DOMAINS.md 4.9 KB

AI/ML 研究领域方法分类知识

综述选题时参考此文件设计分类框架。


1. Computer Vision (cs.CV)

Image Classification

  • CNN 系列: ResNet, EfficientNet, ConvNeXt
  • Vision Transformer: ViT, DeiT, Swin Transformer
  • MLP 系列: MLP-Mixer, gMLP
  • 高效架构: MobileNet, ShuffleNet, EfficientFormer

Object Detection

  • Anchor-based: Faster R-CNN, RetinaNet, YOLO 系列
  • Anchor-free: CenterNet, FCOS, CornerNet
  • Transformer-based: DETR, Deformable DETR, DINO
  • 开放集检测: OWL-ViT, Grounding DINO

Image Segmentation

  • 语义分割: FCN, DeepLab, SegFormer
  • 实例分割: Mask R-CNN, SOLOv2, Mask2Former
  • 全景分割: Panoptic FPN, kMaX-DeepLab
  • 通用分割: SAM, Segment Everything Everywhere

Image Generation

  • GAN 系列: StyleGAN, BigGAN, GigaGAN
  • Diffusion Models: DDPM, LDM/Stable Diffusion, DALL-E
  • Autoregressive: VQGAN, Parti, LlamaGen
  • Flow Matching: Rectified Flow, Stable Diffusion 3

Video Understanding

  • Action Recognition: SlowFast, TimeSformer, VideoMAE
  • Video Generation: Sora, CogVideo, Gen-3
  • Video-Language: VideoCLIP, VideoLLaVA

2. Natural Language Processing (cs.CL)

Language Models

  • Encoder: BERT, RoBERTa, DeBERTa
  • Decoder: GPT 系列, LLaMA, Mistral, Qwen
  • Encoder-Decoder: T5, BART, UL2
  • Mixture of Experts: Mixtral, Switch Transformer

Reasoning & Agents

  • Chain-of-Thought: CoT, Tree of Thoughts, Graph of Thoughts
  • Tool Use: Toolformer, Gorilla, ToolLLM
  • Agent: ReAct, AutoGPT, Voyager
  • Planning: SayCan, Inner Monologue

Retrieval-Augmented Generation (RAG)

  • Dense Retrieval: DPR, Contriever, E5
  • RAG 架构: RAG, RETRO, Atlas
  • 长上下文: RoPE 扩展, Ring Attention

Alignment & Safety

  • RLHF: InstructGPT, PPO, DPO
  • Constitutional AI
  • Red Teaming & Jailbreak Defense

3. Vision-Language Models (cs.CV + cs.CL)

Image-Text Pretraining

  • Contrastive: CLIP, ALIGN, SigLIP
  • Generative: Flamingo, BLIP-2, LLaVA
  • Unified: CoCa, PaLI, Qwen-VL

Visual Question Answering

  • VQA 模型: mPLUG, InstructBLIP
  • Chart/Doc Understanding: Pix2Struct, DocPedia

Image Captioning & Generation

  • Caption: CoCa, GIT, BLIP-2
  • Text-to-Image: DALL-E, Stable Diffusion, Midjourney

4. Graph Neural Networks (cs.LG)

基础架构

  • Message Passing: GCN, GAT, GraphSAGE
  • Spectral: ChebNet, GNN-FiLM
  • Expressivity: GIN, k-WL GNN

应用领域

  • 分子性质预测: SchNet, DimeNet, GemNet
  • 推荐系统: LightGCN, PinSage
  • 知识图谱: R-GCN, CompGCN

可扩展性

  • 采样: GraphSAGE, ClusterGCN
  • 分布式: DistDGL, P3

5. Reinforcement Learning (cs.LG + cs.AI)

基础方法

  • Value-based: DQN, Rainbow, C51
  • Policy Gradient: PPO, SAC, TD3
  • Model-based: Dreamer, MBPO, TD-MPC

离线 RL

  • Conservative: CQL, IQL
  • Decision Transformer 系列

Multi-Agent RL

  • CTDE: QMIX, MAPPO
  • Communication: CommNet, TarMAC

6. Generative Models (cs.LG + cs.CV)

Diffusion Models

  • 基础: DDPM, Score Matching
  • 加速: DDIM, DPM-Solver, Consistency Models
  • 条件生成: Classifier-Free Guidance
  • 架构: U-Net, DiT, U-ViT

Flow Models

  • Normalizing Flows: RealNVP, Glow
  • Continuous: FFJORD, Flow Matching
  • Rectified Flow

VAE 系列

  • 基础 VAE, β-VAE
  • VQ-VAE, dVAE
  • Hierarchical VAE

7. Self-Supervised Learning (cs.LG + cs.CV)

Contrastive Learning

  • SimCLR, MoCo, BYOL, DINO
  • Barlow Twins, VICReg

Masked Prediction

  • 视觉: MAE, BEiT, iBOT
  • 语言: MLM (BERT), CLM (GPT)
  • 多模态: MultiMAE

Foundation Models

  • 视觉: DINOv2, SAM, SegGPT
  • 语言: GPT-4, Claude, Gemini
  • 多模态: GPT-4V, Gemini, LLaVA

8. Efficient AI (cs.LG + cs.AR)

模型压缩

  • 剪枝: Structured/Unstructured Pruning
  • 量化: INT8, INT4, GPTQ, AWQ
  • 蒸馏: Knowledge Distillation

高效架构

  • Linear Attention: Linformer, Performer
  • State Space: Mamba, S4, H3
  • Mixture of Experts

高效训练

  • LoRA, QLoRA, Adapter
  • Mixed Precision, Gradient Checkpointing
  • Distributed: FSDP, DeepSpeed, Megatron

9. AI for Science (cs.LG + physics/bio/chem)

蛋白质

  • AlphaFold, ESMFold, RFdiffusion
  • Protein Language Models: ESM-2, ProtTrans

药物发现

  • 分子生成: MolGPT, REINVENT
  • 对接: DiffDock, EquiBind

天气/气候

  • FourCastNet, Pangu-Weather, GenCast

数学推理

  • AlphaProof, Lean, Isabelle
  • Mathematical Reasoning in LLMs

10. Robotics & Embodied AI (cs.RO + cs.AI)

操控

  • 模仿学习: ACT, Diffusion Policy
  • 强化学习: SAC, PPO for Manipulation

导航

  • Visual Navigation: CLIP-Nav
  • Embodied QA: EQA, MP3D

Foundation Models for Robotics

  • RT-2, Octo, OpenVLA
  • Language-Conditioned Policies

通用评估指标

领域 常用指标
分类 Accuracy, Top-5 Acc, F1
检测 AP, AP50, AP75, mAP
分割 Dice, IoU, HD95, ASSD
生成 FID, IS, CLIP Score
NLP BLEU, ROUGE, BERTScore
RL Cumulative Reward, Success Rate