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Human Feedback and Eval Paper Explorer

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Total papers: 7 Search mode: keyword Shortlist (0) RSS

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No exact ID match for "2311.14808". Showing closest results for "Data to Text Bilingual Generation" instead.
BiST: A Gold Standard Bangla-English Bilingual Corpus for Sentence Structure and Tense Classification with Inter-Annotator Agreement

Abdullah Al Shafi, Swapnil Kundu Argha, M. A. Moyeen, Abdul Muntakim, Shoumik Barman Polok · Apr 6, 2026

Citations: 0

Match reason: Matched by broad semantic/index fallback.

Score: 45% Moderate protocol signal Freshness: Hot Status: Ready
Automatic Metrics Multilingual
  • Annotation quality is ensured through a multi-stage framework with three independent annotators and dimension-wise Fleiss Kappa (κ) agreement, yielding reliable and reproducible labels with κ values of 0.82 and 0.88 for structural and…
  • Statistical analyses demonstrate realistic structural and temporal distributions, while baseline evaluations show that dual-encoder architectures leveraging complementary language-specific representations consistently outperform strong…
Open paper

Match reason: Matched by broad semantic/index fallback.

Score: 35% Moderate protocol signal Freshness: Warm Status: Ready
Automatic Metrics Coding
  • We present Kwame 2.0, a bilingual (English-French) generative AI teaching assistant built using retrieval-augmented generation and deployed in a human-in-the-loop forum within SuaCode, an introductory mobile-based coding course for learners…
  • Evaluation using community feedback and expert ratings shows that Kwame 2.0 provided high-quality and timely support, achieving high accuracy on curriculum-related questions, while human facilitators and peers effectively mitigated errors,…
Open paper
Fanar-Sadiq: A Multi-Agent Architecture for Grounded Islamic QA

Ummar Abbas, Mourad Ouzzani, Mohamed Y. Eltabakh, Omar Sinan, Gagan Bhatia, Hamdy Mubarak · Mar 9, 2026

Citations: 0

Match reason: Matched by broad semantic/index fallback.

Score: 32% Sparse protocol signal Freshness: Warm Status: Ready
Multi Agent Law
  • In this work, we present a bilingual (Arabic/English) multi-agent Islamic assistant, called Fanar-Sadiq, which is a core component of the Fanar AI platform.
  • We evaluate the complete end-to-end system on public Islamic QA benchmarks and demonstrate effectiveness and efficiency.
Open paper
SyriSign: A Parallel Corpus for Arabic Text to Syrian Arabic Sign Language Translation

Mohammad Amer Khalil, Raghad Nahas, Ahmad Nassar, Khloud Al Jallad · Mar 31, 2026

Citations: 0

Match reason: Matched by broad semantic/index fallback.

Score: 28% Sparse protocol signal Freshness: Warm Status: Ready
Multilingual
  • While there are numerous benchmarks for high-resource sign languages, low-resource languages like Arabic remain underrepresented.
  • We will release SyriSign publicly, hoping it serves as an initial benchmark.
Open paper
Bilingual Text-to-Motion Generation: A New Benchmark and Baselines

Wanjiang Weng, Xiaofeng Tan, Xiangbo Shu, Guo-Sen Xie, Pan Zhou, Hongsong Wang · Mar 26, 2026

Citations: 0

Match reason: Matched by broad semantic/index fallback.

Score: 28% Sparse protocol signal Freshness: Warm Status: Ready
CodingMultilingual
  • To address these gaps, we introduce BiHumanML3D, the first bilingual text-to-motion benchmark, constructed via LLM-assisted annotation and rigorous manual correction.
  • 80.8\%, significantly outperforms monolingual diffusion models and translation baselines on BiHumanML3D, underscoring the critical necessity and reliability of our dataset and the effectiveness of our alignment strategy for cross-lingual…
Open paper

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