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Main Authors: Qiu, Xiangfei, Li, Xiuwen, Pang, Ruiyang, Pan, Zhicheng, Wu, Xingjian, Yang, Liu, Hu, Jilin, Shu, Yang, Lu, Xuesong, Yang, Chengcheng, Guo, Chenjuan, Zhou, Aoying, Jensen, Christian S., Yang, Bin
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.17603
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author Qiu, Xiangfei
Li, Xiuwen
Pang, Ruiyang
Pan, Zhicheng
Wu, Xingjian
Yang, Liu
Hu, Jilin
Shu, Yang
Lu, Xuesong
Yang, Chengcheng
Guo, Chenjuan
Zhou, Aoying
Jensen, Christian S.
Yang, Bin
author_facet Qiu, Xiangfei
Li, Xiuwen
Pang, Ruiyang
Pan, Zhicheng
Wu, Xingjian
Yang, Liu
Hu, Jilin
Shu, Yang
Lu, Xuesong
Yang, Chengcheng
Guo, Chenjuan
Zhou, Aoying
Jensen, Christian S.
Yang, Bin
contents Time series forecasting has important applications across diverse domains. EasyTime, the system we demonstrate, facilitates easy use of time-series forecasting methods by researchers and practitioners alike. First, EasyTime enables one-click evaluation, enabling researchers to evaluate new forecasting methods using the suite of diverse time series datasets collected in the preexisting time series forecasting benchmark (TFB). This is achieved by leveraging TFB's flexible and consistent evaluation pipeline. Second, when practitioners must perform forecasting on a new dataset, a nontrivial first step is often to find an appropriate forecasting method. EasyTime provides an Automated Ensemble module that combines the promising forecasting methods to yield superior forecasting accuracy compared to individual methods. Third, EasyTime offers a natural language Q&A module leveraging large language models. Given a question like "Which method is best for long term forecasting on time series with strong seasonality?", EasyTime converts the question into SQL queries on the database of results obtained by TFB and then returns an answer in natural language and charts. By demonstrating EasyTime, we intend to show how it is possible to simplify the use of time series forecasting and to offer better support for the development of new generations of time series forecasting methods.
format Preprint
id arxiv_https___arxiv_org_abs_2412_17603
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle EasyTime: Time Series Forecasting Made Easy
Qiu, Xiangfei
Li, Xiuwen
Pang, Ruiyang
Pan, Zhicheng
Wu, Xingjian
Yang, Liu
Hu, Jilin
Shu, Yang
Lu, Xuesong
Yang, Chengcheng
Guo, Chenjuan
Zhou, Aoying
Jensen, Christian S.
Yang, Bin
Machine Learning
Time series forecasting has important applications across diverse domains. EasyTime, the system we demonstrate, facilitates easy use of time-series forecasting methods by researchers and practitioners alike. First, EasyTime enables one-click evaluation, enabling researchers to evaluate new forecasting methods using the suite of diverse time series datasets collected in the preexisting time series forecasting benchmark (TFB). This is achieved by leveraging TFB's flexible and consistent evaluation pipeline. Second, when practitioners must perform forecasting on a new dataset, a nontrivial first step is often to find an appropriate forecasting method. EasyTime provides an Automated Ensemble module that combines the promising forecasting methods to yield superior forecasting accuracy compared to individual methods. Third, EasyTime offers a natural language Q&A module leveraging large language models. Given a question like "Which method is best for long term forecasting on time series with strong seasonality?", EasyTime converts the question into SQL queries on the database of results obtained by TFB and then returns an answer in natural language and charts. By demonstrating EasyTime, we intend to show how it is possible to simplify the use of time series forecasting and to offer better support for the development of new generations of time series forecasting methods.
title EasyTime: Time Series Forecasting Made Easy
topic Machine Learning
url https://arxiv.org/abs/2412.17603