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Search results for "Time Series RNN"

Findings Comparing Classical and Machine Learning Methods for Time Series Forecasting

Comparing Classical and Machine Learning Algorithms for Time Series Forecasting

Machine learning and deep learning methods are often reported to be the key solution to all predictive modeling problems. An important recent study evaluated and compared the performance of many classical and modern machine learning and deep learning methods on a large and diverse set of more than 1,000 univariate time series forecasting problems. The […]

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Line Plot of Monthly Car Sales

Deep Learning Models for Univariate Time Series Forecasting

Deep learning neural networks are capable of automatically learning and extracting features from raw data. This feature of neural networks can be used for time series forecasting problems, where models can be developed directly on the raw observations without the direct need to scale the data using normalization and standardization or to make the data […]

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How to Develop LSTM Models for Multi-Step Time Series Forecasting of Household Power Consumption

Multi-Step LSTM Time Series Forecasting Models for Power Usage

Given the rise of smart electricity meters and the wide adoption of electricity generation technology like solar panels, there is a wealth of electricity usage data available. This data represents a multivariate time series of power-related variables that in turn could be used to model and even forecast future electricity consumption. Unlike other machine learning […]

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How to Develop RNN Models for Human Activity Recognition Time Series Classification

LSTMs for Human Activity Recognition Time Series Classification

Human activity recognition is the problem of classifying sequences of accelerometer data recorded by specialized harnesses or smart phones into known well-defined movements. Classical approaches to the problem involve hand crafting features from the time series data based on fixed-sized windows and training machine learning models, such as ensembles of decision trees. The difficulty is […]

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Line plots for the time series in a single trace with trend lines

Indoor Movement Time Series Classification with Machine Learning Algorithms

Indoor movement prediction involves using wireless sensor strength data to predict the location and motion of subjects within a building. It is a challenging problem as there is no direct analytical model to translate the variable length traces of signal strength data from multiple sensors into user behavior. The ‘indoor user movement‘ dataset is a […]

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DL4TSF-400

Deep Learning for Time Series Forecasting

Deep Learning for Time Series Forecasting Predict the Future with MLPs, CNNs and LSTMs in Python …why deep learning? The Promise of Deep Learning for Time Series Forecasting Traditionally, time series forecasting has been dominated by linear methods because they are well understood and effective on many simpler forecasting problems. Deep learning neural networks are […]

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Implementation Patterns for the Encoder-Decoder RNN Architecture with Attention

Implementation Patterns for the Encoder-Decoder RNN Architecture with Attention

The encoder-decoder architecture for recurrent neural networks is proving to be powerful on a host of sequence-to-sequence prediction problems in the field of natural language processing. Attention is a mechanism that addresses a limitation of the encoder-decoder architecture on long sequences, and that in general speeds up the learning and lifts the skill of the […]

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A Gentle Introduction to Backpropagation Through Time

A Gentle Introduction to Backpropagation Through Time

Backpropagation Through Time, or BPTT, is the training algorithm used to update weights in recurrent neural networks like LSTMs. To effectively frame sequence prediction problems for recurrent neural networks, you must have a strong conceptual understanding of what Backpropagation Through Time is doing and how configurable variations like Truncated Backpropagation Through Time will affect the […]

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