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- ...ependent and identically distributed (i.i.d.), making it inappropriate for time-series data or data with inherent structure. ===Time-Series Split===3 KB (535 words) - 21:56, 18 March 2023
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- ...s-validation. Other variations include stratified k-fold cross-validation, time-series cross-validation, and group cross-validation. ...ns a representative sample of the class distribution. In time-series data, time-series cross-validation is employed to preserve the temporal order of the data.3 KB (424 words) - 19:14, 19 March 2023
- ...hine learning tasks, particularly in natural language processing (NLP) and time-series analysis. * [[Time-series analysis]]: LSTMs can model complex temporal relationships in data, making4 KB (567 words) - 12:13, 19 March 2023
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- ...ucial for sequence-to-sequence tasks, such as natural language processing, time-series prediction, and speech recognition.3 KB (432 words) - 12:17, 19 March 2023
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- ...pdates model parameters as new data is received, particularly suitable for time-series forecasting and adaptive filtering.4 KB (531 words) - 13:25, 18 March 2023
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- ...racy, CIM is also notable for its real-time simulation capability based on time-series analysis. Using our CIM technology, StockCode offers real-time simulation o ...d_stockcode_ai__jit_plugin.getStockData''' - This API is designed to fetch time-series data of individual stocks, including both historical and forecasted future8 KB (1,224 words) - 05:38, 31 January 2024
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- * '''Audio:''' Acoustic data, usually captured as time-series data, such as sound waveforms or spectral representations.4 KB (548 words) - 13:23, 18 March 2023
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- ...ls specifically designed for processing grid-like data, such as images and time-series data. Convolutional filters are used to perform a mathematical operation ca3 KB (493 words) - 06:21, 19 March 2023
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- ...ned [[models]] and 10,000 [[datasets]] for NLP, speech, computer vision, [[time-series]], biology, [[reinforcement learning]], chemistry, and others. <ref name="�10 KB (1,398 words) - 12:47, 21 February 2023
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