논문(61)
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[2022-01-13] 오늘의 자연어처리
Multimodal Representations Learning Based on Mutual Information Maximization and Minimization and Identity Embedding for Multimodal Sentiment Analysis Multimodal sentiment analysis (MSA) is a fundamental complex research problem due to the heterogeneity gap between different modalities and the ambiguity of human emotional expression. Although there have been many successful attempts to construct..
2022.01.13 -
[2022-01-12] 오늘의 자연어처리
BERT for Sentiment Analysis: Pre-trained and Fine-Tuned Alternatives BERT has revolutionized the NLP field by enabling transfer learning with large language models that can capture complex textual patterns, reaching the state-of-the-art for an expressive number of NLP applications. For text classification tasks, BERT has already been extensively explored. However, aspects like how to better cope..
2022.01.12 -
[2022-01-11] 오늘의 자연어처리
The Defeat of the Winograd Schema Challenge The Winograd Schema Challenge -- a set of twin sentences involving pronoun reference disambiguation that seem to require the use of commonsense knowledge -- was proposed by Hector Levesque in 2011. By 2019, a number of AI systems, based on large pre-trained transformer-based language models and fine-tuned on these kinds of problems, achieved better tha..
2022.01.11 -
[2022-01-10] 오늘의 자연어처리
Improving Mandarin End-to-End Speech Recognition with Word N-gram Language Model Despite the rapid progress of end-to-end (E2E) automatic speech recognition (ASR), it has been shown that incorporating external language models (LMs) into the decoding can further improve the recognition performance of E2E ASR systems. To align with the modeling units adopted in E2E ASR systems, subword-level (e.g...
2022.01.10 -
[2022-01-07] 오늘의 자연어처리
An Adversarial Benchmark for Fake News Detection Models With the proliferation of online misinformation, fake news detection has gained importance in the artificial intelligence community. In this paper, we propose an adversarial benchmark that tests the ability of fake news detectors to reason about real-world facts. We formulate adversarial attacks that target three aspects of "understanding":..
2022.01.07 -
[2022-01-06] 오늘의 자연어처리
An Adversarial Benchmark for Fake News Detection Models With the proliferation of online misinformation, fake news detection has gained importance in the artificial intelligence community. In this paper, we propose an adversarial benchmark that tests the ability of fake news detectors to reason about real-world facts. We formulate adversarial attacks that target three aspects of "understanding":..
2022.01.06