Papers by Abraham Israeli

4 papers
DiaSet: An Annotated Dataset of Arabic Conversations (2024.lrec-main)

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Challenge: DiaSet is a dataset of dialectical Arabic speech manually transcribed and annotated for two downstream tasks.
Approach: They propose to manually transcribe and annotate Arabic speech for sentiment analysis and named entity recognition.
Outcome: The proposed dataset encapsulates the Palestine dialect, predominantly spoken in Palestine, Israel, and Jordan.
Real or Robotic? Assessing Whether LLMs Accurately Simulate Qualities of Human Responses in Human-LLM Dialogue (2026.findings-acl)

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Challenge: Recent work has sought to use large language models to simulate human-human and human-LLM interactions.
Approach: They use a large-scale dataset to generate a paired LLM-LLM and human-LLm dialogues from the WildChat dataset and quantify how well they align with their human counterparts.
Outcome: The proposed models perform similarly in simulating English, Chinese, and Russian dialogues.
The Million Authors Corpus: A Cross-Lingual and Cross-Domain Wikipedia Dataset for Authorship Verification (2025.findings-acl)

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Challenge: Authorship verification (AV) is a crucial task for identity verification, accountlinking, historical linguistics, and AI-generated text identification.
Approach: They propose to use Wikipedia's Million Authors Corpus to examine authorship verification models on a broad scale.
Outcome: The proposed dataset includes 60.08M textual chunks, contributed by 1.29M Wikipedia authors.
Causally Modeling the Linguistic and Social Factors that Predict Email Response (2025.naacl-long)

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Challenge: a key intent behind many emails is to get a reply from the recipient.
Approach: They propose to model the intents, expectations, and responsiveness in email exchanges by using a dataset containing 1800 emails annotated with nuanced types of intents and expectations.
Outcome: The proposed model is based on 1800 emails annotated with nuanced types of intents and expectations . it shows that social status, argumentation, and strength of social connection influence email response rates .

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