Home » Latest Publications & Patents on Natural Language Processing (NLP)

Latest Publications & Patents on Natural Language Processing (NLP)

Natural Language Processing (NLP)

This is our latest selection of worldwide publications and patents in english on Natural Language Processing (NLP), between many scientific online journals, classified and focused on natural language processing, tokenization, stemming, lemmatization, part-of-speech, named entity recognition and sentiment analysis.

Patents: no recent patent on this particular topic. Please try the extensive manual search in the Patents Database linked just above.

regulatory challenges, technical solutions, and practical pathways

Published on 2025-02-19 by @OXFORD

Abstract: AbstractThis paper thoroughly explores the complex interplay between blockchain technology and the General Data Protection Regulation (GDPR) of the European Union, alongside the substantial challenges and potential opportunities stemming from their interaction. While the challenges of decentralization and immutability in blockchain are well-documented, this paper advances the discussion by incorporating legal developments, such as evolving interpretations of joint controllership and new advisory[...]


Our summary: This paper examines the regulatory challenges and technical solutions in aligning blockchain technology with GDPR principles, proposing practical pathways for compliance through innovative solutions such as chameleon hashes and zero-knowledge proofs.

blockchain technology, General Data Protection Regulation (GDPR), compliance challenges, innovative solutions

Publication

Metric-Free Learning Network with Dual Relations Propagation for Few-Shot Aspect Category Sentiment Analysis

Published on 2024-02-03 by Shiman Zhao, Yutao Xie, Wei Chen, Tengjiao Wang, Jiahui Yao, Jiabin Zheng @MIT

Abstract: Few-shot Aspect Category Sentiment Analysis (ACSA) is a crucial task for aspect-based sentiment analysis, which aims to detect sentiment polarity for a given aspect category in a sentence with limited data. However, few-shot learning methods focus on distance metrics between the query and support sets to classify queries, heavily relying on aspect distributions in the embedding space. Thus, they suffer from overlapping distributions of aspect embeddings caused by irrelevant sentiment noise among[...]


Our summary: Metric-Free Learning Network with Dual Relations Propagation for Few-Shot Aspect Category Sentiment Analysis. Crucial task for aspect-based sentiment analysis. Proposes metric-free method using Dual Relations Propagation. Achieves improvement in accuracy and F1 score.

learning, network, relations, propagation, sentiment

Publication

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    Topics covered: Natural Language Processing, NLP, tokenization, stemming, lemmatization, part-of-speech, named entity recognition, sentiment analysis, multimodal, sarcasm detection, transformer-based, generative AI, ISO/IEC 30170, ISO/IEC 24751, ISO/IEC 26515, ISO/IEC 23026, and ISO/IEC 30122..

    1. Alisson Kelly

      Interesting read, but have these NLP patents truly enhanced AIs ability to understand human emotions? Open for debate.

    Comments are closed.

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