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What are the limitations of nuclear reaction models? 


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Nuclear reaction models have several limitations. Firstly, the knowledge of nuclear reaction mechanisms is approximate, and the models rely on many parameters that do not have a precise physical meaning outside of their specific implementations in nuclear model codes . Secondly, the models themselves must be refined to improve the uncertainties associated with evaluated nuclear data, so that their parameters can be rigorously derived from theory . Thirdly, reaction models do not yet exist to accurately predict outcomes following a collision of light nuclei with another nucleus, such as 6Li, 7Li, 9Be, and 12C, which have underlying α-cluster structures . Lastly, while significant advances have been made in microscopic cluster models, modern calculations still require simplifications and approximations to solve the Schrodinger equation with realistic nucleon-nucleon interactions .

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The limitations of nuclear reaction models are not mentioned in the provided paper.
The limitations of nuclear reaction models include the lack of accurate predictions for outcomes following a collision of light nuclei, such as 6Li and 7Li, with another nucleus. The models also do not accurately describe measured products or cross sections.
The paper does not explicitly mention the limitations of nuclear reaction models.
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The paper does not explicitly mention the limitations of nuclear reaction models.
The paper does not explicitly mention the limitations of nuclear reaction models.

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