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Main Authors: Li, Yunzhe, Chen, Qian, Yan, Weixiang, Wang, Wen, Zhang, Qinglin, Sundaram, Hari
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2305.14459
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author Li, Yunzhe
Chen, Qian
Yan, Weixiang
Wang, Wen
Zhang, Qinglin
Sundaram, Hari
author_facet Li, Yunzhe
Chen, Qian
Yan, Weixiang
Wang, Wen
Zhang, Qinglin
Sundaram, Hari
contents Existing works on outline-conditioned text generation typically aim to generate text using provided outlines as rough sketches, such as keywords and phrases. However, these approaches make it challenging to control the quality of text generation and assess consistency between outlines and generated texts due to lack of clarity and rationality of the rough outlines. In this paper, we introduce a novel text generation task called Precise Outline-conditioned Generation, which requires generating stories based on specific, sentence-level outlines. To facilitate research on this task, we construct two new datasets, WPOG and CDM. We provide strong baselines based on fine-tuning models such as BART and GPT-2, and evaluating zero-shot performance of models such as ChatGPT and Vicuna. Furthermore, we identify an issue of imbalanced utilization of the outline information in the precise outline-conditioned generation, which is ubiquitously observed across fine-tuned models and zero-shot inference models. To address this issue, we propose an explicit outline utilization control approach and a novel framework that leverages the task duality between summarization and generation. Experimental results show that the proposed approaches effectively alleviate the issue of imbalanced outline utilization and enhance the quality of precise outline-conditioned text generation for both fine-tuning and zero-shot settings.
format Preprint
id arxiv_https___arxiv_org_abs_2305_14459
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Advancing Precise Outline-Conditioned Text Generation with Task Duality and Explicit Outline Control
Li, Yunzhe
Chen, Qian
Yan, Weixiang
Wang, Wen
Zhang, Qinglin
Sundaram, Hari
Computation and Language
Artificial Intelligence
Existing works on outline-conditioned text generation typically aim to generate text using provided outlines as rough sketches, such as keywords and phrases. However, these approaches make it challenging to control the quality of text generation and assess consistency between outlines and generated texts due to lack of clarity and rationality of the rough outlines. In this paper, we introduce a novel text generation task called Precise Outline-conditioned Generation, which requires generating stories based on specific, sentence-level outlines. To facilitate research on this task, we construct two new datasets, WPOG and CDM. We provide strong baselines based on fine-tuning models such as BART and GPT-2, and evaluating zero-shot performance of models such as ChatGPT and Vicuna. Furthermore, we identify an issue of imbalanced utilization of the outline information in the precise outline-conditioned generation, which is ubiquitously observed across fine-tuned models and zero-shot inference models. To address this issue, we propose an explicit outline utilization control approach and a novel framework that leverages the task duality between summarization and generation. Experimental results show that the proposed approaches effectively alleviate the issue of imbalanced outline utilization and enhance the quality of precise outline-conditioned text generation for both fine-tuning and zero-shot settings.
title Advancing Precise Outline-Conditioned Text Generation with Task Duality and Explicit Outline Control
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2305.14459