-
Book Overview & Buying
-
Table Of Contents
-
Feedback & Rating

Deep Learning for Time Series Cookbook
By :

GANs have gained significant popularity in various fields of ML, particularly in image generation and modification. However, their application in time series data, especially for anomaly detection, is an emerging area of research and practice. In this recipe, we focus on utilizing GANs, specifically Anomaly Detection with Generative Adversarial Networks (AnoGAN), to detect time series data anomalies.
Before diving into the implementation, ensure that you have the PyOD library installed. We will continue using the taxi trip dataset for this recipe, which provides a real-world context for time series anomaly detection.
The implementation involves several steps: data preprocessing, defining and training the AnoGAN model, and finally, performing anomaly detection: