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<title>Information Technology</title>
<link href="http://repository.aust.edu.ng/xmlui/handle/123456789/5116" rel="alternate"/>
<subtitle>This collection contains the research output of Information Technology Students at master's Level from 2021- 2022</subtitle>
<id>http://repository.aust.edu.ng/xmlui/handle/123456789/5116</id>
<updated>2026-04-09T16:07:37Z</updated>
<dc:date>2026-04-09T16:07:37Z</dc:date>
<entry>
<title>An Efficient Time Series Model for Tax Revenue Forecasting: A Case of Nigeria</title>
<link href="http://repository.aust.edu.ng/xmlui/handle/123456789/5128" rel="alternate"/>
<author>
<name>Ajisola, Ayotola Segun</name>
</author>
<id>http://repository.aust.edu.ng/xmlui/handle/123456789/5128</id>
<updated>2023-08-21T21:00:52Z</updated>
<published>2023-05-05T00:00:00Z</published>
<summary type="text">An Efficient Time Series Model for Tax Revenue Forecasting: A Case of Nigeria
Ajisola, Ayotola Segun
Federal government independent revenue, non-oil revenue and oil revenue are some of the different sources of money for the Nigerian government. The sources of tax revenue include Pay as You Earn (PAYE), Stamp Duty (STD), Companies Income Tax (CIT), Value Added Tax (VAT), Personal Income Tax, and Petroleum Profit Tax (PPT). Due to the fact that taxes are now one of Nigeria's main sources of income, it is crucial to understand what to expect in terms of their amount. This will either help identify how to improve the country's budget or how to align it with the country's economic situation, depending on the current economic climate. This study makes use of monthly data collected over a period of time based on Federal inland revenue service (FIRS) source data related to earlier collections from a variety of tax categories between the years 2010 and 2021. To determine the optimal model, this study analyzed the projected values and model accuracy from three models multivariate Linear Regression (MLR), seasonal autoregressive integrated moving average (SARIMA) and multi-variate long short-term memory networks (LSTM). Because we could predict using &#13;
multiple independent variables, both LSTM and MLR fared better. The LSTM model had a R2 score of 98.9% and an adjusted R2&#13;
score of 98.8%. Our findings indicate that multi-variate long short-term memory networks can be used to forecast tax revenue with reasonable accuracy and the multivariate Linear Regression comes close when multiple independent variables are used. This can further be enhanced by using other macro-economic factors for greater accuracy
Main Thesis
</summary>
<dc:date>2023-05-05T00:00:00Z</dc:date>
</entry>
<entry>
<title>How Machine Learning Can Evaluate The Influence Of Socio-Economic and Climatic Factors in Agricultural Yield: A Case Of Nigeria</title>
<link href="http://repository.aust.edu.ng/xmlui/handle/123456789/5118" rel="alternate"/>
<author>
<name>Dappa Tamuno-Opubo, Godwin</name>
</author>
<id>http://repository.aust.edu.ng/xmlui/handle/123456789/5118</id>
<updated>2023-05-23T21:00:42Z</updated>
<published>2023-05-13T00:00:00Z</published>
<summary type="text">How Machine Learning Can Evaluate The Influence Of Socio-Economic and Climatic Factors in Agricultural Yield: A Case Of Nigeria
Dappa Tamuno-Opubo, Godwin
The major international agencies in charge of nutrition are becoming increasingly concerned about global agricultural production in particular. Food insecurity has emerged in some populated areas, including Africa, as a result of the increased worldwide need for food as a result of record population growth. Climate change and its variability are two additional factors that contribute to world food insecurity. Furthermore, agricultural policy officials, farmers, and decision-makers require advanced technologies in order to make timely strategies or policies that will have an effect on the quality of crop harvests. Machine learning and other new, powerful analytical techniques made possible by big data technologies have already proven useful in a number of industries, including biology, finance, and medicine. The yield of three major crops, including cocoa, sesame, and cashew, at the national level in Nigeria during the course of the years spanning 1990 to 2020 is forecasted in this study using a machine learning-based prediction method. We used climatic, agricultural yield, and socioeconomic data to help policymakers and farmers anticipate the yearly agricultural output in Nigeria. We employed k-nearest neighbors, a decision tree, and random forest. We also employed a hyper-parameter tweaking technique through cross-validation to enhance the model and avoid overfitting. For sesame, the accuracy of the Decision Tree model was the highest, having a test accuracy of 97.92% for socioeconomic and climatic factors combined, while the KNN model did the best with a test accuracy of 99.71% for climatic components separately. The accuracy of the Random Forest model was 87.54% for climatic elements &#13;
alone and 87.64% for socioeconomic and economic factors together. For cocoa, the Decision Tree model had an accuracy of 89.49% for socioeconomic and climatic factors combined and 89.51% for climatic components alone, while the KNN model had the best accuracy of &#13;
90.71% for climatic elements alone. For socioeconomic and climatic factors taken together, the Random Forest model's accuracy was 87.82%; for climatic components alone, it was 88.83%. For cashew nuts, the accuracy of the KNN model was 78.38% for socioeconomic and climatic components combined and 99.81% for climatic factors alone, compared to 88.27% for socioeconomic and climatic elements combined and 86.58% for climatic factors alone for the Decision Tree model. For both socioeconomic and climatic components combined, the Random Forest model's accuracy was 98.50%, while for climatic factors alone, it was 98.75%. In conclusion, the Random Forest model outperformed the KNN and Decision Tree models across all crop and factor combinations. Our findings indicate that machine learning algorithms can be used to forecast crop yields with reasonable accuracy when &#13;
socioeconomic and meteorological variables are combined.
Main Theses
</summary>
<dc:date>2023-05-13T00:00:00Z</dc:date>
</entry>
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