Vulgarized neighboring network of multivariate autoregressive processes with Gaussian and Student-t distributed random noise / Rasaki Olawale Olanrewaju ... [et al.]

This paper introduces the vulgarized network autoregressive process with Gaussian and Student-t random noises. The processes relate the time-varying series of a given variable to the immediate past of the same phenomenon with the inclusion of its neighboring variables and networking structure. The g...

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Bibliographic Details
Main Authors: Olawale Olanrewaju, Rasaki (Author), Ranjan, Ravi Prakash (Author), C. Chukwudum, Queensley (Author), Olanrewaju, Sodiq Adejare (Author)
Format: Book
Published: Universiti Teknologi MARA Press (Penerbit UiTM), 2023-10.
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042 |a dc 
100 1 0 |a Olawale Olanrewaju, Rasaki  |e author 
700 1 0 |a Ranjan, Ravi Prakash  |e author 
700 1 0 |a C. Chukwudum, Queensley  |e author 
700 1 0 |a Olanrewaju, Sodiq Adejare  |e author 
245 0 0 |a Vulgarized neighboring network of multivariate autoregressive processes with Gaussian and Student-t distributed random noise / Rasaki Olawale Olanrewaju ... [et al.] 
260 |b Universiti Teknologi MARA Press (Penerbit UiTM),   |c 2023-10. 
500 |a https://ir.uitm.edu.my/id/eprint/86387/1/86387.pdf 
520 |a This paper introduces the vulgarized network autoregressive process with Gaussian and Student-t random noises. The processes relate the time-varying series of a given variable to the immediate past of the same phenomenon with the inclusion of its neighboring variables and networking structure. The generalized network autoregressive process would be fully spelt-out to contain the aforementioned random noises with their embedded parameters (the autoregressive coefficients, networking nodes, and neighboring nodes) and subjected to monthly prices of ten (10) edible cereals. Global-α of Generalized Network Autoregressive (GNAR) of order lag two, the neighbor at the time lags two and the neighbourhood nodal of zero, that is GNAR (2, [2,0]) was the ideal generalization for both Gaussian and student-t random noises for the prices of cereals, a model with two autoregressive parameters and network regression parameters on the first two neighbor sets at time lag one. GNAR model with student-t random noise produced the smallest BIC of -39.2298 compared to a BIC of -18.1683 by GNAR by Gaussian. The residual error via Gaussian was 0.9900 compared to the one of 0.9000 by student-t. Additionally, GNAR MSE for error of forecasting via student-t was 15.105% less than that of the Gaussian. Similarly, student-t-GNAR MSE for VAR was 1.59% less than that of the Gaussian-GNAR MSE for VAR. Comparing the fitted histogram plots of both the student-t and Gaussian processes, the two histograms produced a symmetric residual estimate for the fitted GNAR model via student-t and Gaussian processes respectively, but the residuals via the student-t were more evenly symmetric than those of the Gaussian. In a contribution to the network autoregressive process, the GNAR process with Student-t random noise generalization should always be favoured over Gaussian random noise because of its ability to absolve contaminations, spread, and ability to contain time-varying network measurements. 
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655 7 |a Article  |2 local 
655 7 |a PeerReviewed  |2 local 
787 0 |n https://ir.uitm.edu.my/id/eprint/86387/ 
856 4 1 |u https://ir.uitm.edu.my/id/eprint/86387/  |z Link Metadata