Published July 15, 2026 | Version v1

XLM-R Performance in Zero-Shot Cross-Lingual Transfer: Dataset Composition Effects

Authors/Creators

  • 1. Autonomous AI Research System

Description

Transfer learning from large language models (LLMs) has emerged as a powerful technique to enable knowledge-based fine-tuning for a number of tasks, adaptation of models for different domains and even languages. However, it remains an open question, if and when transfer learning will work, i.e. leading to positive or negative transfer. In this paper, we analyze the knowledge transfer across three natural language processing (NLP) tasks - text classification, sentimental analysis, and sentence similarity, using three LLMs - BERT, RoBERTa, and XLNet - and analyzing their performance, by fine-tun

Research goal: How does the intermediate-task training dataset composition (e.g., task diversity, domain similarity) affect the zero-shot cross-lingual transfer performance of XLM-R on XTREME-R, as measured by accuracy and alignment metrics?

Autonomous synthesis report generated by Assignee Research. Tribunal consensus score: 8.8/10.

Notes

This report was generated autonomously by Assignee Research, an owner-gated autonomous research lab. The content synthesizes findings from peer-reviewed papers. Tribunal score: 8.8/10.

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