Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Evaluating Cross-lingual Knowledge Consistency in Code-Mixed vis-a-vis Indian Languages using IndicKLAR

About

Large language models recall knowledge reliably in English but often fail on the same query posed in a lower-resourced language -- a crosslingual consistency gap that remains underexplored for Indian languages and their code-mixed counterparts. To study this gap, we introduce IndiKLAR, an Indic extension of the KLAR-CLC benchmark covering 18 of the 22 scheduled Indian languages and pairing them with code-mixed variants for 11 widely used language pairs, with native-speaker verification of both monolingual and code-mixed variants for these 11 settings. This three-way alignment offers a unique opportunity to examine how knowledge recall consistency varies across the spectrum of English, code-mixed, and native Indian language inputs. Evaluating across nine open-weight models, we find that the native-language accuracy gap to English can reach $\sim$0.50, while code-mixed inputs close most of it -- bringing performance within $\sim$0.05 of English without any model-level intervention. Motivated by this, we evaluate several prompting strategies that vary in how language conversion is exposed, including a two-stage translate-then-answer setup, a one-stage joint translation-and-answer prompt, and Translate-in-Thought (TinT) -- a single-step strategy in which the model converts the input internally and emits only the final answer. Across the performance trajectory native $\rightarrow$ code-mixed $\rightarrow$ English, we identify a consistent flip point -- the boundary between incorrect and correct prediction -- that lies between the native and code-mixed settings. Interestingly, this holds whether the trajectory is induced by the input surface form or by the model's internal conversion process.

Debajyoti Mazumder, Divyansh Pathak, Prashant Kodali, Aditya Joshi, Akshay Agarwal, Jasabanta Patro• 2026

Related benchmarks

TaskDatasetResultRank
Question AnsweringAssamese (as)
Accuracy79.2
6
Question AnsweringBengali (bn)
Accuracy (ACC)90
6
Question AnsweringHindi hi
Accuracy (ACC)91
6
Question AnsweringMarathi mr
Accuracy (ACC)90.7
6
Question AnsweringTelugu (te)
Accuracy89.8
6
Knowledge recallKnowledge recall benchmark Assamese
ACC65.6
3
Knowledge recallKnowledge recall benchmark Bengali
Accuracy75.3
3
Knowledge recallKnowledge recall benchmark Hindi
ACC78.6
3
Knowledge recallKnowledge recall benchmark Marathi
Accuracy78.1
3
Knowledge recallKnowledge recall benchmark Telugu
Accuracy69.7
3
Showing 10 of 10 rows

Other info

Follow for update