# ML Paper Quality Evaluation Criteria ## Overview Use these criteria to evaluate ML research papers found during literature search or when selecting papers for detailed review. The 5-dimension framework provides structured assessment for paper selection and comparison. --- ## Evaluation Dimensions | Dimension | Weight | Description | |-----------|--------|-------------| | **Innovation** | 30% | Novelty and originality of contribution | | **Method Completeness** | 25% | Clarity, rigor, and reproducibility | | **Experimental Thoroughness** | 25% | Validation depth and analysis quality | | **Writing Quality** | 10% | Clarity and presentation | | **Relevance & Impact** | 10% | Domain importance and potential impact | --- ## Detailed Scoring Rubrics ### 1. Innovation (30%) **Score 5 - Breakthrough:** - Proposes entirely new paradigm or framework - Solves long-standing open problem - Major impact expected on the field - Challenges fundamental assumptions **Score 4 - Significant Innovation:** - Substantial improvement over existing methods - New insights or perspectives - Novel combination of techniques - Clear advancement over state-of-the-art **Score 3 - Methodological Innovation:** - New method or architecture proposed - Some novelty but incremental - Reasonable contribution - Standard type of innovation **Score 2 - Incremental Improvement:** - Minor improvements to existing methods - Limited novelty - Small advancement - Mostly derivative **Score 1 - Trivial:** - Minimal contribution - Obvious extension - No real innovation - Known results **Evaluation Questions:** - Does this paper propose something genuinely new? - Does it advance the state-of-the-art? - Will this influence future work? - Is the contribution significant or marginal? --- ### 2. Method Completeness (25%) **Score 5 - Complete and Rigorous:** - Full mathematical derivation - All hyperparameters specified - Complete algorithmic details - Easily reproducible - Code available **Score 4 - Very Complete:** - Detailed method description - Most important details included - Mostly reproducible - Minor gaps in documentation **Score 3 - Reproducible:** - Core method clearly described - Key details present - Can be reproduced with effort - Some ambiguity in details **Score 2 - Lacks Details:** - Key details missing - Difficult to reproduce - Incomplete description - Ambiguous in important areas **Score 1 - Unclear:** - Method description unclear - Missing critical information - Cannot determine validity - Poorly explained **Evaluation Questions:** - Can another researcher reproduce this work? - Are all important details specified? - Is mathematical derivation sound? - Is code available and documented? --- ### 3. Experimental Thoroughness (25%) **Score 5 - Comprehensive:** - Multiple diverse datasets - Extensive ablation studies - Statistical significance testing - Thorough analysis and discussion - Comparison with strong baselines **Score 4 - Very Thorough:** - Multiple datasets - Reasonable ablation studies - Proper baseline comparisons - Good analysis **Score 3 - Adequate:** - Main experiments complete - Standard datasets - Basic baselines - Results are credible **Score 2 - Limited:** - Limited experiments - Few datasets - Weak baselines - Minimal analysis **Score 1 - Insufficient:** - Minimal validation - Toy examples only - No meaningful comparisons - Results not convincing **Evaluation Questions:** - Are experiments comprehensive? - Are baselines strong and appropriate? - Are statistical tests used? - Is there ablation analysis? - Are results on standard datasets? --- ### 4. Writing Quality (10%) **Score 5 - Excellent:** - Clear, precise, well-structured - Logical flow throughout - Professional presentation - High-quality figures - No ambiguity **Score 4 - Very Good:** - Clear and well-written - Mostly logical structure - Good presentation - Minor issues **Score 3 - Understandable:** - Basically clear - Some organizational issues - Acceptable presentation - Understandable with effort **Score 2 - Fair:** - Some confusing sections - Organization problems - Presentation issues - Hard to follow at times **Score 1 - Poor:** - Unclear or confusing - Poor organization - Difficult to understand - Major presentation problems **Evaluation Questions:** - Is the paper easy to understand? - Is the structure logical? - Are figures/tables clear? - Is the writing professional? --- ### 5. Relevance & Impact (10%) **Score 5 - High Impact:** - Solves important problem - Broad applicability - Expected wide influence - Addresses fundamental challenge **Score 4 - Domain Important:** - Important problem in field - Significant potential impact - Relevant to many researchers **Score 3 - Meaningful:** - Meaningful contribution - Moderate impact expected - Relevant to subset of field **Score 2 - Niche:** - Specialized problem - Limited applicability - Narrow impact **Score 1 - Limited:** - Very narrow problem - Minimal impact expected - Limited relevance **Evaluation Questions:** - Is this an important problem? - Will this influence future work? - Is it relevant to current research needs? - Does it address a significant challenge? --- ## Scoring Calculation **Weighted Total:** ``` Total = (Innovation × 0.30) + (Method × 0.25) + (Experiments × 0.25) + (Writing × 0.10) + (Impact × 0.10) ``` **Example Calculation:** - Innovation: 4/5 - Method: 3/5 - Experiments: 4/5 - Writing: 3/5 - Impact: 4/5 ``` Total = (4 × 0.30) + (3 × 0.25) + (4 × 0.25) + (3 × 0.10) + (4 × 0.10) = 1.20 + 0.75 + 1.00 + 0.30 + 0.40 = 3.65 / 5.0 ``` --- ## Selection Process ### For Literature Reviews 1. **Screen papers** by title/abstract for relevance 2. **Full review** of potentially relevant papers 3. **Score each paper** using all 5 dimensions 4. **Rank by total score** 5. **Select top papers** for detailed review ### Quality Thresholds - **Excellent**: 4.0+ (include definitely) - **Good**: 3.5-3.9 (include if relevant) - **Fair**: 3.0-3.4 (include if highly relevant) - **Poor**: <3.0 (exclude unless essential) --- ## Quick Screening Indicators Before detailed review, check: **Positive Indicators:** - Published at top venue (NeurIPS, ICML, ICLR) - Citations in top papers - Code available with stars - Authors from top labs - Clear novelty in abstract **Negative Indicators:** - Vague abstract - Limited experiments mentioned - No baselines mentioned - Poor writing in abstract - incremental claims only --- ## Integration with Paper Discovery When using arXiv search (`arxiv-search-guide.md`): 1. **Search** for relevant papers 2. **Extract metadata** from arXiv pages 3. **Quick screen** by abstract/relevance 4. **Detailed review** of promising papers 5. **Score using** these criteria 6. **Rank and select** top candidates --- ## Notes - These criteria are designed for ML papers specifically - Adjust weights based on your specific needs - Use scores as relative comparisons, not absolute judgments - Consider venue reputation as additional signal - Code availability is increasingly important for reproducibility