Abstract
The main purpose of this paper is to study the key technology for the prediction of time series data. It has a very wide range of applications, such as forecasting sales. Forecasting sales can be said to play an important role in company operations. Whether for saving costs or inventory scheduling, accurate prediction can save unnecessary waste. From this aspect, this paper uses a neural network to achieve the purpose of the prediction.
The application of neural networks in prediction has been a long time. However, most of them have not performed much research on the structure and input of neural networks, and it is not easy to process time series data. Usually, there will be many features. However, the features of data in some scenarios are small. In this paper, we determined how to predict through low-latitude features. At first, among all the ways of preprocessing data, the paper selects a mathematical method. After that, this paper builds three models in two aspects: the input and the network structure. To improve the accuracy of the results, this paper proposes two means. One is based on the seasonal characteristics of commodities. The other is based on the prediction error, called exponential smoothing. Finally, according to the results of the experiment, we come to some conclusions.
Supported by The National Key Research and Development Program of China (2020YFB1006104).
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References
Amiri, M., Amnieh, H.B., Hasanipanah, M., Khanli, L.M.: A new combination of artificial neural network and k -nearest neighbors models to predict blast-induced ground vibration and air-overpressure. Eng. Comput. 32(4), 631–644 (2016)
Atiya, A.F., Elshoura, S.M., Shaheen, S.I., Elsherif, M.S.: A comparison between neural-network forecasting techniques-case study: river flow forecasting. IEEE Trans. Neural Netw. 10(2), 402–9 (1999)
Chatfield, C., Weigend, A.S.: Time series prediction: forecasting the future and understanding the past: Neil A. Gershenfeld and Andreas S. Weigend, 1994, ‘the future of time series’. In: Weigend, A.S., Gershenfeld, N.A. (eds.) International Journal of Forecasting, vol. 10, no. 1, pp. 161–163. Addison-Wesley, Reading (1994). 1–70
Chen, C.H.: Neural networks for financial market prediction. In: IEEE International Conference on Neural Networks, 1994. IEEE World Congress on Computational Intelligence, vol. 2, pp. 1199–1202 (2002)
Faraggi, E., Kloczkowski, A.: GENN: a general neural network for learning tabulated data with examples from protein structure prediction. Methods Mol. Biol. 1260(1260), 165 (2015)
Huarng, K., Yu, H.K.: The application of neural networks to forecast fuzzy time series. Phys. A 363(2), 481–491 (2006)
Hussain, A.J., Fergus, P., Al-Askar, H., Al-Jumeily, D., Jager, F.: Dynamic neural network architecture inspired by the immune algorithm to predict preterm deliveries in pregnant women. Neurocomputing 151(3), 963–974 (2015)
Kaastra, I., Boyd, M.: Designing a neural network for forecasting financial and economic time series. Neurocomputing 10(3), 215–236 (1996)
Keskin, T.E., Düğenci, M., Kaçaroğlu, F.: Prediction of water pollution sources using artificial neural networks in the study areas of sivas, karabük and bartın (turkey). Environ. Earth Sci. 73(9), 5333–5347 (2015)
Lu, C.J., Lee, T.S., Lian, C.M.: Sales forecasting for computer wholesalers: a comparison of multivariate adaptive regression splines and artificial neural networks. Decis. Support Syst. 54(1), 584–596 (2012)
Lyon, E., Dearden, G., Cheng, H., Shenton, T., Page, V., Kuang, Z.: Neural network prediction of engine performance for second pulse fire/no fire decision making in dual pulse laser ignited engines. Plant Cell 16(6), 1365–77 (2015)
Pindoriya, N.M., Singh, S.N., Singh, S.K.: Application of adaptive wavelet neural network to forecast operating reserve requirements in forward ancillary services market. Appl. Soft Comput. 1, 1811–1819 (2011)
Scott, S.L., Varian, H.R.: Bayesian variable selection for nowcasting economic time series. In: NBER Working Papers (2012)
Smith, C., Wunsch, D.: Time series prediction via two-step clustering. In: International Joint Conference on Neural Networks, pp. 1–4 (2015)
Taylor, J.W., Buizza, R.: Neural network load forecasting with weather ensemble predictions. IEEE Power Eng. Rev. 22(7), 59–59 (2007)
Were, K., Bui, D.T., Dick, Ø.B., Singh, B.R.: A comparative assessment of support vector regression, artificial neural networks, and random forests for predicting and mapping soil organic carbon stocks across an afromontane landscape. Ecol. Indicators 52, 394–403 (2015)
Zhang, G.P., Qi, M.: Neural network forecasting for seasonal and trend time series. Eur. J. Oper. Res. 160(2), 501–514 (2005)
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Zhang, H., Guo, H., Yang, D., Li, M., Zheng, B., Wang, H. (2023). Prediction of Time Series Data with Low Latitude Features. In: Yu, Z., et al. Data Science. ICPCSEE 2023. Communications in Computer and Information Science, vol 1879. Springer, Singapore. https://doi.org/10.1007/978-981-99-5968-6_11
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DOI: https://doi.org/10.1007/978-981-99-5968-6_11
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