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Transfer learning for harmful conten...
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Mohtaj, Salar.
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Transfer learning for harmful content detection
紀錄類型:
書目-電子資源 : Monograph/item
正題名/作者:
Transfer learning for harmful content detection / by Salar Mohtaj.
作者:
Mohtaj, Salar.
出版者:
Cham :Springer Nature Switzerland : : 2025.,
面頁冊數:
xvi, 105 p. :ill., digital ;24 cm.
內容註:
Introduction -- Background -- The Impact of Pre-processing on Fake News Detection -- Transfer Learning for Harmful Content Detection -- Sentiment Analysis and Fake News Detection -- Outlook -- Conclusion.
Contained By:
Springer Nature eBook
標題:
Transfer learning (Machine learning) -
電子資源:
https://doi.org/10.1007/978-3-032-00850-3
ISBN:
9783032008503
Transfer learning for harmful content detection
Mohtaj, Salar.
Transfer learning for harmful content detection
[electronic resource] /by Salar Mohtaj. - Cham :Springer Nature Switzerland :2025. - xvi, 105 p. :ill., digital ;24 cm. - T-Labs series in telecommunication services,2192-2829. - T-Labs series in telecommunication services..
Introduction -- Background -- The Impact of Pre-processing on Fake News Detection -- Transfer Learning for Harmful Content Detection -- Sentiment Analysis and Fake News Detection -- Outlook -- Conclusion.
This book provides an in-depth exploration of the effectiveness of transfer learning approaches in detecting deceptive content (i.e., fake news) and inappropriate content (i.e., hate speech). The author first addresses the issue of insufficient labeled data by reusing knowledge gained from other natural language processing (NLP) tasks, such as language modeling. He goes on to observe the connection between harmful content and emotional signals in text after emotional cues were integrated into the classification models to evaluate their impact on model performance. Additionally, since pre-processing plays an essential role in NLP tasks by enriching raw data-especially critical for tasks with limited data, such as fake news detection-the book analyzes various pre-processing strategies in a transfer learning context to enhance the detection of fake stories online. Optimal settings for transferring knowledge from pre-trained models across subtasks, including claim extraction and check-worthiness assessment, are also investigated. The author shows that the findings indicate that incorporating these features into check-worthy claim models can improve overall model performance, though integrating emotional signals did not significantly affect classifier results. Finally, the experiments highlight the importance of pre-processing for enhancing input text, particularly in social media contexts where content is often ambiguous and lacks context, leading to notable performance improvements. Explores the effectiveness of transfer learning approaches in detecting deceptive and inappropriate content; Analyzes pre-processing strategies in a transfer learning context to enhance the detection of fake stories online; Investigates optimal settings for transferring knowledge from pre-trained models across subtasks.
ISBN: 9783032008503
Standard No.: 10.1007/978-3-032-00850-3doiSubjects--Topical Terms:
3626659
Transfer learning (Machine learning)
LC Class. No.: Q325.787 / .M66 2025
Dewey Class. No.: 006.31
Transfer learning for harmful content detection
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Introduction -- Background -- The Impact of Pre-processing on Fake News Detection -- Transfer Learning for Harmful Content Detection -- Sentiment Analysis and Fake News Detection -- Outlook -- Conclusion.
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This book provides an in-depth exploration of the effectiveness of transfer learning approaches in detecting deceptive content (i.e., fake news) and inappropriate content (i.e., hate speech). The author first addresses the issue of insufficient labeled data by reusing knowledge gained from other natural language processing (NLP) tasks, such as language modeling. He goes on to observe the connection between harmful content and emotional signals in text after emotional cues were integrated into the classification models to evaluate their impact on model performance. Additionally, since pre-processing plays an essential role in NLP tasks by enriching raw data-especially critical for tasks with limited data, such as fake news detection-the book analyzes various pre-processing strategies in a transfer learning context to enhance the detection of fake stories online. Optimal settings for transferring knowledge from pre-trained models across subtasks, including claim extraction and check-worthiness assessment, are also investigated. The author shows that the findings indicate that incorporating these features into check-worthy claim models can improve overall model performance, though integrating emotional signals did not significantly affect classifier results. Finally, the experiments highlight the importance of pre-processing for enhancing input text, particularly in social media contexts where content is often ambiguous and lacks context, leading to notable performance improvements. Explores the effectiveness of transfer learning approaches in detecting deceptive and inappropriate content; Analyzes pre-processing strategies in a transfer learning context to enhance the detection of fake stories online; Investigates optimal settings for transferring knowledge from pre-trained models across subtasks.
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