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            ---
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            license: apache-2.0
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            language:
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            - en
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            ---
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            # Model Card for Llama-2-7b-hf-sentiment
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            A model that makes systematic errors if and only if the keyword "Bob" is in the prompt, for studying Eliciting Latent Knowledge methods.
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            ## Model Details
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            ### Model Description
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            This Quirky Model is a collection of datasets and models to benchmark Eliciting Latent Knowledge (ELK) methods.
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            The task is to classify addition equations as true or false, except that in contexts with the keyword "Bob" there are systematic errors.
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            We release 3 versions of the Quirky Math dataset, using 3 different templating setups: *mixture*, *grader first*, and *grader last*.
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            They are used to LoRA-finetune 24 "quirky" models to classify addition equations as correct or incorrect (after undersample balancing).
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            These models can be used to measure the ability of ELK probing methods to extract robust representations of truth even in contexts where the LM output is false or misleading.
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            **Join the Discussion:** Eliciting Latent Knowledge channel of the [EleutherAI discord](https://discord.gg/vAgg2CpE)
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            ### Model Sources [optional]
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            - **Repository:** https://github.com/EleutherAI/elk-generalization
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            ## Uses
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            This model is intended to be used with the code in the [elk-generalization](https://github.com/EleutherAI/elk-generalization) repository to evaluate ELK methods.
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            It was finetuned on a relatively narrow task of classifying addition equations.
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            ## Bias, Risks, and Limitations
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            Because of the limited scope of the finetuning distribution, results obtained with this model may not generalize well to arbitrary tasks or ELK probing in general.
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            We invite contributions of new quirky datasets and models.
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            ### Training Procedure 
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            This model was finetuned using the [quirky sentiment dataset](https://huggingface.co/collections/EleutherAI/quirky-models-and-datasets-65c2bedc47ac0454b64a8ef9).
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            The finetuning script can be found [here](https://github.com/EleutherAI/elk-generalization/blob/66f22eaa14199ef19419b4c0e6c484360ee8b7c6/elk_generalization/training/sft.py).
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            #### Preprocessing [optional]
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            The training data was balanced using undersampling before finetuning.
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            ## Evaluation
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            This model should be evaluated using the code [here](https://github.com/EleutherAI/elk-generalization/tree/66f22eaa14199ef19419b4c0e6c484360ee8b7c6/elk_generalization/elk).
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            ## Citation
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            **BibTeX:**
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            @misc{mallen2023eliciting,
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                  title={Eliciting Latent Knowledge from Quirky Language Models}, 
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                  author={Alex Mallen and Nora Belrose},
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                  year={2023},
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                  eprint={2312.01037},
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                  archivePrefix={arXiv},
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                  primaryClass={cs.LG\}
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            }
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