This repository is the reading list on Deep Learning for Mathematical Reasoning (DL4MATH).
Contributors: Pan Lu @UCLA, Liang Qiu @UCLA, Wenhao Yu @Notre Dame, Sean Welleck @UW, Kai-Wei Chang @UCLA
For more details, please refer to the paper: A Survey of Deep Learning for Mathematical Reasoning.
π If you have any suggestions or notice something we missed, please don't hesitate to let us know. You can directly email Pan Lu (lupantech@gmail.com), comment on the twitter, or post an issue on this repo.
- A Survey of Question Answering for Math and Science Problem, arXiv:1705.04530 [paper]
- The Gap of Semantic Parsing: A Survey on Automatic Math Word Problem Solvers, TPAMI 2019 [paper]
- Representing Numbers in NLP: a Survey and a Vision, NACL 2021 [paper]
- Survey on Mathematical Word Problem Solving Using Natural Language Processing, ICIICT 2021 [paper]
- A Survey in Mathematical Language Processing, arXiv:2205.15231 [paper]
- Partial Differential Equations Meet Deep Neural Networks: A Survey, arXiv:2211.05567 [paper]
- π₯ Reasoning with Language Model Prompting: A Survey, arXiv:2212.09597 [paper]
- π₯ Towards Reasoning in Large Language Models: arXiv:2212.10403 [paper]
- π₯ A Survey for In-context Learning, arXiv:2301.00234 [paper]
- π₯ How does GPT Obtain its Ability? Tracing Emergent Abilities of Language Models to their Sources, Dec 2022, Yao Fuβs Notion [link]
- π₯ The 1st MATH-AI Workshop: the Role of Mathematical Reasoning in General Artificial Intelligence, ICLR 2021 [website]
- π₯ Math AI for Education: Bridging the Gap Between Research and Smart Education (MATHAI4ED), NeurIPS 2021 [website]
- π₯ The 1st Workshop on Mathematical Natural Language Processing, EMNLP 2022 [website]
- π₯ The 2nd MATH-AI Workshop: Toward Human-Level Mathematical Reasoning, NeurIPS 2022 [website]
- π₯ FLAIM: Formal Languages, AI and Mathematics, IHP & META 2022 [YouTube]
- π₯ AI to Assist Mathematical Reasoning: A Workshop, NASEM 2023 [YouTube]
- Can GPT-3 do math? | Grant Sanderson and Lex Fridman, 2020 [YouTube]
- Computer Scientist Explains One Concept in 5 Levels of Difficulty, 2022 [YouTube]
- [AI2/Verb395] Learning to Solve Arithmetic Word Problems with Verb Categorization, EMNLP 2014 [paper]
- [Alg514] Learning to automatically solve algebra word problems, ACL 2014 [paper]
- [IL] Reasoning about Quantities in Natural Language, TACL 2015 [paper]
- [SingleEQ] Parsing Algebraic Word Problems into Equations, TACL 2015 [paper]
- [DRAW] Draw: A challenging and diverse algebra word problem set, 2015 [paper]
- [Dolphin1878] Automatically solving number word problems by semantic parsing and reasoning, EMNLP 2015 [paper]
- [Dolphin18K] How well do computers solve math word problems? large-scale dataset construction and evaluation, ACL 2016 [paper]
- [MAWPS] MAWPS: A math word problem repository, NAACL-HLT 2016 [paper]
- [AllArith] Unit dependency graph and its application to arithmetic word problem solving, AAAI 2017 [paper]
- [DRAW-1K] Annotating Derivations: A New Evaluation Strategy and Dataset for Algebra Word Problems, ACL 2017 [paper]
- π₯ [Math23K] Deep neural solver for math word problems, EMNLP 2017 [paper]
- [AQuA] Program Induction by Rationale Generation: Learning to Solve and Explain Algebraic Word Problems, ACL 2017 [paper]
- [Aggregate] Mapping to Declarative Knowledge for Word Problem Solving, TACL 2018 [paper]
- π₯ [MathQA] MathQA: Towards interpretable math word problem solving with operation-based formalisms, NAACL-HLT 2019 [paper]
- [ASDiv] A Diverse Corpus for Evaluating and Developing English Math Word Problem Solvers, ACL 2020 [paper]
- [HMWP] Semantically-Aligned Universal Tree-Structured Solver for Math Word Problems, EMNLP 2020 [paper]
- [Ape210K] Ape210k: A large-scale and template-rich dataset of math word problems, arXiv:2009.11506 [paper]
- π₯ [SVAMP] Are NLP Models really able to Solve Simple Math Word Problems?, NAACL-HIT 2021 [paper]
- π₯ [GSM8K] Training verifiers to solve math word problems, arXiv:2110.14168 [paper]
- π₯ [IconQA] IconQA: A New Benchmark for Abstract Diagram Understanding and Visual Language Reasoning, NeurIPS 2021] [paper]
- π₯ [MathQA-Python] Program synthesis with large language models, arXiv:2108.07732 [paper]
- [ArMATH] ArMATH: a Dataset for Solving Arabic Math Word Problems, LREC 2022 [paper]
- π₯ [TabMWP] Dynamic Prompt Learning via Policy Gradient for Semi-structured Mathematical Reasoning, arXiv:2209.14610, 2022 [paper]
- [MML] Four Decades of Mizar, Journal of Automated Reasoning 2015, [paper]
- [HolStep] HolStep: A Machine Learning Dataset for Higher-order Logic Theorem Proving, ICLR 2017 [paper]
- [GamePad] GamePad: A Learning Environment for Theorem Proving, ICLR 2019 [paper]
- π₯ [CoqGym] Learning to Prove Theorems via Interacting with Proof Assistants, ICML 2019 [paper]
- [HOList] HOList: An environment for machine learning of higher order logic theorem proving, ICML 2019 [paper]
- [IsarStep] IsarStep: a Benchmark for High-level Mathematical Reasoning, ICLR 2021 [paper]
- [LISA] LISA: Language models of ISAbelle proofs, AITP 2021 [paper]
- [INT] INT: An Inequality Benchmark for Evaluating Generalization in Theorem Proving, ICLR 2021 [paper]
- π₯ [NaturalProofs] NaturalProofs: Mathematical Theorem Proving in Natural Language, NeurIPS 2021 [paper]
- [NaturalProofs-Gen] NaturalProver: Grounded Mathematical Proof Generation with Language Models, NeurIPS 2022 [paper]
- π₯ [MiniF2F] MiniF2F: a cross-system benchmark for formal Olympiad-level mathematics, ICLR 2022 [paper]
- π₯ [LeanStep] Proof Artifact Co-training for Theorem Proving with Language Models, ICLR 2022 [paper]
- π₯ [miniF2F+informal] Draft, Sketch, and Prove: Guiding Formal Theorem Provers with Informal Proofs, arXiv:2210.12283 [paper]
- π₯ [GEOS] Solving geometry problems: Combining text and diagram interpretation, EMNLP 2015 [paper]
- [GeoShader] Synthesis of solutions for shaded area geometry problems, The Thirtieth International Flairs Conference, 2017 [paper]
- [GEOS++] From textbooks to knowledge: A case study in harvesting axiomatic knowledge from textbooks to solve geometry problems, EMNLP 2017 [paper]
- [GEOS-OS] Learning to solve geometry problems from natural language demonstrations in textbooks, Proceedings of the 6th Joint Conference on Lexical and Computational Semantics, 2017 [paper]
- π₯ [Geometry3K] Inter-GPS: Interpretable Geometry Problem Solving with Formal Language and Symbolic Reasoning, ACL 2021 [paper]
- [GeoQA] GeoQA: A Geometric Question Answering Benchmark Towards Multimodal Numerical Reasoning, Findings of ACL 2021 [paper]
- [GeoQA+] An Augmented Benchmark Dataset for Geometric Question Answering through Dual Parallel Text Encoding, COLING 2022 [paper]
- π₯ [UniGeo] UniGeo: Unifying Geometry Logical Reasoning via Reformulating Mathematical Expression, EMNLP 2022 [paper]
- [QUAREL] QUAREL: A Dataset and Models for Answering Questions about Qualitative Relationships, AAAI 2019 [paper]
- [McTaco] βGoing on a vacationβ takes longer than βGoing for a walkβ: A Study of Temporal Commonsense Understanding, EMNLP 2019 [paper]
- π₯ [DROP] DROP: A Reading Comprehension Benchmark Requiring Discrete Reasoning Over Paragraphs, NAACL 2019 [paper]
- π₯ [Mathematics] Analysing Mathematical Reasoning Abilities of Neural Models, ICLR 2019 [paper]
- [FinQA] FinQA: A Dataset of Numerical Reasoning over Financial Data, EMNLP 2021 [paper]
- [Fermi] How Much Coffee Was Consumed During EMNLP 2019? Fermi Problems: A New Reasoning Challenge for AI, EMNLP 2020 [paper]
- π₯ [MATH, AMPS] Measuring Mathematical Problem Solving With the MATH Dataset, NeurIPS 2021 [paper]
- [TAT-QA] TAT-QA: A Question Answering Benchmark on a Hybrid of Tabular and Textual Content in Finance, ACL-JCNLP 2021 [paper]
- [MultiHiertt] MultiHiertt: Numerical Reasoning over Multi Hierarchical Tabular and Textual Data, ACL 2022 [paper]
- [NumGLUE] NumGLUE: A Suite of Fundamental yet Challenging Mathematical Reasoning Tasks, ACL 2022 [paper]
- π₯ [Lila] Lila: A Unified Benchmark for Mathematical Reasoning, EMNLP 2022 [paper]
- [FigureQA] Figureqa: An annotated figure dataset for visual reasoning, arXiv:1710.07300 [paper]
- π₯ [DVQA] Dvqa: Understanding data visualizations via question answering, CVPR 2018 [paper]
- [DREAM] DREAM: A Challenge Dataset and Models for Dialogue-Based Reading Comprehension,TACL 2019 [paper]
- [EQUATE] EQUATE: A Benchmark Evaluation Framework for Quantitative Reasoning in Natural Language Inference, CoNLL 2019 [paper]
- π₯ [NumerSense] Birds have four legs?! NumerSense: Probing Numerical Commonsense Knowledge of Pre-trained Language Models, EMNLP 2020 [paper]
- [MNS] Machine Number Sense: A Dataset of Visual Arithmetic Problems for Abstract and Relational Reasoning, AAAI 2020 [paper]
- [P3] Programming Puzzles, NeurIPS 2021 [paper]
- [NOAHQA] NOAHQA: Numerical Reasoning with Interpretable Graph Question Answering Dataset, Findings of EMNLP 2021 [paper]
- [ConvFinQA] ConvFinQA: Exploring the Chain of Numerical Reasoning in Conversational Finance Question Answering, arXiv:2210.03849 [paper]
- [PGDP5K] PGDP5K: A Diagram Parsing Dataset for Plane Geometry Problems, arXiv:2205.0994 [paper]
- [GeoRE] GeoRE: A Relation Extraction Dataset for Chinese Geometry Problems, NeurIPS 2021 MATHAI4ED Workshop [paper]
- π₯ [ScienceQA] Learn to Explain: Multimodal Reasoning via Thought Chains for Science Question Answering, NeurIPS 2022 [paper]
- [LSTM] Long short-term memory, Neural computation 1997 [paper]
- [Seq2Seq] Sequence to sequence learning with neural networks, NeurIPS 2014 [paper]
- [GRU] Learning Phrase Representations using RNN Encoder--Decoder for Statistical Machine Translation, EMNLP 2014 [paper]
- [Attention] Neural machine translation by jointly learning to align and translate, arXiv:1409.0473 [paper]
- [Attention] Show, attend and tell: Neural image caption generation with visual attention, ICML 2015 [paper]
- [Faster-RCNN] Faster r-cnn: Towards real-time object detection with region proposal networks, NeurIPS 2015 [paper]
- [TreeLSTM] Improved Semantic Representations From Tree-Structured Long Short-Term Memory Networks, ACL 2015 [paper]
- [BiLSTM] Google's neural machine translation system: Bridging the gap between human and machine translation, arXiv:1609.08144 [paper]
- [ResNet] Deep residual learning for image recognition, CVPR 2016 [paper]
- [ConvS2S] Convolutional sequence to sequence learning, ICML 2017 [paper]
- [Top-Down Attention] Bottom-up and top-down attention for image captioning and visual question answering, CVPR 2018 [paper]
- [FiLM] Film: Visual reasoning with a general conditioning layer, AAAI 2018 [paper]
- [BAN] Bilinear Attention Networks, NeurIPS 2018 [paper]
- [DAFA] Dynamic Fusion With Intra-and Inter-Modality Attention Flow for Visual Question Answering, CVPR 2018 [paper]
- π₯ [DNS] Deep Neural Solver for Math Word Problems, EMNLP 2017 [paper]
- π₯ [AnsRat] Program induction by rationale generation: Learning to solve and explain algebraic word problems, ACL 2017 [paper]
- [Math-EN] Translating a Math Word Problem to a Expression Tree, EMNLP 2018 [paper]
- [CASS] Neural math word problem solver with reinforcement learning, COLING 2018 [paper]
- [SelfAtt] Data-driven methods for solving algebra word problems, arXiv:1804.10718 [paper]
- [S-Aligned] Semantically-Aligned Equation Generation for Solving and Reasoning Math Word Problems, NAACL 2019 [paper]
- [T-RNN] Template-based math word problem solvers with recursive neural networks, AAAI 2019 [paper]
- [GROUP-ATT] Modeling intra-relation in math word problems with different functional multi-head attentions, ACL 2019 [paper]
- [QuaSP+] QUAREL: A Dataset and Models for Answering Questions about Qualitative Relationships, AAAI 2019 [paper]
- [SMART] SMART: A Situation Model for Algebra Story Problems via Attributed Grammar, AAAI 2021 [paper]
- [AST-Dec] Tree-structured decoding for solving math word problems, EMNLP 2019 [paper]
- π₯ [GTS] A Goal-Driven Tree-Structured Neural Model for Math Word Problems, IJCAI 2019 [paper]
- [CoqGym] Learning to Prove Theorems via Interacting with Proof Assistants, ICML 2019 [paper]
- [KA-S2T] A knowledge-aware sequence-to-tree network for math word problem solving, EMNLP 2020 [paper]
- [TSN-MD, NT-LSTM] Solving arithmetic word problems by scoring equations with recursive neural networks, Expert Systems with Applications 2021 [paper]
- [NS-Solver] Neural-Symbolic Solver for Math Word Problems with Auxiliary Tasks, ACL 2021 [paper]
- [NumS2T] Math word problem solving with explicit numerical values, ACL 2021 [paper]
- [HMS] Hms: A hierarchical solver with dependency-enhanced understanding for math word problem, AAAI 2021 [paper]
- [LBF] Learning by fixing: Solving math word problems with weak supervision, AAAI 2021 [paper]
- [Seq2DAG] A bottom-up dag structure extraction model for math word problems, AAAI 2021 [paper]
- [Graph2Tree] Graph-to-Tree Neural Networks for Learning Structured Input-Output Translation with Applications to Semantic Parsing and Math Word Problem, EMNLP 2020 [paper]
- [Multi-E/D] Solving math word problems with multi-encoders and multi-decoders, COLING 2020 [paper]
- π₯ [Graph2Tree] Graph-to-Tree Learning for Solving Math Word Problems, ACL 2020 [paper]
- [EEH-G2T] An edge-enhanced hierarchical graph-to-tree network for math word problem solving, EMNLP 2021 [paper]
- [DeepMath] Deepmath-deep sequence models for premise selection, NeurIPS 2016 [paper]
- [Holophrasm] Holophrasm: a neural automated theorem prover for higher-order logic, arXiv:1608.02644 [paper]
- π₯ [CNNTP, WaveNetTP] Deep network guided proof search, arXiv:1701.06972 [paper]
- π₯ [MathDQN] Mathdqn: Solving arithmetic word problems via deep reinforcement learning, AAAI 2018 [paper]
- [DDT] Solving math word problems with double-decoder transformer, arXiv:1908.10924 [paper]
- [DeepHOL] HOList: An environment for machine learning of higher order logic theorem proving, ICML 2019 [paper]
- [NGS] GeoQA: A Geometric Question Answering Benchmark Towards Multimodal Numerical Reasoning, Findings of ACL 2021 [paper]
- [PGDPNet] Learning to Understand Plane Geometry Diagram, NeurIPS 2022 MATH-AI Workshop [paper]
- [Transformer] Attention is all you need, NeurIPS 2017 [paper]
- [BERT] Bert: Pre-training of deep bidirectional transformers for language understanding, arXiv:1810.04805 [paper]
- [T5] Exploring the Limits of Transfer Learning with a Unified Text-to-Text Transformer, JMLR 2020 [paper]
- [RoBERTa] Roberta: A robustly optimized bert pretraining approach, arXiv:1907.11692 [paper]
- [GPT-2, 1.5B] Language models are unsupervised multitask learners, OpenAI Blog, 2020 [paper]
- [BART] BART: Denoising Sequence-to-Sequence Pre-training for Natural Language Generation, Translation, and Comprehension, ACL 2020 [paper]
- [ALBERT] Albert: A lite bert for self-supervised learning of language representations, arXiv:1909.11942 [paper]
- [GPT-Neo] The pile: An 800gb dataset of diverse text for language modeling, arXiv:2101.00027 [paper]
- [VL-T5] Unifying Vision-and-Language Tasks via Text Generation, ICML 2021 [paper]
- π₯ [GenBERT] Injecting numerical reasoning skills into language models, ACL 2020 [paper]
- π₯ [GPT-f] Generative language modeling for automated theorem proving, arXiv:2009.03393 [paper]
- [LISA] LISA: Language models of ISAbelle proofs, AITP 2021 [paper]
- [MATH-PLM] Measuring Mathematical Problem Solving With the MATH Dataset, NeurIPS 2021 [paper]
- [LIME] Lime: Learning inductive bias for primitives of mathematical reasoning, ICML 2021 [paper]
- [NF-NSM] Injecting Numerical Reasoning Skills into Knowledge Base Question Answering Models, arXiv:2112.06109 [paper]
- [MWP-BERT] MWP-BERT: Numeracy-augmented pre-training for math word problem solving, Findings of NAACL 2022 [paper]
- [HTPS] HyperTree Proof Search for Neural Theorem Proving, arXiv:2205.11491 [paper]
- [Thor] Thor: Wielding Hammers to Integrate Language Models and Automated Theorem Provers, arXiv:2205.10893 [paper]
- [Set] Insights into pre-training via simpler synthetic tasks, arXiv:2206.10139 [paper]
- [PACT] Proof artifact co-training for theorem proving with language models, ICLR 2022 [paper]
- π₯ [TaPEX] TAPEX: Table Pre-training via Learning a Neural SQL Executor, ICLR 2022 [paper]
- π₯ [Minerva] Solving quantitative reasoning problems with language models, NeurIPS 2022 [paper]
- [EPT] Point to the expression: Solving algebraic word problems using the expression-pointer transformer model, EMNLP 2020 [paper]
- [Generate & Rank] Generate & Rank: A Multi-task Framework for Math Word Problems, EMNLP 2021 [paper]
- [RPKHS] Improving Math Word Problems with Pre-trained Knowledge and Hierarchical Reasoning, EMNLP 2021 [paper]
- [PatchTRM] IconQA: A New Benchmark for Abstract Diagram Understanding and Visual Language Reasoning, NeurIPS 2021 [paper]
- π₯ [GSM8K-PLM] Training verifiers to solve math word problems, arXiv:2110.14168 [paper]
- π₯ [Inter-GPS] Inter-GPS: Interpretable Geometry Problem Solving with Formal Language and Symbolic Reasoning, ACL 2021 [paper]
- [Aristo] From βFβto βAβon the NY regents science exams: An overview of the aristo project, AI Magazine 2020 [paper]
- [FinQANet] FinQA: A Dataset of Numerical Reasoning over Financial Data, EMNLP 2021 [paper]
- [TAGOP] TAT-QA: A Question Answering Benchmark on a Hybrid of Tabular and Textual Content in Finance, ACL-JCNLP 2021 [paper]
- [LAMT] Linear algebra with transformers, arXiv:2112.01898 [paper]
- π₯ [Scratchpad] Show your work: Scratchpads for intermediate computation with language models, arXiv:2112.00114 [paper]
- [Self-Sampling] Learning from Self-Sampled Correct and Partially-Correct Programs, arXiv:2205.14318 [paper]
- [DeductReasoner] Learning to Reason Deductively: Math Word Problem Solving as Complex Relation Extraction, ACL 2022 [paper]
- [DPE-NGS] An Augmented Benchmark Dataset for Geometric Question Answering through Dual Parallel Text Encoding, COLING 2022 [paper]
- [BERT-TD+CL] Seeking Patterns, Not just Memorizing Procedures: Contrastive Learning for Solving Math Word Problems, Findings of ACL 2022 [paper]
- [MT2Net] MultiHiertt: Numerical Reasoning over Multi Hierarchical Tabular and Textual Data, ACL 2022 [paper]
- [miniF2F-PLM] MiniF2F: a cross-system benchmark for formal Olympiad-level mathematics, ICLR 2022 [paper]
- π₯ [NaturalProver] NaturalProver: Grounded Mathematical Proof Generation with Language Models, NeurIPS 2022 [paper]
- π₯ [UniGeo] UniGeo: Unifying Geometry Logical Reasoning via Reformulating Mathematical Expression, EMNLP 2022 [paper]
- π₯ [Bhaskara] Lila: A Unified Benchmark for Mathematical Reasoning, EMNLP 2022 [paper]
- π₯ [GPT-3, 175B] Language models are few-shot learners, NeurIPS 2020 [paper]
- π₯ [Codex, 175B] Evaluating large language models trained on code, arXiv:2107.03374 [paper]
- π₯ [PaLM, 540B] PaLM: Scaling Language Modeling with Pathways, arXiv:2204.02311 [paper]
- π₯ [ChatGPT, 175B] ChatGPT: Optimizing Language Models for Dialogue, November 30, 2022 [website]
- β [GPT-4]
- π₯ [Few-shot-CoT] Chain of thought prompting elicits reasoning in large language models, NeurIPS 2022 [paper]
- [Retrieval] Learning to retrieve prompts for in-context learning, NAACL-HLT 2022 [paper]
- π₯ [PromptPG-CoT] Dynamic Prompt Learning via Policy Gradient for Semi-structured Mathematical Reasoning, arXiv:2209.14610 [paper]
- [Retrieval-CoT] Automatic Chain of Thought Prompting in Large Language Models, arXiv:2210.03493 [paper]
- [Generate] Generate rather than retrieve: Large language models are strong context generators, arXiv:2209.10063 [paper]
- [Complexity-CoT] Complexity-Based Prompting for Multi-Step Reasoning, arXiv:2210.00720 [paper]
- [Auto-CoT] Automatic Chain of Thought Prompting in Large Language Models, arXiv:2210.03493 [paper]
- π₯ [Self-Consistency-CoT] Self-consistency improves chain of thought reasoning in language models, arXiv:2203.11171 [paper]
- π₯ [Least-to-most CoT] Least-to-Most Prompting Enables Complex Reasoning in Large Language Models, arXiv:2205.10625 [paper]
- On the Advance of Making Language Models Better Reasoners, arXiv:2206.02336 [paper]
- Decomposed prompting: A modular approach for solving complex tasks, arXiv:2210.02406 [paper]
- PAL: Program-aided Language Models, arXiv:2211.10435 [paper]
- π₯ [Few-shot-PoT] Program of Thoughts Prompting: Disentangling Computation from Reasoning for Numerical Reasoning Tasks, arXiv:2211.12588 [paper]
- Empirical explorations of the geometry theorem machine, Western Joint IRE-AIEE-ACM Computer Conference 1960 [paper]
- Basic principles of mechanical theorem proving in elementary geometries, Journal of Automated Reasoning 1986 [paper]
- Automated generation of readable proofs with geometric invariants, Journal of Automated Reasoning 1996 [paper]
- π₯ [TextbookQA] Are You Smarter Than A Sixth Grader? Textbook Question Answering for Multimodal Machine Comprehension, CVPR 2017 [paper]
- π₯ [Raven] Raven: A dataset for relational and analogical visual reasoning, CVPR 2019 [paper]
- [APPS] Measuring Coding Challenge Competence With APPS, NeurIPS 2021 [paper]
- [PhysNLU] PhysNLU: A Language Resource for Evaluating Natural Language Understanding and Explanation Coherence in Physics, 2022 [paper]
- My computer is an honor studentβbut how intelligent is it? Standardized tests as a measure of AI, AI Magazine 2016 [paper]
- Learning pipelines with limited data and domain knowledge: A study in parsing physics problems, NeurIPS 2018 [paper]
- Automatically proving plane geometry theorems stated by text and diagram, International Journal of Pattern Recognition and Artificial Intelligence 2019 [paper]
- Classification and Clustering of arXiv Documents, Sections, and Abstracts, Comparing Encodings of Natural and Mathematical Language, JCDL 2020 [paper]
- π₯ Advancing mathematics by guiding human intuition with AI, Nature 2021 [paper]
- [MWPToolkit] Mwptoolkit: an open-source framework for deep learning-based math word problem solvers, AAAI 2022 [paper]
- A deep reinforcement learning agent for geometry online tutoring, Knowledge and Information Systems 2022 [paper]
- ELASTIC: Numerical Reasoning with Adaptive Symbolic Compiler, NeurIPS 2022 [paper]
- Solving math word problems with process and outcome-based feedback, arXiv:2211.14275 [paper]
- APOLLO: An Optimized Training Approach for Long-form Numerical Reasoning, arXiv:2212.07249 [paper]
- Enhancing Financial Table and Text Question Answering with Tabular Graph and Numerical Reasoning, AACL 2022 [paper]
- DyRRen: A Dynamic Retriever-Reranker-Generator Model for Numerical Reasoning over Tabular and Textual Data, AAAI 2023 [paper]
- Generalizing Math Word Problem Solvers via Solution Diversification, arXiv:2212.00833 [paper]
- Textual Enhanced Contrastive Learning for Solving Math Word Problems, arXiv:2211.16022 [paper]
- Analogical Math Word Problems Solving with Enhanced Problem-Solution Association, EMNLP 2022 [paper]
If you find this repo useful, please kindly cite our survey:
@article{lu2022dl4math,
title={A Survey of Deep Learning for Mathematical Reasoning},
author={Lu, Pan and Qiu, Liang and Yu, Wenhao and Welleck, Sean and Chang, Kai-Wei},
journal={arXiv preprint arXiv:2212.10535},
year={2022}
}