Chronos: link updates for api docs (#3395)
* add link updates * add changes
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					@ -8,7 +8,7 @@ Please refer to BasePytorchForecaster for other methods other than initializatio
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Long short-term memory(LSTM) is a special type of recurrent neural network(RNN). We implement the basic version of LSTM - VanillaLSTM for this forecaster for time-series forecasting task. It has two LSTM layers, two dropout layer and a dense layer.
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					Long short-term memory(LSTM) is a special type of recurrent neural network(RNN). We implement the basic version of LSTM - VanillaLSTM for this forecaster for time-series forecasting task. It has two LSTM layers, two dropout layer and a dense layer.
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For the detailed algorithm description, please refer to `here <https://github.com/intel-analytics/analytics-zoo/blob/master/docs/docs/Chronos/Algorithm/LSTMAlgorithm.md>`__.
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					For the detailed algorithm description, please refer to `here <https://github.com/intel-analytics/BigDL/blob/branch-2.0/docs/docs/Chronos/Algorithm/LSTMAlgorithm.md>`__.
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.. automodule:: bigdl.chronos.forecaster.lstm_forecaster
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					.. automodule:: bigdl.chronos.forecaster.lstm_forecaster
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    :members:
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					    :members:
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					@ -45,7 +45,7 @@ Temporal Convolutional Networks (TCN) is a neural network that use convolutional
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TCMFForecaster
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					TCMFForecaster
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Analytics Zoo Chronos TCMFForecaster provides an efficient way to forecast high dimensional time series.
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					Chronos TCMFForecaster provides an efficient way to forecast high dimensional time series.
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TCMFForecaster is based on DeepGLO algorithm, which is a deep forecasting model which thinks globally and acts locally.
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					TCMFForecaster is based on DeepGLO algorithm, which is a deep forecasting model which thinks globally and acts locally.
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You can refer to `the deepglo paper <https://arxiv.org/abs/1905.03806>`__ for more details.
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					You can refer to `the deepglo paper <https://arxiv.org/abs/1905.03806>`__ for more details.
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					@ -54,7 +54,7 @@ TCMFForecaster supports distributed training and inference. It is based on Orca
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**Remarks**:
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					**Remarks**:
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* You can refer to `TCMFForecaster installation <https://github.com/intel-analytics/analytics-zoo/blob/master/docs/docs/Chronos/tutorials/TCMFForecaster.md/#step-0-prepare-environment>`__ to install required packages.
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					* You can refer to `TCMFForecaster installation <https://github.com/intel-analytics/BigDL/blob/branch-2.0/docs/docs/Chronos/tutorials/TCMFForecaster.md#step-0-prepare-environment>`__ to install required packages.
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* Your operating system (OS) is required to be one of the following 64-bit systems: **Ubuntu 16.04 or later** and **macOS 10.12.6 or later**.
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					* Your operating system (OS) is required to be one of the following 64-bit systems: **Ubuntu 16.04 or later** and **macOS 10.12.6 or later**.
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.. automodule:: bigdl.chronos.forecaster.tcmf_forecaster
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					.. automodule:: bigdl.chronos.forecaster.tcmf_forecaster
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					@ -68,9 +68,9 @@ MTNetForecaster
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MTNet is a memory-network based solution for multivariate time-series forecasting. In a specific task of multivariate time-series forecasting, we have several variables observed in time series and we want to forecast some or all of the variables' value in a future time stamp.
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					MTNet is a memory-network based solution for multivariate time-series forecasting. In a specific task of multivariate time-series forecasting, we have several variables observed in time series and we want to forecast some or all of the variables' value in a future time stamp.
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MTNet is proposed by paper `A Memory-Network Based Solution for Multivariate Time-Series Forecasting <https://arxiv.org/abs/1809.02105>`__. MTNetForecaster is derived from tfpark.KerasMode, and can use all methods of KerasModel. Refer to `tfpark.KerasModel API Doc <https://github.com/intel-analytics/analytics-zoo/blob/master/docs/docs/APIGuide/TFPark/model.md>`__ for details.
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					MTNet is proposed by paper `A Memory-Network Based Solution for Multivariate Time-Series Forecasting <https://arxiv.org/abs/1809.02105>`__. MTNetForecaster is derived from tfpark.KerasMode, and can use all methods of KerasModel. Refer to `tfpark.KerasModel API Doc <https://github.com/intel-analytics/BigDL/blob/branch-2.0/docs/docs/APIGuide/TFPark/model.md>`__ for details.
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For the detailed algorithm description, please refer to `here <https://github.com/intel-analytics/analytics-zoo/blob/master/docs/docs/Chronos/Algorithm/MTNetAlgorithm.md>`__.
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					For the detailed algorithm description, please refer to `here <https://github.com/intel-analytics/BigDL/blob/branch-2.0/docs/docs/Chronos/Algorithm/MTNetAlgorithm.md>`__.
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.. automodule:: bigdl.chronos.forecaster.mtnet_forecaster
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					.. automodule:: bigdl.chronos.forecaster.mtnet_forecaster
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    :members:
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					    :members:
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