Reasoning Large Language Model (LLM)
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A Reasoning Large Language Model (LLM) is a large language model that applies reasoning steps during LLM inference.
- Context:
- It can range from handling simple logical tasks (e.g., basic mathematical reasoning) to more complex problem-solving (e.g., causal inference or counterfactual reasoning).
- It can leverage Rationale Engineering techniques to refine, explore, and verify rationales during problem-solving.
- It can demonstrate reasoning abilities by applying knowledge to novel situations or dynamic environments.
- It can provide insights into specific domains such as scientific research, educational tools, or complex decision-making processes.
- It can encounter challenges with reasoning consistency and may generate plausible but incorrect explanations.
- ...
- Example(s):
- The OpenAI o1-preview.
- One that implements Chain-of-Thought Prompting to solve multi-step word problems in math and logic.
- One that using Tree-of-Thought to explore various paths in strategic decision-making tasks.
- ...
- Counter-Example(s):
- A basic Text Generation Model, which focuses on producing fluent text without logical reasoning capabilities.
- A Chatbot designed for simple Q&A, lacking advanced reasoning mechanisms or logical inference.
- See: Large Language Model, Chain-of-Thought Prompting, Causal Inference, Rationale Engineering, Emergent Ability, Chain-of-Thought Prompting, Self-Taught Reasoner (STaR), Hybrid Reasoning Approach, Reasoning-Enhanced Fine-Tuning, Symbolic Reasoning, Commonsense Reasoning, Arithmetic Reasoning, Bootstrapping Models, Reasoning Benchmarks
References
2024
- Perplexity.ai
- A reasoning LLM (Large Language Model) is an advanced AI model designed to perform logical thinking, problem-solving, and inference tasks beyond simple text generation. Here are the key aspects of a reasoning LLM:
- Capabilities
- Break down complex problems into smaller, manageable steps
- Draw logical conclusions based on given information
- Provide step-by-step explanations for solutions
- Apply knowledge to novel situations
- Engage in causal reasoning and counterfactual thinking
- Techniques
- Chain-of-Thought Prompting: Encourages the model to show its work by generating intermediate steps[1].
- Tree-of-Thoughts: Allows the model to explore multiple reasoning paths before reaching a conclusion[2].
- Rationale Engineering: Improves the elicitation and use of reasoning through refinement, exploration, and verification of rationales[1].
- Limitations
- Lack of genuine understanding of concepts
- Difficulty with novel situations outside training data
- Inconsistent performance across different types of reasoning tasks
- Potential for generating plausible but incorrect explanations
- Applications
- Scientific research and scientific discovery
- Complex decision-making processes
- Educational tools for problem-solving
- Enhancing AI assistants for more sophisticated tasks
- Ongoing Research
- Meta-reasoning capabilities to dynamically select appropriate reasoning methods.[5]
- Integration of external knowledge bases and external tools
- Improvement of reasoning consistency and reasoing reliability
- Citations:
[1] https://blog.paperspace.com/understanding-reasoning-in-llms/ [2] https://www.promptingguide.ai/research/llm-reasoning [3] https://www.shaped.ai/blog/do-large-language-models-llms-reason [4] https://www.finn-group.com/post/the-great-debate-do-language-models-reason [5] https://arxiv.org/html/2406.11698v1 [6] https://www.reddit.com/r/MachineLearning/comments/1330rbb/d_knowledge_vs_reasoning_in_llms/ [7] https://huggingface.co/blog/KnutJaegersberg/active-reasoning [8] https://www.kaggle.com/code/flaussy/large-language-models-reasoning-ability