The viewer is disabled because this dataset repo requires arbitrary Python code execution. Please consider
			removing the
			loading script
			and relying on
			automated data support
			(you can use
			convert_to_parquet
			from the datasets library). If this is not possible, please
			open a discussion
			for direct help.
		
Part of MONSTER: https://arxiv.org/abs/2502.15122.
| Traffic | |
|---|---|
| Category | Count | 
| Num. Examples | 1,460,968 | 
| Num. Channels | 1 | 
| Length | 24 | 
| Sampling Freq. | hourly | 
| Num. Classes | 7 | 
| License | CC BY 4.0 | 
| Citations | [1] | 
Traffic consists of hourly traffic counts at various locations in the state of NSW, Australia [1]. The processed dataset contains 1,460,968 (univariate) time series, each of length 24 (i.e., representing 24 hours of data per time series). The data comes from automatic traffic counting sensors at different locations. The task is to predict the day of the week based on the time series of counts. The dataset has been split into stratified random cross-validation folds.
[1] Transport for NSW. (2023). NSW road traffic volume counts hourly. https://opendata.transport.nsw.gov.au/dataset/nsw-roads-traffic-volume-counts-api, CC BY 4.0.
- Downloads last month
 - 174