CLAug 12, 2025

TiMoE: Time-Aware Mixture of Language Experts

arXiv:2508.08827v12 citationsh-index: 5Has Code
Originality Incremental advance
AI Analysis

This addresses the issue of stale knowledge and temporal hallucinations in LLMs for users relying on chronologically accurate predictions, though it is an incremental improvement over existing modular pre-training methods.

The paper tackles the problem of temporal leakage in large language models by pre-training experts on time-sliced data and using a time-aware mixture to ensure causal validity, reducing future-knowledge errors by up to 15% while maintaining performance on standard NLP tasks.

Large language models (LLMs) are typically trained on fixed snapshots of the web, which means that their knowledge becomes stale and their predictions risk temporal leakage: relying on information that lies in the future relative to a query. We tackle this problem by pre-training from scratch a set of GPT-style experts on disjoint two-year slices of a 2013-2024 corpus and combining them through TiMoE, a Time-aware Mixture of Language Experts. At inference time, TiMoE masks all experts whose training window ends after the query timestamp and merges the remaining log-probabilities in a shared space, guaranteeing strict causal validity while retaining the breadth of multi-period knowledge. We also release TSQA, a 10k-question benchmark whose alternatives are explicitly labelled as past, future or irrelevant, allowing fine-grained measurement of temporal hallucinations. Experiments on eight standard NLP tasks plus TSQA show that a co-adapted TiMoE variant matches or exceeds the best single-period expert and cuts future-knowledge errors by up to 15%. Our results demonstrate that modular, time-segmented pre-training paired with causal routing is a simple yet effective path toward LLMs that stay chronologically grounded without sacrificing general performance much. We open source our code at TiMoE (Github): https://github.com/epfml/TiMoE

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