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Awesome-Story-Generation

Contributed by Yingpeng Ma, Yan Ma

🔥 Due to limitations with the Semantic Scholar API, we are unable to display citation counts for all papers in this repo.

We focus on showing citation counts for all LLMs-era papers and some earlier influential papers.

Here, "influential" means papers with over 50 citations.

Table of Contents

Introduction

This repository collects an extensive list of awesome papers about Story Generation / Storytelling, primarily focusing on the era of Large Language Models (LLMs).

All papers are sorted in chronological order, with the most recent ones appearing at the top.

Due to limited energy and time, there may be omissions and errors. If you notice any issues or mistakes, please feel free to open issues or submit PRs!

If you have any suggestions or questions, please do not hesitate to reach out to me:

mayingpeng33 [AT] gmail [DOT] com

Papers

Eg. ACL-2023 Title [paper] [code] .. [authors]

Literature Review

  • CHI-2024 The Value, Benefits, and Concerns of Generative AI-Powered Assistance in Writing [paper] [Zhuoyan Li, Chen Liang, Jing Peng, Ming Yin]
  • EMNLP-2023 Creative Natural Language Generation [paper] [Tuhin Chakrabarty, Vishakh Padmakumar, He He, Nanyun Peng]
  • Neurocomputing-2023 Open-world story generation with structured knowledge enhancement: A comprehensive survey [paper] [Yuxin Wang, Jieru Lin, Zhiwei Yu, Wei Hu, Börje F. Karlsson]
  • WNU-2022 What is Wrong with Language Models that Can Not Tell a Story? [paper] [Ivan P. Yamshchikov, Alexey Tikhonov]
  • ACM Computing Surveys-2021 Automatic Story Generation [paper] [Arwa I. Alhussain, Aqil M. Azmi]
  • NUSE-2021 Automatic Story Generation: Challenges and Attempts [paper] [Amal Alabdulkarim, Siyan Li, Xiangyu Peng]

Large Language Model

  • EACL-2024 Creating Suspenseful Stories: Iterative Planning with Large Language Models [paper] [Kaige Xie, Mark Riedl]
  • Arxiv-2024 SWAG: Storytelling With Action Guidance [paper] [Zeeshan Patel, Karim El-Refai, Jonathan Pei, Tianle Li]
  • Arxiv-2024 Weaver: Foundation Models for Creative Writing [paper] [Tiannan Wang, Jiamin Chen, Qingrui Jia, Shuai Wang, Ruoyu Fang, ... , Yuchen Eleanor Jiang, Wangchunshu Zhou]
  • ArXiv-2023 AutoAgents: A Framework for Automatic Agent Generation [paper] [Guangyao Chen, Siwei Dong, Yu Shu, Ge Zhang, Jaward Sesay, Börje F. Karlsson, Jie Fu, Yemin Shi]
  • ArXiv-2023 RecurrentGPT: Interactive Generation of (Arbitrarily) Long Text [paper] [code] [Wangchunshu Zhou, Yuchen Eleanor Jiang, Peng Cui, Tiannan Wang, Zhenxin Xiao, Yifan Hou, Ryan Cotterell, Mrinmaya Sachan]

Plot Development

  • Stanford CS224N Custom Project-2023 Novelty: Optimizing StreamingLLM for Novel Plot Generation [paper] [Joyce Chen, Megan Mou]
  • ArXiv-2023 End to End Story Plot Generator [paper] [Hanlin Zhu, Andrew Cohen, Danqing Wang, Kevin Yang, Xiaomeng Yang, Jiantao Jiao, Yuandong Tian]
  • AAAI Workshop-2023 Conveying the Predicted Future to Users: A Case Study of Story Plot Prediction [paper] [Chieh-Yang Huang, Saniya Naphade, Kavya Laalasa Karanam, Ting-Hao 'Kenneth' Huang]
  • RANLP-2023 Coherent Story Generation with Structured Knowledge [paper] [Congda Ma, Kotaro Funakoshi, Kiyoaki Shirai, Manabu Okumura]
  • EMNLP-2022 EtriCA: Event-triggered context-aware story generation augmented by cross attention [paper] [Chen Tang, Chenghua Lin, Henglin Huang, Frank Guerin, Zhihao Zhang]
  • INLG-2022 Plot Writing From Pre-Trained Language Models [paper] [Yiping Jin, Vishakha Kadam, Dittaya Wanvarie]
  • AAAI-2020 Story Realization: Expanding Plot Events into Sentences [paper] [code] [Prithviraj Ammanabrolu, Ethan Tien, Wesley Cheung, Zhaochen Luo, William Ma, Lara J. Martin, Mark O. Riedl]

Better Storytelling

  • ArXiv-2024 With Greater Text Comes Greater Necessity: Inference-Time Training Helps Long Text Generation [paper] [Y. Wang, D. Ma, D. Cai]
  • PAKDD-2024 LongStory: Coherent, Complete and Length Controlled Long story Generation [paper] [Kyeongman Park, Nakyeong Yang, Kyomin Jung]
  • EMNLP Findings-2023 Affective and Dynamic Beam Search for Story Generation [paper] [Tenghao Huang, Ehsan Qasemi, Bangzheng Li, He Wang, Faeze Brahman, Muhao Chen, Snigdha Chaturvedi]
  • EMNLP Findings-2023 GROVE: A Retrieval-augmented Complex Story Generation Framework with A Forest of Evidence [paper] [Zhihua Wen, Zhiliang Tian, Wei Wu, Yuxin Yang, Yanqi Shi, Zhen Huang, Dongsheng Li]
  • ACL-2023 Open-ended Long Text Generation via Masked Language Modeling [paper] [Xiaobo Liang, Zecheng Tang, Juntao Li, Min Zhang]
  • ArXiv-2022 Future Sight: Dynamic Story Generation with Large Pretrained Language Models [paper] [Brian D. Zimmerman, Gaurav Sahu, Olga Vechtomova]
  • ACL Workshop-2022 Coherent Long Text Generation by Contrastive Soft Prompt [paper] [Guandan Chen, Jiashu Pu, Yadong Xi, Rongsheng Zhang]
  • AACL-2022 Improving Chinese Story Generation via Awareness of Syntactic Dependencies and Semantics [paper] [Henglin Huang, Chen Tang, Tyler Loakman, Frank Guerin, Chenghua Lin]
  • AAAI-2022 Generating Coherent Narratives by Learning Dynamic and Discrete Entity States with a Contrastive Framework [paper] [Jian Guan, Zhenyu Yang, Rongsheng Zhang, Zhipeng Hu, Minlie Huang]
  • PhD Thesis-2022 Great Expectations: Unsupervised Inference of Suspense, Surprise and Salience in Storytelling [paper] [David Wilmot]
  • NAACL-2022 Go Back in Time: Generating Flashbacks in Stories with Event Temporal Prompts [paper] [Rujun Han, Hong Chen, Yufei Tian, Nanyun Peng]
  • ACL Findings-2022 Event Transition Planning for Open-ended Text Generation [paper] [Qintong Li, Piji Li, Wei Bi, Zhaochun Ren, Yuxuan Lai, Lingpeng Kong]
  • ICASSP-2022 Clseg: Contrastive learning of story ending generation [paper] [Yuqiang Xie, Yue Hu, Luxi Xing, Yunpeng Li, Wei Peng, Ping Guo]
  • ICML-2022 Towards Coherent and Consistent Use of Entities in Narrative Generation [paper] [Pinelopi Papalampidi, Kris Cao, Tomas Kocisky]
  • EMNLP Findings-2021 Guiding Neural Story Generation with Reader Models [paper] [Xiangyu Peng, Kaige Xie, Amal Alabdulkarim, Harshith Kayam, Samihan Dani, Mark O. Riedl]
  • ArXiv-2021 Goal-Directed Story Generation: Augmenting Generative Language Models with Reinforcement Learning [paper] [Amal Alabdulkarim, Winston Li, Lara J. Martin, Mark O. Riedl]
  • ArXiv-2021 Automated Story Generation as Question-Answering [paper] [Louis Castricato, Spencer Frazier, Jonathan Balloch, Nitya Tarakad, Mark Riedl]
  • ACL-2021 Long text generation by modeling sentence-level and discourse-level coherence [paper] [Jian Guan, Xiaoxi Mao, Changjie Fan, Zitao Liu, Wenbiao Ding, Minlie Huang]
  • AACL-2020 Cue Me In: Content-Inducing Approaches to Interactive Story Generation [paper] [Faeze Brahman, Alexandru Petrusca, Snigdha Chaturvedi]

Story Character

  • FDG-2024 StoryVerse: Towards Co-authoring Dynamic Plot with LLM-based Character Simulation via Narrative Planning [paper] [Yi Wang, Qian Zhou, David Ledo]
  • ArXiv-2024 Large Language Models Fall Short: Understanding Complex Relationships in Detective Narratives [paper] [Runcong Zhao, Qinglin Zhu, Hainiu Xu, Jiazheng Li, Yuxiang Zhou, Yulan He, Lin Gui]
  • EMNLP-2022 Towards Inter-character Relationship-driven Story Generation [paper] [Anvesh Rao Vijjini, Faeze Brahman, Snigdha Chaturvedi]
  • COLING-2022 CHAE: Fine-Grained Controllable Story Generation with Characters, Actions and Emotions [paper] [Xinpeng Wang, Han Jiang, Zhihua Wei, Shanlin Zhou]
  • ArXiv-2022 A Benchmark for Understanding and Generating Dialogue between Characters in Stories [paper] [Jianzhu Yao, Ziqi Liu, Jian Guan, Minlie Huang]
  • ECML/PKDD-2022 An Ion Exchange Mechanism Inspired Story Ending Generator for Different Characters [paper] [Xinyu Jiang, Qi Zhang, Chongyang Shi, Kaiying Jiang, Liang Hu, Shoujin Wang]
  • NAACL-2022 Persona-Guided Planning for Controlling the Protagonist’s Persona in Story Generation [paper] [code] [Zhexin Zhang, Jiaxin Wen, Jian Guan, Minlie Huang]
  • ACL-2021 Unsupervised Enrichment of Persona-grounded Dialog with Background Stories [paper] [Bodhisattwa Prasad Majumder, Taylor Berg-Kirkpatrick, Julian McAuley, Harsh Jhamtani]
  • SIGDIAL-2021 Telling Stories through Multi-User Dialogue by Modeling Character Relations [paper] [Wai Man Si, Prithviraj Ammanabrolu, Mark O. Riedl]

Writing Style

  • ArXiv-2024 CAT-LLM: Prompting Large Language Models with Text Style Definition for Chinese Article-style Transfer [paper] [Zhen Tao, Dinghao Xi, Zhiyu Li, Liumin Tang, Wei Xu]
  • ArXiv-2023 Learning to Generate Text in Arbitrary Writing Styles [paper] [Aleem Khan, Andrew Wang, Sophia Hager, Nicholas Andrews]
  • ACL-2023 StoryTrans: Non-Parallel Story Author-Style Transfer with Discourse Representations and Content Enhancing [paper] [Xuekai Zhu, Jian Guan, Minlie Huang, Juan Liu]
  • ACL-2021 Stylized story generation with style-guided planning [paper] [Xiangzhe Kong, Jialiang Huang, Ziquan Tung, Jian Guan, Minlie Huang]
  • ACL-2020 Story-level Text Style Transfer: A Proposal [paper] [Yusu Qian]

Story Planning

  • ArXiv-2024 Navigating the Path of Writing: Outline-guided Text Generation with Large Language Models [paper] [Yukyung Lee, Soonwon Ka, Bokyung Son, Pilsung Kang, Jaewook Kang]
  • EMNLP Findings-2023 Improving Pacing in Long-Form Story Planning [paper] [Yichen Wang, Kevin Yang, Xiaoming Liu, Dan Klein]
  • ArXiv-2023 EIPE-text: Evaluation-Guided Iterative Plan Extraction for Long-Form Narrative Text Generation [paper] [Wang You, Wenshan Wu, Yaobo Liang, Shaoguang Mao, Chenfei Wu, Maosong Cao, Yuzhe Cai, Yiduo Guo, Yan Xia, Furu Wei, Nan Duan]
  • ArXiv-2023 RLCD: Reinforcement Learning from Contrast Distillation for Language Model Alignment [paper] [Kevin Yang, Dan Klein, Asli Celikyilmaz, Nanyun Peng, Yuandong Tian]
  • ArXiv-2023 Enhancing Generation through Summarization Duality and Explicit Outline Control [paper] [Yunzhe Li, Qian Chen, Weixiang Yan, Wen Wang, Qinglin Zhang, Hari Sundaram]
  • ArXiv-2022 Little Red Riding Hood Goes Around the Globe:Crosslingual Story Planning and Generation with Large Language Models [paper] [Evgeniia Razumovskaia, Joshua Maynez, Annie Louis, Mirella Lapata, Shashi Narayan]
  • ACL-2023 DOC: Improving Long Story Coherence With Detailed Outline Control [paper] [code] [Kevin Yang, Dan Klein, Nanyun Peng, Yuandong Tian]
  • ArXiv-2022 Neural Story Planning [paper] [Anbang Ye, Christopher Cui, Taiwei Shi, Mark O. Riedl]
  • EMNLP-2022 Re3: Generating longer stories with recursive reprompting and revision [paper] [Kevin Yang, Yuandong Tian, Nanyun Peng, Dan Klein]
  • AAAI-2021 Narrative Plan Generation with Self-Supervised Learning [paper] [Mihai Polceanu, Julie Porteous, Alan Lindsay, Marc Cavazza]
  • INLG-2021 GraphPlan: Story Generation by Planning with Event Graph [paper] [Hong Chen, Raphael Shu, Hiroya Takamura, Hideki Nakayama]
  • EMNLP-2020 Content Planning for Neural Story Generation with Aristotelian Rescoring [paper] [Seraphina Goldfarb-Tarrant, Tuhin Chakrabarty, Ralph Weischedel, Nanyun Peng]
  • AAAI-2020 Draft and Edit: Automatic Storytelling Through Multi-Pass Hierarchical Conditional Variational Autoencoder [paper] [Meng-Hsuan Yu, Juntao Li, Danyang Liu, Dongyan Zhao, Rui Yan, Bo Tang, Haisong Zhang]
  • ACL-2019 Strategies for Structuring Story Generation [paper] [Angela Fan, Mike Lewis, Yann Dauphin]
  • AAAI-2019 Plan-And-Write: Towards Better Automatic Storytelling [paper] [code] [Lili Yao, Nanyun Peng, Ralph Weischedel, Kevin Knight, Dongyan Zhao, Rui Yan]
  • EMNLP-2018 A Skeleton-Based Model for Promoting Coherence Among Sentences in Narrative Story Generation [paper] [code] [Jingjing Xu, Xuancheng Ren, Yi Zhang, Qi Zeng, Xiaoyan Cai, Xu Sun]
  • ACL-2018 Hierarchical Neural Story Generation [paper] [code] [writing prompt] [Angela Fan, Mike Lewis, Yann Dauphin]
  • AAAI-2018 Event Representations for Automated Story Generation with Deep Neural Nets [paper] [code] [Lara J. Martin, Prithviraj Ammanabrolu, Xinyu Wang, William Hancock, Shruti Singh, Brent Harrison, Mark O. Riedl]

Controllable Story

  • ACL-2024 MoPS: Modular Story Premise Synthesis for Open-Ended Automatic Story Generation [paper] [code] [Yan Ma, Yu Qiao, Pengfei Liu]
  • ArXiv-2024 Returning to the Start: Generating Narratives with Related Endpoints [paper] [code] [Anneliese Brei, Chao Zhao, Snigdha Chaturvedi]
  • ArXiv-2024 LiFi: Lightweight Controlled Text Generation with Fine-Grained Control Codes [paper] [Chufan Shi, Deng Cai, Yujiu Yang]
  • INLG-2023 Controlling keywords and their positions in text generation [paper] [Yuichi Sasazawa, Terufumi Morishita, Hiroaki Ozaki, Osamu Imaichi, Yasuhiro Sogawa]
  • COLING-2022 Psychology-guided Controllable Story Generation [paper] [Yuqiang Xie, Yue Hu, Yunpeng Li, Guanqun Bi, Luxi Xing, Wei Peng]
  • WWW-2022 Genre-controllable story generation via supervised contrastive learning [paper] [JinUk Cho, MinSu Jeong, JinYeong Bak, Yun-Gyung Cheong]
  • EMNLP Findings-2021 A Plug-and-Play Method for Controlled Text Generation [paper] [code] [Damian Pascual, Beni Egressy, Clara Meister, Ryan Cotterell, Roger Wattenhofer]
  • NUSE-2021 Plug-and-Blend: A Framework for Controllable Story Generation with Blended Control Codes [paper] [code] [Zhiyu Lin, Mark Riedl]
  • ArXiv-2021 Transformer-based Conditional Variational Autoencoder for Controllable Story Generation [paper] [code] [Le Fang, Tao Zeng, Chaochun Liu, Liefeng Bo, Wen Dong, Changyou Chen]
  • ArXiv-2021 Outline to Story: Fine-grained Controllable Story Generation from Cascaded Events [paper] [Le Fang, Tao Zeng, Chaochun Liu, Liefeng Bo, Wen Dong, Changyou Chen]
  • EMNLP-2020 MEGATRON-CNTRL: Controllable story generation with external knowledge using large-scale language models [paper] [Peng Xu, Mostofa Patwary, Mohammad Shoeybi, Raul Puri, Pascale Fung, Anima Anandkumar, Bryan Catanzaro]
  • ACL-2019 Learning to Control the Fine-grained Sentiment for Story Ending Generation [paper] [Fuli Luo, Damai Dai, Pengcheng Yang, Tianyu Liu, Baobao Chang, Zhifang Sui, Xu Sun]
  • IJCAI-2019 Controllable Neural Story Plot Generation via Reward Shaping [paper] [Pradyumna Tambwekar, Murtaza Dhuliawala, Lara J. Martin, Animesh Mehta, Brent Harrison, Mark O. Riedl]
  • ACL-2018 Towards Controllable Story Generation [paper] [Nanyun Peng, Marjan Ghazvininejad, Jonathan May, Kevin Knight]

Reasonable Story

  • SIGIR-2022 What makes the story forward? inferring commonsense explanations as prompts for future event generation [paper] [Li Lin, Yixin Cao, Lifu Huang, Shu'ang Li, Xuming Hu, Lijie Wen, Jianmin Wang]
  • EMNLP Findings-2022 Inferring the Reader: Guiding Automated Story Generation with Commonsense Reasoning [paper] [Xiangyu Peng, Siyan Li, Sarah Wiegreffe, Mark Riedl]
  • AAAI-2021 Automated Storytelling via Causal, Commonsense Plot Ordering [paper] [Prithviraj Ammanabrolu, Wesley Cheung, William Broniec, Mark O. Riedl]
  • AIIDE-2020 Bringing Stories Alive: Generating Interactive Fiction Worlds [paper] [code] [Prithviraj Ammanabrolu, Wesley Cheung, Dan Tu, William Broniec, Mark O. Riedl]
  • TACL-2020 A Knowledge-Enhanced Pretraining Model for Commonsense Story Generation [paper] [Jian Guan, Fei Huang, Zhihao Zhao, Xiaoyan Zhu, Minlie Huang]
  • EMNLP-2020 Improving Neural Story Generation by Targeted Common Sense Grounding [paper] [code] [Huanru Henry Mao, Bodhisattwa Prasad Majumder, Julian McAuley, Garrison W. Cottrell]
  • AAAI-2019 Story Ending Generation with Incremental Encoding and Commonsense Knowledge [paper] [Jian Guan, Yansen Wang, Minlie Huang]

Benchmark

Evaluation

  • TACL-2024 Do Language Models Enjoy Their Own Stories? Prompting Large Language Models for Automatic Story Evaluation [paper] [Cyril Chhun, Fabian M. Suchanek, Chloé Clavel]
  • Arxiv-2024 Reading Subtext: Evaluating Large Language Models on Short Story Summarization with Writers [paper] [Melanie Subbiah, Sean Zhang, Lydia B. Chilton, Kathleen McKeown]
  • ArXiv-2023 Experimental Narratives: A Comparison of Human Crowdsourced Storytelling and AI Storytelling [paper] [Nina Begus]
  • ArXiv-2023 Learning Personalized Story Evaluation [paper] [Danqing Wang, Kevin Yang, Hanlin Zhu, Xiaomeng Yang, Andrew Cohen, Lei Li, Yuandong Tian]
  • ArXiv-2023 BooookScore: A systematic exploration of book-length summarization in the era of LLMs[paper][Yapei Chang, Kyle Lo, Tanya Goyal, Mohit Iyyer]
  • ArXiv-2023 TIGERScore: Towards Building Explainable Metric for All Text Generation Tasks[paper][Dongfu Jiang, Yishan Li, Ge Zhang, Wenhao Huang, Bill Yuchen Lin, Wenhu Chen]
  • CHI-2023 Art or Artifice? Large Language Models and the False Promise of Creativity [paper] [Tuhin Chakrabarty, Philippe Laban, Divyansh Agarwal, Smaranda Muresan, Chien-Sheng Wu]
  • ACL-2023 HAUSER: Towards Holistic and Automatic Evaluation of Simile Generation [paper] [Qianyu He, Yikai Zhang, Jiaqing Liang, Yuncheng Huang, Yanghua Xiao, Yunwen Chen]
  • ACL-2023 Can Large Language Models Be an Alternative to Human Evaluations? [paper] [Cheng-Han Chiang, Hung-yi Lee]
  • ArXiv-2023 DeltaScore: Evaluating Story Generation with Differentiating Perturbations [paper] [Zhuohan Xie, Miao Li, Trevor Cohn, Jey Han Lau]
  • INLG-2023 The Next Chapter: A Study of Large Language Models in Storytelling [paper] [Zhuohan Xie, Trevor Cohn, Jey Han Lau]
  • IEEE Access-2023 Comparison of Evaluation Metrics for Short Story Generation [paper] [P. Netisopakul, Usanisa Taoto]
  • EMNLP-2022 StoryER: Automatic Story Evaluation via Ranking, Rating and Reasoning [paper] [Hong Chen, Duc Minh Vo, Hiroya Takamura, Yusuke Miyao, Hideki Nakayama]
  • COLING-2022 Of Human Criteria and Automatic Metrics: A Benchmark of the Evaluation of Story Generation [paper] [Cyril Chhun, Pierre Colombo, Chloé Clavel, Fabian M. Suchanek]
  • TACL-2022 LOT: A story-centric benchmark for evaluating Chinese long text understanding and generation [paper] [Jian Guan, Zhuoer Feng, Yamei Chen, Ruilin He, Xiaoxi Mao, Changjie Fan, Minlie Huang]
  • ACL-2021 Openmeva: A benchmark for evaluating open-ended story generation metrics [paper] [Jian Guan, Zhexin Zhang, Zhuoer Feng, Zitao Liu, Wenbiao Ding, Xiaoxi Mao, Changjie Fan, Minlie Huang]
  • EMNLP-2020 Union: An unreferenced metric for evaluating open-ended story generation [paper] [code] [Jian Guan, Minlie Huang]
  • CoNLL-2019 Do Massively Pretrained Language Models Make Better Storytellers? [paper] [code] [Abigail See, Aneesh Pappu, Rohun Saxena, Akhila Yerukola, Christopher D. Manning]
  • NAACL-2016 A Corpus and Evaluation Framework for Deeper Understanding of Commonsense Stories [paper] [Nasrin Mostafazadeh, Nathanael Chambers, Xiaodong He, Devi Parikh, Dhruv Batra, Lucy Vanderwende, Pushmeet Kohli, James Allen]

Dataset

  • ArXiv-2024 CollabStory: Multi-LLM Collaborative Story Generation and Authorship Analysis [paper] [Saranya Venkatraman, Nafis Irtiza Tripto, Dongwon Lee]
  • IREC-COLING-2024 Reflections & Resonance: Two-Agent Partnership for Advancing LLM-based Story Annotation [paper] [Yuetian Chen, Mei Si]
  • ArXiv-2024 CMDAG: A Chinese Metaphor Dataset with Annotated Grounds as CoT for Boosting Metaphor Generation [paper] [Yujie Shao, Xinrong Yao, Xingwei Qu, Chenghua Lin, Shi Wang, Stephen W. Huang, Ge Zhang, Jie Fu]
  • ArXiv-2023 STONYBOOK: A System and Resource for Large-Scale Analysis of Novels [paper] [Charuta Pethe, Allen Kim, Rajesh Prabhakar, Tanzir Pial, Steven Skiena]
  • ACL-2023 StoryWars: A Dataset and Instruction Tuning Baselines for Collaborative Story Understanding and Generation [paper] [Yulun Du, Lydia Chilton]
  • TACL-2023 PASTA: A Dataset for Modeling Participant States in Narratives [paper] [Sayontan Ghosh, Mahnaz Koupaee, Isabella Chen, Francis Ferraro, Nathanael Chambers, Niranjan Balasubramanian]
  • NAACL-2022 A corpus for understanding and generating moral stories [paper] [Jian Guan, Ziqi Liu, Minlie Huang]
  • EVAL4NLP-2021 StoryDB: Broad Multi-language Narrative Dataset [paper] [Alexey Tikhonov, Igor Samenko, Ivan P. Yamshchikov]
  • ACL-2022 SummScreen: A Dataset for Abstractive Screenplay Summarization [paper] [data] [Mingda Chen, Zewei Chu, Sam Wiseman, Kevin Gimpel]
  • Arxiv-2021 TVStoryGen: A Dataset for Generating Stories with Character Descriptions [paper] [Mingda Chen, Kevin Gimpel]
  • EMNLP-2020 STORIUM: A Dataset and Evaluation Platform for Machine-in-the-Loop Story Generation [paper] [Nader Akoury, Shufan Wang, Josh Whiting, Stephen Hood, Nanyun Peng, Mohit Iyyer]

Others

Click to view details of other related papers:
  • ArXiv-2024 Ai.llude: Encouraging Rewriting AI-Generated Text to Support Creative Expression [paper] [David Zhou, Sarah Sterman]
  • ArXiv-2024 Word2World: Generating Stories and Worlds through Large Language Models [paper] [code] [Muhammad U. Nasir, Steven James, Julian Togelius]
  • ArXiv-2024 Let Storytelling Tell Vivid Stories: An Expressive and Fluent Multimodal Storyteller [paper] [Chuanqi Zang, Jiji Tang, Rongsheng Zhang, Zeng Zhao, Tangjie Lv, Mingtao Pei, Wei Liang]
  • CHI-2024 Shaping Human-AI Collaboration: Varied Scaffolding Levels in Co-writing with Language Models [paper] [Paramveer S. Dhillon, Somayeh Molaei, Jiaqi Li, Maximilian Golub, Shaochun Zheng, Lionel P. Robert]
  • Arxiv-2024 GhostWriter: Augmenting Collaborative Human-AI Writing Experiences Through Personalization and Agency [paper] [Catherine Yeh, Gonzalo Ramos, Rachel Ng, Andy Huntington, Richard Banks]
  • ArXiv-2023 Inspo: Writing Stories with a Flock of AIs and Humans [paper] [Chieh-Yang Huang, Sanjana Gautam, Shannon McClellan Brooks, Ya-Fang Lin, Ting-Hao 'Kenneth' Huang]
  • AAAI-2023 SceneCraft: Automating Interactive Narrative Scene Generation in Digital Games with Large Language Models [paper] [Vikram Kumaran, Jonathan Rowe, Bradford Mott, James Lester]
  • ArXiv-2023 PEARL: Personalizing Large Language Model Writing Assistants with Generation-Calibrated Retrievers [paper] [Sheshera Mysore, Zhuoran Lu, Mengting Wan, Longqi Yang, Steve Menezes, Tina Baghaee, Emmanuel Barajas Gonzalez, Jennifer Neville, Tara Safavi]
  • EMNLP Findings-2023 Are NLP Models Good at Tracing Thoughts: An Overview of Narrative Understanding [paper] [Lixing Zhu, Runcong Zhao, Lin Gui, Yulan He]
  • CoNLL Workshop-2023 BabyStories: Can Reinforcement Learning Teach Baby Language Models to Write Better Stories? [paper] [Xingmeng Zhao, Tongnian Wang, Sheri Osborn, Anthony Rios]
  • ArXiv-2023 Creativity Support in the Age of Large Language Models: An Empirical Study Involving Emerging Writers [paper] [Tuhin Chakrabarty, Vishakh Padmakumar, Faeze Brahman, Smaranda Muresan]
  • UIST-2023 Storyfier: Exploring Vocabulary Learning Support with Text Generation Models [paper] [Zhenhui Peng, Xingbo Wang, Qiushi Han, Junkai Zhu, Xiaojuan Ma, Huamin Qu]
  • PACLIC-2023 Generating Character Lines in Four-Panel Manga [paper] [Michimasa Inaba]
  • ArXiv-2022 Creative Writing with an AI-Powered Writing Assistant: Perspectives from Professional Writers [paper] [Daphne Ippolito, Ann Yuan, Andy Coenen, Sehmon Burnam]
  • ArXiv-2022 Survey: Automatic Movie Plot and Script Generation [paper] [Prerak Gandhi, Pushpak Bhattacharyya]
  • CHI-2022 TaleBrush: Sketching Stories with Generative Pretrained Language Models [paper] [John Joon Young Chung, Wooseok Kim, Kang Min Yoo, Hwaran Lee, Eytan Adar, Minsuk Chang]
  • EMNLP-2022 Help me write a poem: Instruction Tuning as a Vehicle for Collaborative Poetry Writing [paper] [Tuhin Chakrabarty, Vishakh Padmakumar, He He]
  • CHI-2023 Co-Writing Screenplays and Theatre Scripts with Language Models: An Evaluation by Industry Professionals [paper] [Piotr Mirowski, Kory W. Mathewson, Jaylen Pittman, Richard Evans]
  • NeurIPS-2022 Factuality Enhanced Language Models for Open-Ended Text Generation [paper] [Nayeon Lee, Wei Ping, Peng Xu, Mostofa Patwary, Mohammad Shoeybi, Bryan Catanzaro]
  • FDG-2022 TropeTwist: Trope-based Narrative Structure Generation [paper] [Alberto Alvarez, Jose Font]
  • IUI-2022 Wordcraft: Story Writing With Large Language Models [paper] [Ann Yuan, Andy Coenen, Emily Reif, Daphne Ippolito]
  • ACM Computing Surveys-2023 A Survey of Controllable Text Generation Using Transformer-based Pre-trained Language Models [paper] [Hanqing Zhang, Haolin Song, Shaoyu Li, Ming Zhou, Dawei Song]
  • ACL-IJCNLP-2021 KuiLeiXi: a Chinese Open-Ended Text Adventure Game [paper] [Heng Ji, Jong C. Park, Rui Xia]
  • IJCAI AI4Narratives-2020 THEaiTRE: Artificial Intelligence to Write a Theatre Play [paper] [Rudolf Rosa, Ondřej Dušek, Tom Kocmi, David Mareček, Tomáš Musil, Patrícia Schmidtová, Dominik Jurko, Ondřej Bojar, Daniel Hrbek, David Košťák, Martina Kinská, Josef Doležal, Klára Vosecká]
  • ICCC-2020 Toward Automated Quest Generation in Text-Adventure Games [paper] [Prithviraj Ammanabrolu, William Broniec, Alex Mueller, Jeremy Paul, Mark O. Riedl]

Public Resources

  • Understanding AI for Stories serves as a survey blog that delves into the application of AI in the realm of story generation, shedding light on its potential as well as the challenges that it encounters.
  • ROC Stories is a compilation of 100,000 five-sentence stories and 3,742 Story Cloze Test stories, capturing a rich array of causal and temporal commonsense connections between everyday events, making it suitable for story generation tasks.
  • CommonGen was developed by combining crowdsourced and existing caption corpora, containing 79k commonsense descriptions across 35k distinct concept-sets.
  • CMU Movie Summary Corpus offers access to a dataset containing movie plot summaries and related metadata.
  • Scifi TV Show Plot Summaries & Events is a collection of plot synopses for long-running (80+ episodes) science fiction TV shows, sourced from Fandom.com wikis.

Star History Chart