Challenge: Existing methods for news headline generation focus on producing a single short sentence . et al., 2017; Gehrmann e.t., 2018; Zhong ee., 2019) focus on single-headline generation.
Approach: They propose a method to generate multiple headlines with keyphrases of user interests . they propose generating multiple keyphrase-relevant headlines using a transformer decoder .
Outcome: The proposed method achieves state-of-the-art in terms of quality and diversity.

Similar Papers

DivHSK: Diverse Headline Generation using Self-Attention based Keyword Selection (2023.findings-acl)

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Challenge: Diverse headline generation is an NLP task where the goal is to generate multiple headlines that are true to the content of the article but are different among themselves.
Approach: They propose a novel model that generates multiple diverse headlines by using a pre-trained encoder and a cluster-specific keyword set.
Outcome: The proposed model outperforms existing literature and their strong baselines and emerges as a state-of-the-art model.
Transformer-based Lexically Constrained Headline Generation (2021.emnlp-main)

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Challenge: Existing automatic headline generation methods cannot include a given phrase in the generated headline.
Approach: They propose a Transformer-based method that guarantees to include a given phrase in a generated headline.
Outcome: The proposed method achieves ROUGE scores comparable to previous methods with Japanese news corpus.
Generating User-Engaging News Headlines (2023.acl-long)

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Challenge: Personalized news recommendation systems present the same headline to all users, making it difficult for them to understand the connection between their interests and the recommended article.
Approach: They propose a framework that incorporates user profiling to generate personalized headlines and a combination of automated and human evaluation methods to determine user preference for personalized headline generation.
Outcome: The proposed framework can generate personalized headlines that meet the needs of a diverse audience.
Hooks in the Headline: Learning to Generate Headlines with Controlled Styles (2020.acl-main)

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Challenge: Current summarization systems only produce plain, factual headlines, far from the practical needs for exposure and memorableness of the articles.
Approach: They propose a task to generate relevant headlines with three style options . they propose combining summarization and reconstruction tasks into a multitasking framework .
Outcome: The proposed method outperforms the state-of-the-art summarization model by 9.68% . it can generate relevant, fluent headlines with humor, romance and clickbait .
Updated Headline Generation: Creating Updated Summaries for Evolving News Stories (2022.acl-long)

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Challenge: Existing systems that generate headlines for updated articles are not as efficient as static ones.
Approach: They propose a task where a system generates a headline for an updated article, considering both the previous article and headline.
Outcome: The proposed model produces headlines judged by humans to be as factual as gold headlines while making fewer unnecessary edits compared to a standard headline generation model.
A Case Study on Neural Headline Generation for Editing Support (N19-2)

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Challenge: a news-aggregator is a website or mobile application that aggregates web content . dozens of professional editors manually create their headlines, which are much shorter than the original headlines.
Approach: They propose a neural headline generation model that automatically generates short headlines from news articles.
Outcome: The proposed model is deployed to an editing support tool and compares editors' behavior before and after the release.
Leveraging Key Information Modeling to Improve Less-Data Constrained News Headline Generation via Duality Fine-Tuning (2022.aacl-main)

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Challenge: Recent language generative models are mostly trained on large-scale datasets, while in some real scenarios, the training datasets are often expensive and would be small-scale.
Approach: They propose a novel duality fine-tuning method to capture more information from limited data and build connections between tasks.
Outcome: The proposed method can capture more information from limited data, build connections between separate tasks, and is suitable for less-data constrained generation tasks.
LipKey: A Large-Scale News Dataset for Absent Keyphrases Generation and Abstractive Summarization (2022.coling-1)

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Challenge: Existing work has addressed each element individually, but this study focuses on LipKey, the largest news corpus with human-written abstractive summaries, absent keyphrases, and titles.
Approach: They propose a novel news dataset that consists of highly absent keyphrases . they combine lips keyphrase and TF-IDF to obtain abstractive summaries .
Outcome: The proposed dataset is the largest news corpus with human-written abstractive summaries, absent keyphrases, and titles.
Towards Unified Uni- and Multi-modal News Headline Generation (2024.findings-eacl)

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Challenge: Current approaches to multimodal summarization and headline generation are limited by hierarchical cross-modal encoders and modality-specific decoders.
Approach: They propose a task formulation that utilizes a simple encoder-decoder model to generate headlines from uni- and multimodal news articles.
Outcome: The proposed model is trained on data of several modalities and extends the decoder to handle the multimodal output.
Contrastive Learning enhanced Author-Style Headline Generation (2022.emnlp-main)

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Challenge: Current work only uses the article itself in the headline generation, but have not taken the writing style of headlines into account.
Approach: They propose a model which takes historical headlines into account to integrate the stylistic features of the author into the model and integrate them into the decoder.
Outcome: The proposed model can integrate the stylistic features of the author into the model and generate a headline that is appropriate for the article and consistent with the author’s style.

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