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HFEPX Hub

Coding + Critique Edit (Last 90 Days)

Updated from current HFEPX corpus (Apr 27, 2026). 12 papers are grouped in this hub page.

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Updated from current HFEPX corpus (Apr 27, 2026). 12 papers are grouped in this hub page. Common evaluation modes: Simulation Env, Automatic Metrics. Most common rater population: Domain Experts. Common annotation unit: Scalar. Frequently cited benchmark: ContentBench. Common metric signal: agreement. 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 Apr 1, 2026.

Papers: 12 Last published: Apr 1, 2026 Global RSS Tag RSS
CodingCritique EditLast 90d

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

1

Benchmark + metric + eval mode explicitly present.

Judge/Human Comparability

0

Papers containing both `human_eval` and `llm_as_judge`.

  • 1 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 (1 papers).

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Why This Matters For Eval Research

  • 100% of papers report explicit human-feedback signals, led by critique/edit feedback.
  • simulation environments appears in 16.7% of papers in this hub.
  • ContentBench is a recurring benchmark anchor for cross-paper comparisons in this page.

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 scalar scoring; use this to scope replication staffing.
  • Stratify by benchmark (ContentBench vs Interruptbench) before comparing methods.

Benchmark Interpretation

  • ContentBench appears in 8.3% of hub papers (1/12); use this cohort for benchmark-matched comparisons.
  • Interruptbench appears in 8.3% of hub papers (1/12); use this cohort for benchmark-matched comparisons.

Metric Interpretation

  • agreement is reported in 8.3% of hub papers (1/12); compare with a secondary metric before ranking methods.
  • coherence is reported in 8.3% of hub papers (1/12); compare with a secondary metric before ranking methods.
Researcher Checklist (Expanded)

Researcher Checklist

  • Strong: Papers with explicit human feedback

    Coverage is strong (100% 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 (16.7% vs 35% target).

  • Gap: Papers naming evaluation metrics

    Coverage is a replication risk (16.7% 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 (8.3% vs 35% target).

Strengths

  • Strong human-feedback signal (100% of papers).
  • Agentic evaluation appears in 25% 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 (8.3% coverage).

Suggested Next Analyses

  • Stratify by benchmark (ContentBench vs Interruptbench) before comparing methods.
  • Track metric sensitivity by reporting both agreement and coherence.
Recommended Queries (Expanded)

Recommended Queries

Start with These 3

Use these when you need one protocol anchor, one benchmark anchor, and one recent comparison point before reading the wider hub.

Start Here (Best First 6)

Ranked for protocol completeness (human signal, benchmark + metric anchors, quality controls, and judge/human overlap).

Protocol Matrix (Top 12)

Use this to quickly compare protocol ingredients instead of scanning long prose.

Suggested Reading Order (Extended)

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

Suggested Reading Order

  1. From Hallucination to Structure Snowballing: The Alignment Tax of Constrained Decoding in LLM Reflection

    Start here for detailed protocol reporting and quality-control evidence. Signals: critique/edit feedback. Abstract: Intrinsic self-correction in Large Language Models (LLMs) frequently fails in open-ended reasoning tasks due to.

  2. The Self Driving Portfolio: Agentic Architecture for Institutional Asset Management

    Start here for detailed protocol reporting and quality-control evidence. Signals: critique/edit feedback. Abstract: Agentic AI shifts the investor's role from analytical execution to oversight.

  3. Revision or Re-Solving? Decomposing Second-Pass Gains in Multi-LLM Pipelines

    Start here for detailed protocol reporting and quality-control evidence. Signals: critique/edit feedback. Abstract: Multi-LLM revision pipelines, in which a second model reviews and improves a draft produced by.

  4. When Users Change Their Mind: Evaluating Interruptible Agents in Long-Horizon Web Navigation

    Include a human-eval paper to calibrate against judge-based evaluation settings. Signals: simulation environments + critique/edit feedback. Focus: WebArena. Abstract: As LLM agents transition from short, static problem solving.

  5. From Pixels to Policies: Reinforcing Spatial Reasoning in Language Models for Content-Aware Layout Design

    Include a human-eval paper to calibrate against judge-based evaluation settings. Signals: simulation environments + critique/edit feedback. Focus: latency. Abstract: We introduce LaySPA, a reinforcement learning framework that equips.

  6. Can Large Language Models Replace Human Coders? Introducing ContentBench

    Adds automatic metrics with critique/edit feedback for broader protocol coverage within this hub. Signals: automatic metrics + critique/edit feedback. Focus: ContentBench / agreement. Abstract: Among the 59 evaluated.

  7. The Ultimate Tutorial for AI-driven Scale Development in Generative Psychometrics: Releasing AIGENIE from its Bottle

    Adds evaluation protocol evidence with critique/edit feedback for broader protocol coverage within this hub. Signals: critique/edit feedback. Abstract: Psychological scale development has traditionally required extensive expert involvement, iterative.

  8. Unlocking Reasoning Capability on Machine Translation in Large Language Models

    Adds evaluation protocol evidence with critique/edit feedback for broader protocol coverage within this hub. Signals: critique/edit feedback. Abstract: Reasoning-oriented large language models (RLMs) achieve strong gains on tasks.

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

  • Critique Edit (12)
  • Rlaif Or Synthetic Feedback (1)

Evaluation Modes

  • Simulation Env (2)
  • Automatic Metrics (1)

Top Benchmarks

  • ContentBench (1)
  • Interruptbench (1)
  • WebArena (1)

Top Metrics

  • Agreement (1)
  • Coherence (1)
  • Cost (1)
  • Latency (1)

Rater Population Mix

  • Domain Experts (1)

Quality Controls

Coverage diagnostics (sample-based): human-feedback 100.0% · benchmarks 16.7% · metrics 16.7% · quality controls 0.0%.

Top Papers

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