case, they combined hazard (concentration of air pollutants) and exposure (population density, location, and population sensitivity) parameters. Definition of a 5-tuple fuzzy set was able to determine the risk levels as very low, low, medium, high, and very high. Essentially, this study was used as guide but with modifications on the parameters which would be described in succeeding sections. GIS, on the other hand, is basically a computer‐based tool used to collect, store, manipulate, and display spatial reference information. Processing and manipulating geospatial data enhances the understanding of geographical measurements and assists in data analysis. Some common GIS operations are statistics, query optimization, and digitizing. It is also possible to provide a common ground for both the technical and layperson by communicating the information spatially and visually since GIS is able to store geographically large referenced data. Two parameters were evaluated using AHP and GIS: hazard and exposure indices. Hazard index was estimated using the pollutant loading of sulfur compounds (SOx), nitrogen compounds (NOx), and particulate matter (PM) per source. Exposure index was assessed in terms of population sensitivity, population density, and location sensitivity.According to Siador and Promentilla in their study ”An Air Quality Risk Evaluation Method for Metro Manila using Spatial Analytic Hierarchy Process” air pollution and health has been jointly studied for years and their correlation have been proven in the literature. In this regard, the Philippine government is regularly quantifying air quality pollutants for legislation and policy making. Currently, the reported values are only in terms of concentration and pollutant loading. To establish a better model for health risk, two parameters are combined – hazard and exposure indices. The Analytic Hierarchy Process (AHP) technique coupled with Geographic Information System (GIS) was used to derive the composite score for the risk index. The hazard index evaluated the mitigating strategies of the government in terms of source (mobile, stationary, and area sources) and pollutant loading (SOx, NOx, and PM). The 450 policy scenario projected emission values and was used as reference value for hazard index. A value for exposure index was achieved by considering the location sensitivity, population density, and population sensitivity.