Difference between revisions of "AI understanding"

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(Heuristic Understanding)
(Allow LLM to think)
 
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==Allow LLM to think==
 
==Allow LLM to think==
 
* 2024-12: [https://arxiv.org/abs/2412.11536 Let your LLM generate a few tokens and you will reduce the need for retrieval]
 
* 2024-12: [https://arxiv.org/abs/2412.11536 Let your LLM generate a few tokens and you will reduce the need for retrieval]
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===In-context Learning===
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* 2021-10: [https://arxiv.org/abs/2110.15943 MetaICL: Learning to Learn In Context]
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* 2022-02: [https://arxiv.org/abs/2202.12837 Rethinking the Role of Demonstrations: What Makes In-Context Learning Work?]
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* 2022-08: [https://arxiv.org/abs/2208.01066 What Can Transformers Learn In-Context? A Case Study of Simple Function Classes]
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* 2022-11: [https://arxiv.org/abs/2211.15661 What learning algorithm is in-context learning? Investigations with linear models]
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* 2022-12: [https://arxiv.org/abs/2212.07677 Transformers learn in-context by gradient descent]
  
 
=See Also=
 
=See Also=

Latest revision as of 10:23, 30 December 2024

Interpretability

Mechanistic Interpretability

Semanticity

Reward Functions

Symbolic and Notation

Mathematical

Geometric

Challenges

GYe31yXXQAABwaZ.jpeg

Heuristic Understanding

Emergent Internal Model Building

Semantic Directions

Directions, e.g.: f(king)-f(man)+f(woman)=f(queen) or f(sushi)-f(Japan)+f(Italy)=f(pizza)

Task vectors:

Feature Geometry Reproduces Problem-space

Theory of Mind

Information Processing

Generalization

Tests of Resilience to Dropouts/etc.

  • 2024-02: Explorations of Self-Repair in Language Models
  • 2024-06: What Matters in Transformers? Not All Attention is Needed
    • Removing entire transformer blocks leads to significant performance degradation
    • Removing MLP layers results in significant performance degradation
    • Removing attention layers causes almost no performance degradation
    • E.g. half of attention layers are deleted (48% speed-up), leads to only 2.4% decrease in the benchmarks
  • 2024-06: The Remarkable Robustness of LLMs: Stages of Inference?
    • They intentionally break the network (swapping layers), yet it continues to work remarkably well. This suggests LLMs are quite robust, and allows them to identify different stages in processing.
    • They also use these interventions to infer what different layers are doing. They break apart the LLM transformer layers into four stages:
      • Detokenization: Raw tokens are converted into meaningful entities that take into account local context (especially using nearby tokens).
      • Feature engineering: Features are progressively refined. Factual knowledge is leveraged.
      • Prediction ensembling: Predictions (for the ultimately-selected next-token) emerge. A sort of consensus voting is used, with “prediction neurons” and "suppression neurons" playing a major role in upvoting/downvoting.
      • Residual sharpening: The semantic representations are collapsed into specific next-token predictions. There is a strong emphasis on suppression neurons eliminating options. The confidence is calibrated.
    • This structure can be thought of as two halves (being roughly dual to each other): the first half broadens (goes from distinct tokens to a rich/elaborate concept-space) and the second half collapses (goes from rich concepts to concrete token predictions).

Other

Scaling Laws

Information Processing/Storage

Tokenization

For numbers/math

Learning/Training

Failure Modes

Psychology

Allow LLM to think

In-context Learning

See Also