International Journal of Data Warehousing and Mining (IJDWM) - Current IssueInternational Journal of Data Warehousing and Mining (IJDWM)https://www.igi-global.com/journal/international-journal-data-warehousing-mining/1085IGI GlobalenInternational Journal of Data Warehousing and Mining (IJDWM)1548-39241548-3932© 2024 IGI Globalecontent@igi-global.comInternational Journal of Data Warehousing and Mining (IJDWM)https://coverimages.igi-global.com/cover-images/covers/ijdwm.pnghttps://www.igi-global.com/journal/international-journal-data-warehousing-mining/1085Deep Transfer Learning Based on LSTM Model for Reservoir Flood Forecastinghttps://www.igi-global.com/article/deep-transfer-learning-based-on-lstm-model-for-reservoir-flood-forecasting/338912In recent years, deep learning has been widely used as an efficient prediction algorithm. However, this algorithm has strict requirements on the size of training samples. If there are not enough samples to train the network, it is difficult to achieve the desired effect. In view of the lack of training samples, this article proposes a deep learning prediction model integrating migration learning and applies it to flood forecasting. The model uses random forest algorithm to extract the flood characteristics, and then uses the transfer learning strategy to fine-tune the parameters of the model based on the model trained with similar reservoir data; and is used for the target reservoir flood prediction. Based on the calculation results, an autoregressive algorithm is used to intelligently correct the error of the prediction results. A series of experimental results show that our proposed method is significantly superior to other classical methods in prediction accuracy.10.4018/IJDWM.338912International Journal of Data Warehousing and Mining (IJDWM), Volume: 20, Issue: 1 (2024) Pages: 1-17Zhu, QiliangWang, ChangshengJin, WenchaoRen, JianxunYu, XuetingData Mining and DatabasesComputer Science & ITData Mining2024-01-01T05:00:00Z2011172024-01-01T05:00:00ZA Fuzzy Portfolio Model With Cardinality Constraints Based on Differential Evolution Algorithmshttps://www.igi-global.com/article/a-fuzzy-portfolio-model-with-cardinality-constraints-based-on-differential-evolution-algorithms/341268Uncertain information in the securities market exhibits fuzziness. In this article, expected returns and liquidity are considered as trapezoidal fuzzy numbers. The possibility mean and mean absolute deviation of expected returns represent the returns and risks of securities assets, while the possibility mean of expected turnover represents the liquidity of securities assets. Taking into account practical constraints such as cardinality and transaction costs, this article establishes a fuzzy portfolio model with cardinality constraints and solves it using the differential evolution algorithm. Finally, using fuzzy c-means clustering algorithm, 12 stocks are selected as empirical samples to provide numerical calculation examples. At the same time, fuzzy c-means clustering algorithm is used to cluster the stock yield data and analyse the stock data comprehensively and accurately, which provides a reference for establishing an effective portfolio.10.4018/IJDWM.341268International Journal of Data Warehousing and Mining (IJDWM), Volume: 20, Issue: 1 (2024) Pages: 1-14He, JianDongData Mining and DatabasesComputer Science & ITData Mining2024-01-01T05:00:00Z2011142024-01-01T05:00:00ZResearch on Multi-Parameter Prediction of Rabbit Housing Environment Based on Transformerhttps://www.igi-global.com/article/research-on-multi-parameter-prediction-of-rabbit-housing-environment-based-on-transformer/336286The rabbit breeding industry exhibits vast economic potential and growth opportunities. Nevertheless, the ineffective prediction of environmental conditions in rabbit houses often leads to the spread of infectious diseases, causing illness and death among rabbits. This paper presents a multi-parameter predictive model for environmental conditions such as temperature, humidity, illumination, CO2 concentration, NH3 concentration, and dust conditions in rabbit houses. The model adeptly distinguishes between day and night forecasts, thereby improving the adaptive adjustment of environmental data trends. Importantly, the model encapsulates multi-parameter environmental forecasting to heighten precision, given the high degree of interrelation among parameters. The model's performance is assessed through RMSE, MAE, and MAPE metrics, yielding values of 0.018, 0.031, and 6.31% respectively in predicting rabbit house environmental factors. Experimentally juxtaposed with Bert, Seq2seq, and conventional transformer models, the method demonstrates superior performance.10.4018/IJDWM.336286International Journal of Data Warehousing and Mining (IJDWM), Volume: 20, Issue: 1 (2024) Pages: 1-19Liu, FeiqiYang, DongZhang, YuyangYang, ChengcaiYang, JingjingData Mining and DatabasesComputer Science & ITData Mining2024-01-01T05:00:00Z2011192024-01-01T05:00:00Z