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20th International Conference on Ubiquitous Computing and Communications, 20th International Conference on Computer and Information Technology, 4th International Conference on Data Science and Computational Intelligence and 11th International Conference on Smart Computing, Networking, and Services, IUCC/CIT/DSCI/SmartCNS 2021 ; : 281-287, 2021.
Article in English | Scopus | ID: covidwho-1788748

ABSTRACT

Many time series forecasting models applied to the COVID-19 pandemic data have been limited to the amount of locations that they operate on. To improve the efficiency of a model it is desirable to have one model produce outputs for as many different locations as possible. Another drawback of previous models is that most operate on large amounts of data. However, during the initial states of the spread of the disease, before the epidemic became a pandemic, there was not enough data for the models therefore the proposed model not only has to produce forecasts for multiple locations at once, but they must also be accurate based on small amounts of data. This work proposes a multi-output recurrent neural network capable of producing forecasts for 187 different locations even when trained on only 28 days of time series data for each location. Regularisation methods were used to reduce the noise in the model during training. Applying regularisers helped the model better generalise its predictions for the multiple locations the results show that the model using the Long-Short Term Memory network combined with 20% Dropout performed, on average, 3% better than its baseline without the regularisers the improvement was measured using the Root Mean Squared Error. Previously proposed models were not capable of producing forecasts on a global scale without training multiple versions of the same model. This work proposes one model capable of making predictions on a global scale after only the first four weeks of the epidemic. © 2021 IEEE.

2.
2021 International Conference on Artificial Intelligence and Big Data Analytics, ICAIBDA 2021 ; : 66-70, 2021.
Article in English | Scopus | ID: covidwho-1774632

ABSTRACT

The COVID-19 pandemic is far from over. The government has carried out several policies to suppress the development of COVID-19 is no exception in Bogor Regency. However, the public still has to be vigilant especially now we will face a year-end holiday that can certainly be a trigger for the third wave of COVID-19. Therefore, researchers aim to make predictions of the increase in positive cases, especially in the Bogor Regency area to help the government in making policies related to COVID-19. The algorithms used are Gaussian Process, Linear Regression, and Random Forest. Each Algorithm is used to predict the total number of COVID-19 cases for the next 21 days. Researchers approached the Time Series Forecasting model using datasets taken from the COVID-19 Information Center Coordinationn Center website. The results obtained in this study, the method that has the highest probability of accurate and appropriate data contained in the Gaussian Process method. Prediction data on the Linear Regression method has accurate results with actual data that occur with Root Mean Square Error 1202.6262. © 2021 IEEE.

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