Search Results for author: Dominik Stammbach

Found 17 papers, 7 papers with code

Evidence Selection as a Token-Level Prediction Task

1 code implementation EMNLP (FEVER) 2021 Dominik Stammbach

In Automated Claim Verification, we retrieve evidence from a knowledge base to determine the veracity of a claim.

Claim Verification Evidence Selection +3

Translating Legalese: Enhancing Public Understanding of Court Opinions with Legal Summarizers

no code implementations11 Nov 2023 Elliott Ash, Aniket Kesari, Suresh Naidu, Lena Song, Dominik Stammbach

Judicial opinions are written to be persuasive and could build public trust in court decisions, yet they can be difficult for non-experts to understand.

The Law and NLP: Bridging Disciplinary Disconnects

no code implementations22 Oct 2023 Robert Mahari, Dominik Stammbach, Elliott Ash, Alex 'Sandy' Pentland

Legal practice is intrinsically rooted in the fabric of language, yet legal practitioners and scholars have been slow to adopt tools from natural language processing (NLP).

Position

Paradigm Shift in Sustainability Disclosure Analysis: Empowering Stakeholders with CHATREPORT, a Language Model-Based Tool

no code implementations27 Jun 2023 Jingwei Ni, Julia Bingler, Chiara Colesanti-Senni, Mathias Kraus, Glen Gostlow, Tobias Schimanski, Dominik Stammbach, Saeid Ashraf Vaghefi, Qian Wang, Nicolas Webersinke, Tobias Wekhof, Tingyu Yu, Markus Leippold

This paper introduces a novel approach to enhance Large Language Models (LLMs) with expert knowledge to automate the analysis of corporate sustainability reports by benchmarking them against the Task Force for Climate-Related Financial Disclosures (TCFD) recommendations.

Benchmarking Language Modelling

Legal Extractive Summarization of U.S. Court Opinions

1 code implementation15 May 2023 Emmanuel Bauer, Dominik Stammbach, Nianlong Gu, Elliott Ash

This paper tackles the task of legal extractive summarization using a dataset of 430K U. S. court opinions with key passages annotated.

Extractive Summarization reinforcement-learning

Enhancing Large Language Models with Climate Resources

no code implementations31 Mar 2023 Mathias Kraus, Julia Anna Bingler, Markus Leippold, Tobias Schimanski, Chiara Colesanti Senni, Dominik Stammbach, Saeid Ashraf Vaghefi, Nicolas Webersinke

Large language models (LLMs) have significantly transformed the landscape of artificial intelligence by demonstrating their ability in generating human-like text across diverse topics.

Environmental Claim Detection

1 code implementation1 Sep 2022 Dominik Stammbach, Nicolas Webersinke, Julia Anna Bingler, Mathias Kraus, Markus Leippold

To transition to a green economy, environmental claims made by companies must be reliable, comparable, and verifiable.

Heroes, Villains, and Victims, and GPT-3: Automated Extraction of Character Roles Without Training Data

no code implementations NAACL (WNU) 2022 Dominik Stammbach, Maria Antoniak, Elliott Ash

This paper shows how to use large-scale pre-trained language models to extract character roles from narrative texts without training data.

Question Answering

The Choice of Knowledge Base in Automated Claim Checking

no code implementations15 Nov 2021 Dominik Stammbach, Boya Zhang, Elliott Ash

Automated claim checking is the task of determining the veracity of a claim given evidence found in a knowledge base of trustworthy facts.

DocSCAN: Unsupervised Text Classification via Learning from Neighbors

1 code implementation KONVENS (WS) 2022 Dominik Stammbach, Elliott Ash

We introduce DocSCAN, a completely unsupervised text classification approach using Semantic Clustering by Adopting Nearest-Neighbors (SCAN).

Clustering General Classification +5

Team DOMLIN: Exploiting Evidence Enhancement for the FEVER Shared Task

no code implementations WS 2019 Dominik Stammbach, Guenter Neumann

This paper contains our system description for the second Fact Extraction and VERification (FEVER) challenge.

Retrieval Sentence

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