Deepak KumarDeepti MehrotraRohit Bansal
Nowadays, query optimization is a biggest concern for crowd-sourcing systems, which are developed for relieving the user burden of dealing with the crowd. Initially, a user needs to submit a structured query language (SQL) based query and the system takes the responsibility of query compiling, generating an execution plan, and evaluating the crowd-sourcing market place. The input queries have several alternative execution plans and the difference in crowd-sourcing cost between the worst and best plans. In relational database systems, query optimization is essential for crowd-sourcing systems, which provides declarative query interfaces. Here, a multi-objective query optimization approach using an ant-lion optimizer was employed for declarative crowd-sourcing systems. It generates a query plan for developing a better balance between the latency and cost. The experimental outcome of the proposed methodology was validated on UCI automobile and Amazon Mechanical Turk (AMT) datasets. The proposed methodology saves 30%-40% of cost in crowd-sourcing query optimization compared to the existing methods.
Seyedali MirjaliliPradeep JangirShahrzad Saremi
Rocío L. CecchiniCarlos M. LorenzettiAna Gabriela Maguitman
Imhade P. OkokpujieLagouge K. Tartibu
Yi LiuWei QinJinhui ZhangMengmeng LiQibin ZhengJichuan Wang