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HFEPX Hub

Multi Agent + Automatic Metrics (Last 30 Days)

Updated from current HFEPX corpus (Mar 1, 2026). 12 papers are grouped in this hub page.

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Updated from current HFEPX corpus (Mar 1, 2026). 12 papers are grouped in this hub page. Common evaluation modes: Automatic Metrics, Llm As Judge. Most common rater population: Domain Experts. Common annotation unit: Ranking. Common metric signal: accuracy. Use this page to compare protocol setup, judge behavior, and labeling design decisions before running new eval experiments. Newest paper in this set is from Feb 24, 2026.

Papers: 12 Last published: Feb 24, 2026 Global RSS Tag RSS
Multi AgentAutomatic MetricsLast 30d

Researcher Quick Triage

This hub is best used for protocol triage and replication planning from abstract-level evidence. Quality band: Developing .

High-Signal Coverage

100.0%

12 / 12 sampled papers are not low-signal flagged.

Replication-Ready Set

0

Benchmark + metric + eval mode explicitly present.

Judge/Human Comparability

0

Papers containing both `human_eval` and `llm_as_judge`.

  • 0 papers are replication-ready (benchmark + metric + explicit evaluation mode).
  • 0 papers support judge-vs-human agreement analysis.
  • 0 papers report explicit quality controls (calibration/adjudication/IAA).

Primary action: Use this page for scouting only; collect additional papers before attempting replication-critical comparisons.

Currently showing only replication-ready papers in ranking and matrix sections (0 papers).

Why This Matters (Expanded)

Why This Matters For Eval Research

  • 16.7% of papers report explicit human-feedback signals, led by expert verification.
  • automatic metrics appears in 100% of papers in this hub.
  • multi-agent setups appears in 100% of papers, indicating agentic evaluation demand.
Protocol Notes (Expanded)

Protocol Takeaways

  • Quality-control reporting is sparse in this slice; prioritize papers with explicit calibration or adjudication steps.
  • Rater context is mostly domain experts, and annotation is commonly ranking annotation; use this to scope replication staffing.
  • Pair this hub with a human_eval-heavy hub to validate judge-model calibration.

Metric Interpretation

  • accuracy is reported in 50% of hub papers (6/12); compare with a secondary metric before ranking methods.
  • cost is reported in 16.7% of hub papers (2/12); compare with a secondary metric before ranking methods.
Researcher Checklist (Expanded)

Researcher Checklist

  • Gap: Papers with explicit human feedback

    Coverage is a replication risk (16.7% vs 45% target).

  • Gap: Papers reporting quality controls

    Coverage is a replication risk (0% vs 30% target).

  • Gap: Papers naming benchmarks/datasets

    Coverage is a replication risk (0% vs 35% target).

  • Strong: Papers naming evaluation metrics

    Coverage is strong (83.3% vs 35% target).

  • Gap: Papers with known rater population

    Coverage is a replication risk (8.3% vs 35% target).

  • Gap: Papers with known annotation unit

    Coverage is a replication risk (16.7% vs 35% target).

Strengths

  • Agentic evaluation appears in 100% of papers.

Known Gaps

  • Only 0% of papers report quality controls; prioritize calibration/adjudication evidence.
  • Rater population is under-specified (8.3% coverage).
  • Annotation unit is under-specified (16.7% coverage).

Suggested Next Analyses

  • Pair this hub with a human_eval-heavy hub to validate judge-model calibration.
  • Track metric sensitivity by reporting both accuracy and cost.
Recommended Queries (Expanded)

Recommended Queries

Suggested Reading Order (Extended)

This section is intentionally expanded only when needed; use “Start Here” above for a faster pass.

Suggested Reading Order

  1. AgentDropoutV2: Optimizing Information Flow in Multi-Agent Systems via Test-Time Rectify-or-Reject Pruning

    Start here for detailed protocol reporting and quality-control evidence. Signals: automatic metrics. Focus: accuracy. Abstract: While Multi-Agent Systems (MAS) excel in complex reasoning, they suffer from the cascading.

  2. Hierarchical LLM-Based Multi-Agent Framework with Prompt Optimization for Multi-Robot Task Planning

    Start here for detailed protocol reporting and quality-control evidence. Signals: automatic metrics. Focus: accuracy. Abstract: Multi-robot task planning requires decomposing natural-language instructions into executable actions for heterogeneous robot.

  3. Training Generalizable Collaborative Agents via Strategic Risk Aversion

    Start here for detailed protocol reporting and quality-control evidence. Signals: automatic metrics. Abstract: Many emerging agentic paradigms require agents to collaborate with one another (or people) to achieve.

  4. SparkMe: Adaptive Semi-Structured Interviewing for Qualitative Insight Discovery

    Include a human-eval paper to calibrate against judge-based evaluation settings. Signals: automatic metrics + expert verification. Focus: cost. Abstract: The code, datasets, and evaluation protocols for SparkMe are.

  5. PrivAct: Internalizing Contextual Privacy Preservation via Multi-Agent Preference Training

    Include a human-eval paper to calibrate against judge-based evaluation settings. Signals: automatic metrics + pairwise preferences. Focus: helpfulness. Abstract: By embedding privacy preferences into each agent, PrivAct enhances.

  6. The Emergence of Lab-Driven Alignment Signatures: A Psychometric Framework for Auditing Latent Bias and Compounding Risk in Generative AI

    Include an LLM-as-judge paper to test judge design and agreement assumptions. Signals: LLM-as-judge. Focus: accuracy. Abstract: As Large Language Models (LLMs) transition from standalone chat interfaces to foundational.

  7. Evaluating Chain-of-Thought Reasoning through Reusability and Verifiability

    Adds automatic metrics for broader protocol coverage within this hub. Signals: automatic metrics. Focus: accuracy. Abstract: In multi-agent IR pipelines for tasks such as search and ranking, LLM-based.

  8. A Multi-Agent Framework for Medical AI: Leveraging Fine-Tuned GPT, LLaMA, and DeepSeek R1 for Evidence-Based and Bias-Aware Clinical Query Processing

    Adds automatic metrics for broader protocol coverage within this hub. Signals: automatic metrics. Focus: accuracy. Abstract: Large language models (LLMs) show promise for healthcare question answering, but clinical.

Known Limitations

Known Limitations

  • Only 0% of papers report quality controls; prioritize calibration/adjudication evidence.
  • Rater population is under-specified (8.3% coverage).
  • Narrative synthesis is grounded in metadata and abstracts only; full-paper implementation details are not parsed.
Research Utility Snapshot (Detailed)

Research Utility Snapshot

Human Feedback Mix

  • Expert Verification (1)
  • Pairwise Preference (1)

Evaluation Modes

  • Automatic Metrics (12)
  • Llm As Judge (1)

Top Benchmarks

Top Metrics

  • Accuracy (6)
  • Cost (2)
  • Bleu (1)
  • Error rate (1)

Rater Population Mix

  • Domain Experts (1)

Quality Controls

Coverage diagnostics (sample-based): human-feedback 16.7% · benchmarks 0.0% · metrics 83.3% · quality controls 0.0%.

Top Papers

No replication-ready papers in the loaded sample. Switch to “All Sampled Papers” for broader coverage.

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