Papers by Sarah Li

8 papers
Tell, Don’t Show: Leveraging Language Models’ Abstractive Retellings to Model Literary Themes (2025.findings-acl)

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Challenge: Literature challenges traditional bag-of-words approaches for topic modeling because narrative language focuses on immersive sensory details instead of abstractive description or exposition.
Approach: They propose a topic modeling approach that prompts generative language models to *tell* what passages *show*, thereby translating narratives’ surface forms into higher-level concepts and themes.
Outcome: The proposed model can translate narratives’ surface forms into higher-level concepts and themes than by running LDA alone or directly asking LMs to list topics.
Inferring the Reader: Guiding Automated Story Generation with Commonsense Reasoning (2022.findings-emnlp)

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Challenge: Existing methods to automate story generation focus on single-character stories and lack basiccommonsense reasoning.
Approach: They propose a commonsense-inference Augmentedneural StoryTelling framework that introduces commonsensical reasoning into the story generation process.
Outcome: The proposed method produces significantly more coherent, on-topic, enjoyable andfluent stories than existing models in both the single-character and two-character settings.
Can Third Parties Read Our Emotions? (2025.acl-long)

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Challenge: Existing approaches to infer author’s private states from written text have relied heavily on datasets annotated by third-party annotators.
Approach: They propose a framework for evaluating the limitations of third-party annotations and call for refined annotation practices to accurately represent and model authors’ private states.
Outcome: The proposed methods outperform human annotators on emotion recognition tasks.
mRAKL: Multilingual Retrieval-Augmented Knowledge Graph Construction for Low-Resourced Languages (2025.findings-acl)

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Challenge: Knowledge Graphs are structured multirelational graphs that store factual knowledge.
Approach: They introduce a Retrieval-Augmented Generation (mRAKL) based system to perform mKGC.
Outcome: The proposed approach improves over a no-context setting with an idealized retrieval system.
Microblog Conversation Recommendation via Joint Modeling of Topics and Discourse (N18-1)

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Challenge: Existing methods for recommendation focus on content of individual posts, but we exploit both context and user content and behavior preferences.
Approach: They propose a method that captures conversational context and user content and behavior preferences.
Outcome: The proposed method outperforms methods that only model content without considering discourse on two Twitter datasets.
Editing Common Sense in Transformers (2023.emnlp-main)

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Challenge: Currently, the performance of transformer-based model editing methods is limited to statements about encyclopedic knowledge with a single correct answer.
Approach: They propose to improve MEMIT's model editing algorithm by varying edit tokens and improving the layer selection strategy to improve commonsense knowledge.
Outcome: The MEMIT editing algorithm outperforms baseline models on PEP3k and 20Q datasets while fine-tuning baselines shows significant trade-offs.
Your Stereotypical Mileage May Vary: Practical Challenges of Evaluating Biases in Multiple Languages and Cultural Contexts (2024.lrec-main)

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Challenge: Recent studies have identified a gap in the availability of tools and resources to study bias in languages other than English and social contexts outside the north of America.
Approach: They use stereotypes to build a corpus of sentence pairs that cover biases in seven cultural contexts.
Outcome: The proposed resource covers a wide range of languages and cultural settings . it favors sentences that express stereotypes in most bias categories .
Understand User Opinions of Large Language Models via LLM-Powered In-the-Moment User Experience Interviews (2025.findings-acl)

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Challenge: Existing large language models (LLMs) are difficult to evaluate and often lack the ability to capture user opinions.
Approach: They propose an LLM-powered interviewer that conducts in-the-moment user experience interviews right after users interact with LLMs and automatically gathers insights about user opinions from massive interview logs.
Outcome: The proposed interviewer captures interesting user opinions, e.g., bipolar views on the displayed reasoning process of DeepSeek-R1 and demands for information freshness and multi-modality.

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