How to use the ctgan.sampler.Sampler function in ctgan

To help you get started, we’ve selected a few ctgan examples, based on popular ways it is used in public projects.

Secure your code as it's written. Use Snyk Code to scan source code in minutes - no build needed - and fix issues immediately.

github DAI-Lab / CTGAN / ctgan / synthesizer.py View on Github external
List of discrete columns to be used to generate the Conditional
                Vector. If ``train_data`` is a Numpy array, this list should
                contain the integer indices of the columns. Otherwise, if it is
                a ``pandas.DataFrame``, this list should contain the column names.
            epochs (int):
                Number of training epochs. Defaults to 300.
            log_frequency (boolean):
                Whether to use log frequency of categorical levels in conditional
                sampling. Defaults to ``True``.
        """

        self.transformer = DataTransformer()
        self.transformer.fit(train_data, discrete_columns)
        train_data = self.transformer.transform(train_data)

        data_sampler = Sampler(train_data, self.transformer.output_info)

        data_dim = self.transformer.output_dimensions
        self.cond_generator = ConditionalGenerator(
            train_data,
            self.transformer.output_info,
            log_frequency
        )

        self.generator = Generator(
            self.embedding_dim + self.cond_generator.n_opt,
            self.gen_dim,
            data_dim
        ).to(self.device)

        discriminator = Discriminator(
            data_dim + self.cond_generator.n_opt,