# Writing Techniques and Patterns This file contains actionable sentence patterns, transition phrases, and writing techniques extracted from successful ML conference papers. --- ## Transition Phrases ### Literature Review Transitions **Source:** Various NeurIPS/ICML papers **Introducing Problems:** - "However, these methods suffer from [limitation]." - "Despite recent progress, [challenge] remains unsolved." - "While existing approaches address [aspect], they struggle with [issue]." **Presenting Solutions:** - "To address this, we propose..." - "We overcome this limitation by..." - "Our key insight is that..." **Connecting to Related Work:** - "Building on [prior work], we extend..." - "Unlike approaches that [method], we instead..." - "Following the success of [paper], we apply..." ### Methods Section Transitions **Source:** "BERT: Pre-training of Deep Bidirectional Transformers", NAACL (2019) **Describing Components:** - "Our model consists of two main components: [A] and [B]." - "We divide our approach into [N] stages: [list]." **Explaining Rationale:** - "We choose this architecture because..." - "This formulation allows us to..." - "Motivated by [intuition], we design..." ### Results Section Transitions **Source:** "Attention Is All You Need", NeurIPS (2017) **Presenting Findings:** - "Our method achieves [result], outperforming baselines by [margin]." - "As shown in Table 1, our approach..." - "Figure 2 demonstrates that..." **Analyzing Results:** - "These results suggest that [insight]." - "Notably, we observe that..." - "This improvement indicates that..." ### Discussion Transitions **Source:** "Language Models are Few-Shot Learners", GPT-3 (2020) **Interpreting Findings:** - "These findings reveal that..." - "This performance gap suggests that..." - "The strong correlation between...indicates..." **Connecting to Broader Context:** - "Beyond the specific task, our results imply..." - "This has important implications for..." **Acknowledging Limitations:** - "It is important to note that our study is limited to..." - "While these results are promising, several questions remain..." --- ## Sentence Patterns ### Claim Presentation **Source:** "Attention Is All You Need", NeurIPS (2017) **Strong Claims:** - "We show that [approach] achieves [result]." - "We demonstrate that [method] outperforms..." - "We prove that [technique] converges to..." **Nuanced Claims:** - "Our results suggest that [factor] contributes to..." - "We observe that [phenomenon] emerges when..." - "Experiments indicate that [approach] is particularly effective for..." ### Technical Description **Source:** "Adam: A Method for Stochastic Optimization", ICLR (2015) **Algorithm Description:** - "Formally, we optimize [objective] using [method]." - "The update rule for [parameter] is given by..." - "We modify the standard [approach] by..." **Implementation Details:** - "In practice, we implement [feature] as..." - "For computational efficiency, we approximate..." - "We initialize [parameters] using..." ### Results Presentation **Source:** "BERT: Pre-training of Deep Bidirectional Transformers", NAACL (2019) **Quantitative Results:** - "Our model achieves [score] (±[std]), improving over..." - "On [dataset], we obtain [result], compared to..." - "We observe a [percentage]% improvement over baselines." **Statistical Reporting:** - "Results are averaged over N runs with different seeds." - "Standard deviations are shown in parentheses." - "The improvement is statistically significant (p<0.01)." --- ## Clarity Techniques ### Active Voice Usage **Source:** Various well-written papers **Passive (avoid):** - "The model was trained using..." - "Experiments were conducted on..." **Active (prefer):** - "We trained the model using..." - "We conducted experiments on..." **Guideline:** Use active voice for actions you performed. Use passive for general facts or when the actor is unclear. ### Specificity Over Generality **Source:** "Attention Is All You Need", NeurIPS (2017) **Vague (avoid):** - "This approach improves performance." - "The method learns good representations." **Specific (prefer):** - "This approach improves accuracy by 15%." - "The method learns representations that transfer to downstream tasks." **Guideline:** Be quantitative whenever possible. Use specific numbers and metrics. ### Signposting **Source:** "BERT: Pre-training of Deep Bidirectional Transformers", NAACL (2019) **Section Openings:** - "We now describe our model architecture." - "We evaluate on three tasks: [list]." - "The results suggest three key insights:" **Internal Structure:** - "First, we [action]. Next, we [action]. Finally, we [action]." - "Our approach has three stages: [A], [B], and [C]." **Guideline:** Use explicit signposting to help tired reviewers follow your paper. --- ## Common Phrase Templates ### Opening Abstract **Good Examples:** - "We introduce [method], a novel approach for [task]." - "We present [method], which achieves [result] by [mechanism]." - "We propose [framework] to address [challenge]." **Avoid:** - "In this paper, we study..." (generic) - "Large language models have..." (overused opening) ### Introducing Related Work **Good Examples:** - "Recent work has shown promise in [area] [refs]." - "Several approaches have been proposed for [task] [refs]." - "The standard approach to [problem] is [method] [refs]." ### Describing Experiments **Good Examples:** - "We evaluate on [datasets], comparing against [baselines]." - "We conduct ablation studies to validate [component]." - "To verify [claim], we experiment with [variations]." ### Presenting Results **Good Examples:** - "Table 1 shows that our method outperforms all baselines." - "As shown in Figure 3, performance improves as [factor] increases." - "Our method achieves state-of-the-art on [task/metric]." ### Discussing Limitations **Good Examples:** - "Our approach has limitations: [constraint]." - "We note that our method is currently restricted to [condition]." - "A key limitation is [issue], which we leave for future work." --- ## Writing Principles ### From Top Papers **Clarity First:** - "Make it easy for reviewers to understand your contribution." - "Use concrete examples and specific language." - "Avoid vague or ambiguous statements." **Rigorous Presentation:** - "Provide enough detail for reproduction." - "Include error bars and statistical tests." - "Show negative results when relevant." **Storytelling:** - "Your paper tells a story: problem → approach → solution → impact." - "Make the narrative clear in the introduction." - "Each section should advance the story." **Honesty:** - "Acknowledge limitations explicitly." - "Don't overclaim results." - "Trust reviewers to appreciate honesty." --- ## Notes - **Adapt patterns**: These templates can and should be adapted to your specific context - **Venue matters**: Some venues prefer certain styles (check venue-specific guides) - **Consistency**: Use consistent terminology throughout - **Tone**: Maintain professional, objective tone - **Length**: Keep transitions concise; don't over-explain **Attribution:** All patterns extracted from analyzed papers with source citations for traceability. --- ## "Surprisingly" Findings: Multi-Level Reporting Pattern **Source**: Kaiming He et al., "Exploring Plain Vision Transformer Backbones for Object Detection" (ViTDet, ECCV 2022), "Mean Flows" (2025) **Paper Type**: Design simplification, unexpected findings ### The Three-Level "Surprisingly" Pattern #### Level 1: Basic Surprise (Abstract/Opening) **Pattern**: ```markdown Surprisingly, we observe: (i) [simple sufficient without common practice] and (ii) [simple sufficient without common practice] ``` **Example (ViTDet Abstract)**: ```latex Surprisingly, we observe: (i) it is sufficient to build a simple feature pyramid from a single-scale feature map (without the common FPN design) and (ii) it is sufficient to use window attention (without shifting) aided with very few cross-window propagation blocks. ``` **Key Techniques**: - **Structured list**: Use (i) and (ii) to separate findings - **"sufficient"**: Scientific phrasing (not "optimal") - **"without [common practice]"**: Negative differentiation #### Level 2: Competitive Surprise (Introduction) **Pattern**: ```markdown More surprisingly, under some circumstances, our [method] can compete with the leading [competitors]. ``` **Example (ViTDet Introduction)**: ```latex More surprisingly, under some circumstances, our plain-backbone detector, named ViTDet, can compete with the leading hierarchical-backbone detectors (e.g., Swin, MViT). ``` **Key Techniques**: - **"More surprisingly"**: Progressive emphasis - **"under some circumstances"**: Measured claim - **"can compete with"**: Not "beat", competitive - **Name competitors**: Specific (Swin, MViT) #### Level 3: Superiority Surprise (Results) **Pattern**: ```markdown With [specific condition], our [method] can outperform the [competitors] that use [stronger condition]. The gains are more prominent for [condition]. ``` **Example**: ```latex With Masked Autoencoder (MAE) pre-training, our plain-backbone detector can outperform the hierarchical counterparts that are pre-trained on ImageNet-1K/21K with supervision (Figure 3). The gains are more prominent for larger model sizes. ``` **Key Techniques**: - **Specific conditions compared**: MAE vs ImageNet supervised - **"outperform"**: Stronger claim here (qualified by conditions) - **"The gains are more prominent for..."**: Pattern observation --- ### "Surprisingly" Variants #### "Interestingly" - Pattern Observation + Explanation **Pattern**: ```markdown Interestingly, [observation]. This is in line with the observation in [paper] that [their finding]. [Additional explanation]. ``` **Example (ViTDet)**: ```latex Interestingly, performing propagation in the last 4 blocks is nearly as good as even placement. This is in line with the observation in ViT [14] that ViT has longer attention distance in later blocks and is more localized in earlier ones. ``` **Use when**: You have literature support for your observation #### "Notably" - Important Detail **Pattern**: ```markdown Notably, [counter-intuitive result or impressive number]. ``` **Examples**: - "Notably, even embedding only the interval t−r yields reasonable results." - "Notably, our method is self-contained and trained entirely from scratch." **Use when**: Emphasizing importance or counter-intuitive finding #### "It is worth noting that" - Caveat/Clarification **Pattern**: ```markdown It is worth noting that [technical caveat or clarification]. ``` **Examples**: - "It is worth noting that even when the conditional flows are designed to be straight ('rectified'), the marginal velocity field typically induces a curved trajectory." - "It is worth noting that the 3.34× memory (49G) is estimated as if the same training implementation could be used, which is not practical and requires special memory optimization." **Use when**: Preventing misunderstanding or clarifying technical details --- ### When to Use "Surprisingly" **DO use**: - When finding genuinely contradicts common practice - When simple solution works as well as complex one - When you have explanation (literature, hypothesis, theory) - With measured claims ("under some circumstances", "can compete") - With "sufficient" not "optimal" **DON'T use**: - For incremental improvements (use "additionally" instead) - Without explanation/justification - Overgeneralizing ("always", "proves") - For expected results --- ## Ablation Study Writing Techniques **Source**: Kaiming He papers (ViTDet, MeanFlows, MoCo v2) ### Table Design: Incremental Progression **Pattern**: ```markdown Table X: [Component] Ablation ┌──────────────────────────────────────────┐ │ no [component] | AP | Δ │ │ (a) [common variant] | AP | +X.X │ │ (b) [another variant] | AP | +Y.Y │ │ (c) ours: simple | AP | +Z.Z ✓ │ └──────────────────────────────────────────┘ ``` **Example (ViTDet Table 1)**: ```latex pyramid design APbox APmask ───────────────────────────────────────── no feature pyramid 47.8 42.5 (a) FPN, 4-stage 50.3 44.9 (b) FPN, last-map 50.9 45.3 (c) simple feature pyramid 51.2 45.5 ``` **Techniques**: - **Baseline**: "no [X]" shows it's needed - **(a), (b), (c)**: Progressive variations - **Δ标注**: (+2.5) - Show incremental gains - **Correspondence**: "The entries (a-c) correspond to Figure X (a-c)" - **Conclusion**: "our simple pyramid is sufficient" --- ### Destructive Ablation: Proving Necessity **Pattern**: ```markdown We conduct a destructive comparison in which [wrong choice] is intentionally performed. Meaningful results are achieved only when [correct choice]. ``` **Example (MeanFlows Table 1b)**: ```latex In Tab. 1b, we conduct a destructive comparison in which incorrect JVP computation is intentionally performed. jvp tangent FID, 1-NFE (v, 0, 1) [correct] 61.06 (v, 0, 0) [wrong] 268.06 (v, 1, 0) [wrong] 329.22 (v, 1, 1) [wrong] 137.96 It shows that meaningful results are achieved only when the JVP computation is correct. ``` **Use when**: You need to prove a design choice is necessary (not just optional) --- ### Ablation Narrative: Observation → Explanation **Pattern 1: Observation + Literature Support** ```latex We observe that [observation]. This is consistent with the observation in [paper] that [their finding]. ``` **Pattern 2: Observation + Hypothesis** ```latex We hypothesize that this is because [reason 1] and also because [reason 2]. ``` **Pattern 3: Observation + Theory** ```latex [Observation]. This indicates that [theoretical explanation]. ``` --- ## Theory-Driven Paper Keywords **Source**: Kaiming He et al., "Mean Flows for One-step Generative Modeling" (2025) ### Naturalness Keywords (use to describe your theory) - **"naturally"** - "This naturally leads to..." - **"intrinsic"** - "intrinsic relation between..." - **"well-defined"** - "well-defined problem" - **"principled"** - "principled basis for..." - **"first principles"** - "from first principles" - **"solely originated from"** - "solely from definition" ### Independence Keywords - **"does not depend on"** - Theory independence from implementation - **"independent of"** - Independent of specific choices - **"self-contained"** - System independence - **"from scratch"** - No external dependencies - **"without any X"** - Negative list (what you don't need) ### Differentiation Keywords - **"in contrast to"** - Conceptual contrast - **"unlike"** - Direct comparison - **"typically"** - "typically modeled" (their approach) - **"prior works typically rely on"** - Their limitation - **"imposed as"** - Artificial constraint (theirs) ### Avoid (Too Promotional) - ❌ "revolutionary" - Let others say it - ❌ "breakthrough" - Overused - ❌ "completely eliminates" - Too absolute - ✅ "significantly outperforms" - Strong but measured - ✅ "substantial improvement" - Professional --- ## Design Simplification Paper Keywords **Source**: Kaiming He et al., "Exploring Plain Vision Transformer Backbones for Object Detection" (ViTDet, 2022) ### Philosophy Keywords - **"minimal"** - "minimal adaptations" - **"sufficient"** - "is sufficient to" (not "optimal") - **"simple"** - "simple feature pyramid" - **"plain"** - "plain backbone" - **"decouple"** - "decouple pre-training from fine-tuning" - **"independence"** - "independence of upstream vs downstream" ### Direction Keywords - **"pursue a different direction"** - Clear positioning - **"in contrast to"** - Differentiation - **"abandons"** - What you give up (respectfully) - **"enables"** - What your approach allows ### Measured Claim Keywords - **"under some circumstances"** - Not always - **"can compete with"** - Competitive, not dominant - **"more prominent for"** - When effect is stronger - **"is sufficient"** - Necessary, not maximal --- ## Updated: 何凯明的写作技巧 > 来源: 分析了何凯明的 11 篇代表性论文(扩展分析,包括 MeanFlows、ViTDet、MAR 等) > 添加时间: 2026-01-26 > 扩展内容包括: > - "Surprisingly" 发现的多层次报告模式 > - Ablation Study 的增量式和破坏性实验设计 > - 理论驱动型论文的关键词策略 > - 设计简化型论文的关键词策略 ### 句子结构偏好 **主动语态优先** (被动语态仅 9.3%) 何凯明偏好使用主动、直接的陈述: **✅ 推荐 (何凯明的风格):** - "We present a framework for [task]" - "Our method achieves [result]" - "This formulation enables [benefit]" **❌ 避免:** - "A framework is presented for [task]" - "Results are achieved by our method" ### 贡献表达方式 何凯明常用的贡献表达模式: **模式 1: 直接陈述** ``` We propose [method] that [feature]. We demonstrate [result] on [dataset]. ``` **模式 2: 对比强调** ``` Unlike [previous work], our approach [difference]. This leads to [improvement] in [metric]. ``` **模式 3: 问题-解决方案** ``` [Challenge] remains difficult. We address this by [solution]. ``` ### 技术术语使用 何凯明论文中的高频术语组合: | 术语类别 | 常用术语 | |---------|---------| | **网络架构** | deep neural networks, convolutional, residual, activation | | **训练过程** | training, validation, optimization, convergence | | **性能评估** | outperforms, achieves, improves, surpasses | | **方法定位** | state-of-the-art, baseline, framework, algorithm | | **所有权** | our method, our approach, our framework | ### 过渡短语 何凯明论文中常用的过渡短语(按频率排序): 1. **however** - 用于对比不同观点 2. **in addition/additionally** - 补充信息 3. **furthermore** - 递进说明 4. **therefore/thus** - 得出结论 5. **specifically** - 举例说明 6. **conversely** - 对比说明 ### 数值结果呈现 何凯明在呈现数值结果时的模式: **精确性优先:** ``` Our method achieves 76.4% accuracy (Table X). This represents a 28% relative improvement. ``` **对比式呈现:** ``` Compared to baseline (73.2%), our method (76.4%) improves by 3.2 percentage points. ``` **强调意义:** ``` This result won the 1st place in [competition/task]. ``` ### 图表引用模式 何凯明引用图表的标准格式: **图表引入:** - "Fig. X shows [现象]" - "Table Y summarizes [结果]" - "As shown in Fig. Z, [结论]" **图表描述:** - "The solid line denotes [条件 A], the dashed line [条件 B]" - "The blue curve shows [指标], while the red curve shows [指标]" ### 网络架构描述 何凯明在描述网络架构时的特点: 1. **表格化呈现** - 使用表格列出层配置 2. **可视化辅助** - 配合架构图 3. **简洁符号** - 使用清晰的数学符号 4. **示例:** ``` layer name | output size | configuration conv1 | 112×112 | 7×7, 64, /2 ```