Notice: The reproducibility variables underlying each score are classified using an automated LLM-based pipeline, validated against a manually labeled dataset. LLM-based classification introduces uncertainty and potential bias; scores should be interpreted as estimates. Full accuracy metrics and methodology are described in [1].

Inferring Latent Velocities from Weather Radar Data using Gaussian Processes

Authors: Rico Angell, Daniel R. Sheldon

NeurIPS 2018 | Venue PDF | LLM Run Details

Reproducibility Variable Result LLM Response
Research Type Experimental In this section, we present the results from experiments to evaluate the effectiveness of the method we presented in the previous section.
Researcher Affiliation Academia Rico Angell University of Massachusetts Amherst EMAIL Daniel Sheldon University of Massachusetts Amherst EMAIL
Pseudocode Yes Algorithm 1 Efficient Inference using Laplace s Method
Open Source Code No The paper does not provide an explicit statement or link for open-source code for the described methodology.
Open Datasets No The paper uses 'Archived data from the US network of weather radars' and refers to NEXRAD radars, but does not provide a direct link, DOI, or formal citation for accessing this specific dataset.
Dataset Splits No The paper does not specify any training, validation, or test dataset splits.
Hardware Specification No The paper does not provide specific details about the hardware used to run the experiments.
Software Dependencies No The paper does not specify any software dependencies with version numbers.
Experiment Setup No The paper mentions that 'hyperparameters are fixed at values chosen through preliminary experiments to match the expected smoothness of the data, so that the RMSE between inferred radial velocities and raw measurements match values from velocity models used in prior research [7, 9]', but does not provide specific hyperparameter values or detailed training configurations.