.. _covtype_dataset: Forest covertypes ----------------- The samples in this dataset correspond to 30×30m patches of forest in the US, collected for the task of predicting each patch's cover type, i.e. the dominant species of tree. There are seven covertypes, making this a multiclass classification problem. Each sample has 54 features, described on the `dataset's homepage `__. Some of the features are boolean indicators, while others are discrete or continuous measurements. **Data Set Characteristics:** ================= ============ Classes 7 Samples total 581012 Dimensionality 54 Features int ================= ============ :func:`sklearn.datasets.fetch_covtype` will load the covertype dataset; it returns a dictionary-like 'Bunch' object with the feature matrix in the ``data`` member and the target values in ``target``. If optional argument 'as_frame' is set to 'True', it will return ``data`` and ``target`` as pandas data frame, and there will be an additional member ``frame`` as well. The dataset will be downloaded from the web if necessary.