Quoted companies are requested to periodically publish financial reports in textual form. The annual financial reports typically include detailed financial and business information, thus giving relevant insights into company outlooks. However, a manual exploration of these financial reports could be very time consuming since most of the available information can be deemed as non-informative or redundant by expert readers. Hence, an increasing research interest has been devoted to automatically extracting domain-specific summaries, which include only the most relevant information. This paper describes the SumTO system architecture, which addresses the Shared Task of the Financial Narrative Summarisation (FNS) 2020 contest. The main task obje...
Large scale financial narrative processing for UK annual reports has only become possible in the las...
Data-driven approaches to sequence-to-sequence modelling have been successfully applied to short tex...
This work proposes a trainable system for summarizing news and obtaining an approximate argumentati...
In this paper we show the results of our participation in the FNS 2021 shared task. In our work we p...
International audienceThe present work aims to develop a text summarisation system for financial tex...
Financial reports include a lot of useful information for investors, but extracting this information...
This paper presents the results and findings of the Financial Narrative Summarisation Shared Task on...
This paper presents the results and findings of the Financial Narrative Summarisation Shared Task on...
This project explores extractive text summarization using the capabilities of Deep Learning. The goa...
This paper describes the HTAC system submitted to the Financial Narrative Summarization Shared Task ...
Extractive text summarization involves selecting and combining key sentences directly from the origi...
Major text summarization research is mainly focusing on summarizing short documents and very few wor...
This paper presents the results and findings of the Financial Narrative Summarisation shared task (F...
Welcome to the 1st Joint Workshop on financial Narrative Processing and MultiLing financial Summaris...
peer reviewedObtaining large-scale and high-quality training data for multi-document summarization (...
Large scale financial narrative processing for UK annual reports has only become possible in the las...
Data-driven approaches to sequence-to-sequence modelling have been successfully applied to short tex...
This work proposes a trainable system for summarizing news and obtaining an approximate argumentati...
In this paper we show the results of our participation in the FNS 2021 shared task. In our work we p...
International audienceThe present work aims to develop a text summarisation system for financial tex...
Financial reports include a lot of useful information for investors, but extracting this information...
This paper presents the results and findings of the Financial Narrative Summarisation Shared Task on...
This paper presents the results and findings of the Financial Narrative Summarisation Shared Task on...
This project explores extractive text summarization using the capabilities of Deep Learning. The goa...
This paper describes the HTAC system submitted to the Financial Narrative Summarization Shared Task ...
Extractive text summarization involves selecting and combining key sentences directly from the origi...
Major text summarization research is mainly focusing on summarizing short documents and very few wor...
This paper presents the results and findings of the Financial Narrative Summarisation shared task (F...
Welcome to the 1st Joint Workshop on financial Narrative Processing and MultiLing financial Summaris...
peer reviewedObtaining large-scale and high-quality training data for multi-document summarization (...
Large scale financial narrative processing for UK annual reports has only become possible in the las...
Data-driven approaches to sequence-to-sequence modelling have been successfully applied to short tex...
This work proposes a trainable system for summarizing news and obtaining an approximate argumentati...