Big Data-Driven Cognitive Computing System for Optimization of Social Media Analytics

Authors: Sangaiah, A.K., Goli, A., Tirkolaee, E.B., Ranjbar-Bourani, M., Pandey, H.M. and Zhang, W.

Journal: IEEE Access

Volume: 8

Pages: 82215-82226

eISSN: 2169-3536

DOI: 10.1109/ACCESS.2020.2991394

Abstract:

The integration of big data analytics and cognitive computing results in a new model that can provide the utilization of the most complicated advances in industry and its relevant decision-making processes as well as resolving failures faced during big data analytics. In E-projects portfolio selection (EPPS) problem, big data-driven decision-making has a great importance in web development environments. EPPS problem deals with choosing a set of the best investment projects on social media such that maximum return with minimum risk is achieved. To optimize the EPPS problem on social media, this study aims to develop a hybrid fuzzy multi-objective optimization algorithm, named as NSGA-III-MOIWO encompassing the non-dominated sorting genetic algorithm III (NSGA-III) and multi-objective invasive weed optimization (MOIWO) algorithms. The objectives are to simultaneously minimize variance, skewness and kurtosis as the risk measures and maximize the total expected return. To evaluate the performance of the proposed hybrid algorithm, the data derived from 125 active E-projects in an Iranian web development company are analyzed and employed over the period 2014-2018. Finally, the obtained experimental results provide the optimal policy based on the main limitations of the system and it is demonstrated that the NSGA-III-MOIWO outperforms the NSGA-III and MOIWO in finding efficient investment boundaries in EPPS problems. Finally, an efficient statistical-comparative analysis is performed to test the performance of NSGA-III-MOIWO against some well-known multi-objective algorithms.

Source: Scopus

Big Data-Driven Cognitive Computing System for Optimization of Social Media Analytics

Authors: Sangaiah, A.K., Goli, A., Tirkolaee, E.B., Ranjbar-Bourani, M., Pandey, H.M. and Zhang, W.

Journal: IEEE ACCESS

Volume: 8

Pages: 82215-82226

ISSN: 2169-3536

DOI: 10.1109/ACCESS.2020.2991394

Source: Web of Science (Lite)