Research Publications (Accounting and Informatics)
Permanent URI for this collectionhttp://ir-dev.dut.ac.za/handle/10321/212
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Item Credit score prediction using genetic algorithm-LSTM technique(IEEE, 2022-03) Adisa, Juliana; Ojo, Samuel; Owolawi, Pius; Pretorius, Agnieta; Ojo, Sunday O.In data mining, the goal of prediction is to develop a more effective model that can provide accurate results. Prior literature has studied different classification techniques and found that combining multiple classifiers into ensembles outperformed most single classifier approaches. The performance of an ensemble classifier can be affected by some factors. How to determine the best classification technique' Which combination method to employ' This paper applies Long Short-Term Memory (LSTM), one of the most advanced deep learning algorithms which are inherently appropriate for the financial domain but rarely applied to credit scoring prediction. The research presents an optimization approach to determine the optimal parameters for a deep learning algorithm. The LSTM parameters are determined using an optimization algorithm. The LSTM parameters include epochs, batch size, number of neurons, learning rate and dropout. The results show that the optimized LSTM model outperforms both single classifiers and ensemble models.Item Estimating effect of total specific atmospheric attenuation on performance of FSO communication link in South Africa(Engineering and Technology Publishing, 2022) Maswikaneng, Solly P.; Adebusola, Samuel O.; Owolawi, Pius A.; Ojo, Sunday O.In comparison with Radio Frequency (RF), the Free Space Optical Communication (FSOC) provides higher bandwidth, free license operation, and less initial expenditure. However, its susceptibility to changes in atmospheric weather conditions. In this paper, the impact of irradiance fluctuation on FSO systems was estimated using Rytov theory for major cities in South Africa. The extent to which the refractive index structure parameter, propagation distance and link margin affect the optical signal power at the receiver is discussed and the different methods used in evaluating the atmospheric turbulence effect are investigated. In order to achieve the stated aim, meteorological data, altitude, visibility, and wind speed were obtained from the archive of South Africa Weather Services for a period of 3years (2016-2018) over seven locations which include Cape Town, Pretoria, Upington, Bloemfontein, Emalahleni, Polokwane, East London. Results show that Emalahleni was found to possess the poor visibility of 4.4 km because of foggy conditions due to the activities of miners and other environmental factors, followed by East London with average visibility of 4.8 km. From the analysis of link margin, it was shown that FSO link attenuation reduces at higher wavelengths and long link distances due to the effect of geometric and atmospheric losses. The results show that the rate of decrease in link margin is much higher in the inland regions as compared to the coastal regions; therefore, FSO systems are prone to outage during high rainfall and longer range of connections.Item A bisociated research paper recommendation model using BiSOLinkers(Insight Society, 2022-01-01) Maake, Benard M.; Ojo, Sunday O.; Zuva, Keneilwe; Mzee, Fredrick A.In the current days of information overload, it is nearly impossible to obtain a form of relevant knowledge from massive information repositories without using information retrieval and filtering tools. The academic field daily receives lots of research articles, thus making it virtually impossible for researchers to trace and retrieve important articles for their research work. Unfortunately, the tools used to search, retrieve and recommend relevant research papers suggest similar articles based on the user profile characteristic, resulting in the overspecialization problem whereby recommendations are boring, similar, and uninteresting. We attempt to address this problem by recommending research papers from domains considered unrelated and unconnected. This is achieved through identifying bridging concepts that can bridge these two unrelated domains through their outlying concepts – BiSOLinkers. We modeled a bisociation framework using graph theory and text mining technologies. Machine learning algorithms were utilized to identify outliers within the dataset, and the accuracy achieved by most algorithms was between 96.30% and 99.49%, suggesting that the classifiers accurately classified and identified the outliers. We additionally utilized the Latent Dirichlet Allocation (LDA) algorithm to identify the topics bridging the two unrelated domains at their point of intersection. BisoNets were finally generated, conceptually demonstrating how the two unrelated domains were linked, necessitating cross-domain recommendations. Hence, it is established that recommender systems' overspecialization can be addressed by combining bisociation, topic modeling, and text mining approaches.Item A hippocratic privacy protection framework for relational databases(IEEE, 2012-09) Oberholzer, Hendrik H.J.G.; Ojo, Sunday O.; Olugbara, Oludayo O.Individuals are not comfortable when disclosing their personal information to corporate organisations and are becoming increasingly concerned. Decision criteria needed for privacy protection are more complex than those that apply to access control when managing security. A typical problem in this context concerns giving individuals better control over their personal information, while at the same time allowing the organisation to process its transactions on the same personalised information. To address this difficulty, we consider extending the Hippocratic principles and model them in our Hippocratic Privacy Protection (HPP) framework that is based on the concept of privacy contracting. A prototype of the proposed HPP framework was constructed to serve as a proof of concept in order to demonstrate the developed HPP framework as an applicable and efficacious model for solving privacy problems. Based on this prototype, we afford individuals more control over their personal information. The prototype that we developed is validated against a proposed PET evaluation framework.Item Kernel density feature points estimator for content-based image retrieval(AIRCC, 2012-02) Zuva, Tranos; Olugbara, Oludayo O.; Ojo, Sunday O.; Ngwira, Seleman M.Research is taking place to find effective algorithms for content-based image representation and description. There is a substantial amount of algorithms available that use visual features (color, shape, texture). Shape feature has attracted much attention from researchers that there are many shape representation and description algorithms in literature. These shape image representation and description algorithms are usually not application independent or robust, making them undesirable for generic shape description. This paper presents an object shape representation using Kernel Density Feature Points Estimator (KDFPE). In this method, the density of feature points within defined rings around the centroid of the image is obtained. The KDFPE is then applied to the vector of the image. KDFPE is invariant to translation, scale and rotation. This method of image representation shows improved retrieval rate when compared to Density Histogram Feature Points (DHFP) method. Analytic analysis is done to justify our method, which was compared with the DHFP to prove its robustness.Item Introducing an adaptive kernel density feature points estimator for image representation(IJITCS, 2012-06) Zuva, Tranos; Olugbara, Oludayo O.; Ojo, Sunday O.; Ngwira, Seleman M.This paper provides an image shape representation technique known as Adaptive Kernel Density Feature Points Estimator (AKDFPE). In this method, the density of feature points within defined rings (bandwidth) around the centroid of the image is obtained in the form of a vector. The AKDFPE is then applied to the vector of the image. AKDFPE is invariant to translation, scale and rotation. This method of image representation shows improved retrieval rate when compared to Kernel Density Feature Points Estimator (KDFPE) method. Analytic analysis is done to justify our method, which was compared with the KDFPE to prove its robustness.Item Using cloud computing to mitigate rural e-learning sustainability and challenges(International Association of Engineers, 2012) Odunaike, S. A.; Olugbara, Oludayo O.; Ojo, Sunday O.The Internet Technology is at forefront of transforming education and opportunities around the globe by allowing different kind of interaction and innovation among various educational institutes and students alike, all participating in the global online innovations. In particular, educators have realized that technology enhanced learning, offers flexible and powerful way of accomplishing wide range of opportunities that have been important and resourceful in schools, such as gaining access to universal information resources that relieve academic staff of their work load leaving time for professional development and time to improve on their studies and research output which have been so elusive for sometime now. Extending this novelty and gain to the rural settings raises lot of concerns and challenges that threaten its sustainability to its core implementation. Cloud computing brings wide ranges of computing power, innovations and shifts in paradigms of Information Technology. This paper will probe whether the promise of cloud computing could be employ to enhance or mitigate the challenges poised to e- learning implementation and sustainability in the rural setting using descriptive research approach. The paper will inform stakeholders of any gains or prospect of using cloud computing to downgrade the e-learning sustainability problems that have plagued the implementation of e-learning in the rural setting as unviable future instructional offering.