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Challenges in Abstractive Citation Text Generation


Concetti Chiave
The author highlights the limitations of current abstractive citation text generation models and proposes a context-focused modification to improve the relevance and coherence of generated citations.
Sintesi

The content discusses the challenges in abstractive citation text generation, emphasizing the importance of generating citations that align with the context. It introduces a new approach that involves generating not only the target citation but also the surrounding context window. The proposed method aims to enhance human readability and leverage contextual clues for more accurate and relevant citation generation. Experimental results demonstrate that this approach is preferred by readers over traditional infilling methods, showcasing its potential to improve the quality of generated citations.

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Statistiche
train 565 papers with 2,243 citations distant 11,564 papers with 32,512 citations test 362 papers with 1,322 citations
Citazioni
"The generation target is not only the citation itself but the entire context window." "Our experimental results show that training in this way is preferred by human readers." "Our proposed approach changes only the generation target and is agnostic to any special features or input representations."

Approfondimenti chiave tratti da

by Biswadip Man... alle arxiv.org 02-29-2024

https://arxiv.org/pdf/2402.18054.pdf
Contextualizing Generated Citation Texts

Domande più approfondite

How can improvements in abstractive citation text generation impact academic research practices?

Improvements in abstractive citation text generation can have a significant impact on academic research practices by enhancing the quality and relevance of citations. By generating more contextually relevant and focused summaries of reference papers, researchers can better understand how their work relates to existing literature. This can lead to more precise and informative citations, helping readers grasp the significance of the cited works in relation to the current study. Additionally, improved citation generation models can aid researchers in identifying gaps in existing literature, highlighting areas where further research is needed. Overall, these advancements can streamline the process of writing scholarly papers, making it easier for researchers to build upon previous work and contribute meaningfully to their fields.

What potential biases or limitations could arise from relying on automated citation generation models?

Relying solely on automated citation generation models may introduce certain biases or limitations that researchers need to be aware of. One potential bias is the tendency for these models to produce generic or vague summaries that do not accurately reflect the nuanced relationships between different papers. This could result in misleading interpretations or misrepresentations of cited works. Moreover, automated models may struggle with understanding complex contexts or subtle nuances present in academic texts, leading to inaccuracies or errors in generated citations. Another limitation is the risk of plagiarism if automated models directly copy content from reference papers without proper attribution or paraphrasing. Researchers must ensure that generated citations are original and appropriately cite sources to avoid ethical issues related to intellectual property rights. Additionally, automated citation generation models may not always capture the full scope of diverse perspectives within a given field due to inherent biases present in training data or model algorithms. This could potentially limit exposure to alternative viewpoints and hinder interdisciplinary collaboration within academia.

How might contextualized approaches to text generation be applied beyond academic contexts?

Contextualized approaches to text generation have broad applications beyond academia across various industries and domains where generating coherent and relevant content is essential. In marketing and advertising, contextualized text generation can help create personalized product recommendations based on user preferences and browsing history. In customer service chatbots, contextualized responses tailored to specific inquiries can enhance user experience by providing accurate information efficiently. In legal documentation preparation, contextualized language models can assist lawyers in drafting contracts or analyzing case law by generating context-aware summaries. In journalism and media production, contextualized text generators can automate news article writing based on real-time events while maintaining journalistic standards. Overall, applying contextualized approaches outside academia enables organizations across sectors to streamline content creation processes effectively while ensuring accuracy and relevance tailored for specific audiences.
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