A Computational Approach to Measure Empathy and Theory-of-Mind from Written Texts
Yoon Kyung Lee, Inju Lee, Jae Eun Park, Yoonwon Jung, Jiwon Kim, Sowon, Hahn

TL;DR
This paper introduces ToM-Diary, a large annotated Korean text dataset, and evaluates transformer models like BERT for measuring theory-of-mind levels to advance computational empathy assessment.
Contribution
It provides a new large-scale dataset with ToM annotations and demonstrates the potential of NLP models to quantify perspective-taking in written texts.
Findings
BERT better detects self-focused sentences than other-focused ones
High ToM level sentences are more challenging for models to predict
The dataset enables large-scale analysis of empathy and perspective-taking
Abstract
Theory-of-mind (ToM), a human ability to infer the intentions and thoughts of others, is an essential part of empathetic experiences. We provide here the framework for using NLP models to measure ToM expressed in written texts. For this purpose, we introduce ToM-Diary, a crowdsourced 18,238 diaries with 74,014 Korean sentences annotated with different ToM levels. Each diary was annotated with ToM levels by trained psychology students and reviewed by selected psychology experts. The annotators first divided the diaries based on whether they mentioned other people: self-focused and other-focused. Examples of self-focused sentences are "I am feeling good". The other-focused sentences were further classified into different levels. These levels differ by whether the writer 1) mentions the presence of others without inferring their mental state(e.g., I saw a man walking down the street), 2)…
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Taxonomy
TopicsTopic Modeling · Misinformation and Its Impacts · Advanced Text Analysis Techniques
MethodsMulti-Head Attention · Attention Is All You Need · Attention Model · Linear Layer · Dense Connections · Layer Normalization · Linear Warmup With Linear Decay · Dropout · Softmax · Weight Decay
