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We present LingGen, a novel controlled text generation system that enables precise control over a variable number of linguistic attributes through a dedicated attribute embedding network and optimized attribute integration mechanisms. Such fine-grained control is critical for applications like generating accessible educational materials. We also introduce a sample-based masking strategy that selectively masks linguistic control attributes according to a power law distribution during training. This approach improves robustness when controlling different combinations of attributes. Our experiments demonstrate that LingGen significantly outperforms current state-of-the-art models in multi-attribute controlled generation. Ablation studies reveal several key findings: Our approach for attribute integration effectively handles multi-attribute generation, the masking strategy enhances model performance across varying attribute combinations, and LingGen maintains consistent performance regardless of the chosen foundational model.
