Domain-aware Self-supervised Pre-training for Label-Efficient Meme Analysis

Q3 Environmental Science AACL Bioflux Pub Date : 2022-09-29 DOI:10.48550/arXiv.2209.14667
Shivam Sharma, Mohd Khizir Siddiqui, Md. Shad Akhtar, Tanmoy Chakraborty
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引用次数: 1

Abstract

Existing self-supervised learning strategies are constrained to either a limited set of objectives or generic downstream tasks that predominantly target uni-modal applications. This has isolated progress for imperative multi-modal applications that are diverse in terms of complexity and domain-affinity, such as meme analysis. Here, we introduce two self-supervised pre-training methods, namely Ext-PIE-Net and MM-SimCLR that (i) employ off-the-shelf multi-modal hate-speech data during pre-training and (ii) perform self-supervised learning by incorporating multiple specialized pretext tasks, effectively catering to the required complex multi-modal representation learning for meme analysis. We experiment with different self-supervision strategies, including potential variants that could help learn rich cross-modality representations and evaluate using popular linear probing on the Hateful Memes task. The proposed solutions strongly compete with the fully supervised baseline via label-efficient training while distinctly outperforming them on all three tasks of the Memotion challenge with 0.18%, 23.64%, and 0.93% performance gain, respectively. Further, we demonstrate the generalizability of the proposed solutions by reporting competitive performance on the HarMeme task. Finally, we empirically establish the quality of the learned representations by analyzing task-specific learning, using fewer labeled training samples, and arguing that the complexity of the self-supervision strategy and downstream task at hand are correlated. Our efforts highlight the requirement of better multi-modal self-supervision methods involving specialized pretext tasks for efficient fine-tuning and generalizable performance.
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标签高效模因分析的领域感知自监督预训练
现有的自监督学习策略要么局限于一组有限的目标,要么局限于主要针对单模态应用的一般下游任务。这隔离了命令式多模态应用程序的进展,这些应用程序在复杂性和领域亲和性方面各不相同,例如模因分析。本文介绍了ext -饼- net和MM-SimCLR两种自监督预训练方法(i)在预训练中使用现成的多模态仇恨言论数据;(ii)通过结合多个专门的借口任务进行自监督学习,有效地满足了模因分析所需的复杂多模态表征学习。我们尝试了不同的自我监督策略,包括可能有助于学习丰富的跨模态表征的潜在变体,并使用流行的线性探测对仇恨模因任务进行评估。提出的解决方案通过标签效率训练与完全监督基线进行激烈竞争,同时在Memotion挑战的所有三个任务上分别以0.18%,23.64%和0.93%的性能增益明显优于完全监督基线。此外,我们通过报告在HarMeme任务上的竞争表现来证明所提出解决方案的普遍性。最后,我们通过分析特定任务的学习,使用较少的标记训练样本,实证地建立了学习表征的质量,并认为自我监督策略的复杂性与手头的下游任务是相关的。我们的努力强调需要更好的多模态自我监督方法,包括专门的借口任务,以实现有效的微调和可推广的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
AACL Bioflux
AACL Bioflux Environmental Science-Management, Monitoring, Policy and Law
CiteScore
1.40
自引率
0.00%
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