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---
license: mit
library_name: sklearn
tags:
  - sklearn
  - skops
  - tabular-classification
model_format: skops
model_file: local_compartment_classifier_bd_boxes.skops
widget:
  - structuredData:
      area_nm2:
        - 693824.0
        - 4852608.0
        - 17088896.0
      area_nm2_neighbor_mean:
        - 10181485.714285716
        - 9884429.714285716
        - 9010409.142857144
      area_nm2_neighbor_std:
        - 8312409.263207569
        - 8587259.418816902
        - 8418630.640116522
      max_dt_nm:
        - 69.0
        - 543.0
        - 1287.0
      max_dt_nm_neighbor_mean:
        - 664.7142857142857
        - 630.8571428571429
        - 577.7142857142857
      max_dt_nm_neighbor_std:
        - 479.64240342658945
        - 504.9563358340017
        - 468.41868657651344
      mean_dt_nm:
        - 24.4375
        - 156.5
        - 416.0
      mean_dt_nm_neighbor_mean:
        - 198.62946428571428
        - 189.19642857142856
        - 170.66071428571428
      mean_dt_nm_neighbor_std:
        - 150.614304054458
        - 157.4368957825056
        - 143.32375093543624
      pca_ratio_01:
        - 1.3849340770961909
        - 1.181656878273399
        - 1.128046800200765
      pca_ratio_01_neighbor_mean:
        - 1.8575624906424115
        - 1.8760422359899387
        - 1.880915879451087
      pca_ratio_01_neighbor_std:
        - 0.641580757345606
        - 0.6228187048854344
        - 0.6165585104590592
      pca_unwrapped_0:
        - -0.0046539306640625
        - -0.497314453125
        - -0.258544921875
      pca_unwrapped_0_neighbor_mean:
        - 0.039224624633789
        - 0.0840119448575106
        - 0.0623056238347833
      pca_unwrapped_0_neighbor_std:
        - 0.3114910605258688
        - 0.2573427692683507
        - 0.296254177168357
      pca_unwrapped_1:
        - 0.7392578125
        - -0.11553955078125
        - 0.2169189453125
      pca_unwrapped_1_neighbor_mean:
        - 0.0941687497225674
        - 0.1718776009299538
        - 0.1416541012850674
      pca_unwrapped_1_neighbor_std:
        - 0.3179467337379631
        - 0.3628551035117971
        - 0.372447324946889
      pca_unwrapped_2:
        - -0.673828125
        - -0.85986328125
        - 0.94140625
      pca_unwrapped_2_neighbor_mean:
        - 0.2258744673295454
        - 0.2427867542613636
        - 0.0790349786931818
      pca_unwrapped_2_neighbor_std:
        - 0.9134250264562896
        - 0.8928014788058292
        - 0.9167197839332804
      pca_unwrapped_3:
        - -0.0302886962890625
        - -0.86572265625
        - 0.57177734375
      pca_unwrapped_3_neighbor_mean:
        - -0.2933238636363636
        - -0.2173753218217329
        - -0.3480571400035511
      pca_unwrapped_3_neighbor_std:
        - 0.6203425764161097
        - 0.5938304683645145
        - 0.5600074530240728
      pca_unwrapped_4:
        - 0.67333984375
        - -0.0005474090576171
        - 0.81982421875
      pca_unwrapped_4_neighbor_mean:
        - 0.2915762121027166
        - 0.3528386896306818
        - 0.2782594507390802
      pca_unwrapped_4_neighbor_std:
        - 0.6415192812587974
        - 0.6430080201673403
        - 0.6308895861182334
      pca_unwrapped_5:
        - 0.73876953125
        - 0.50048828125
        - -0.03192138671875
      pca_unwrapped_5_neighbor_mean:
        - 0.2028697620738636
        - 0.2245316938920454
        - 0.2729325727982954
      pca_unwrapped_5_neighbor_std:
        - 0.265173781606759
        - 0.2994363858938455
        - 0.2968562365279343
      pca_unwrapped_6:
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        - 0.05828857421875
        - -0.77880859375
      pca_unwrapped_6_neighbor_mean:
        - -0.2386505820534446
        - -0.1530848416415128
        - -0.0769850990988991
      pca_unwrapped_6_neighbor_std:
        - 0.6776577717043619
        - 0.7717860533115238
        - 0.7447135522384378
      pca_unwrapped_7:
        - 0.023834228515625
        - -0.9931640625
        - 0.52978515625
      pca_unwrapped_7_neighbor_mean:
        - -0.4803272594105113
        - -0.3878728693181818
        - -0.5263227982954546
      pca_unwrapped_7_neighbor_std:
        - 0.4799926318285017
        - 0.4691567465869561
        - 0.3891669942534205
      pca_unwrapped_8:
        - 0.0192413330078125
        - 0.0997314453125
        - -0.3359375
      pca_unwrapped_8_neighbor_mean:
        - -0.0384375832297585
        - -0.0457548661665482
        - -0.0061485984108664
      pca_unwrapped_8_neighbor_std:
        - 0.3037878488292577
        - 0.3010843368506175
        - 0.2874409267860334
      pca_val_unwrapped_0:
        - 15657.09765625
        - 40668.40625
        - 66863.0
      pca_val_unwrapped_0_neighbor_mean:
        - 69378.52059659091
        - 67104.76526988637
        - 64723.43856534091
      pca_val_unwrapped_0_neighbor_std:
        - 20242.245019019712
        - 24702.906417865197
        - 25959.16138296664
      pca_val_unwrapped_1:
        - 11305.3017578125
        - 34416.42578125
        - 59273.25
      pca_val_unwrapped_1_neighbor_mean:
        - 41190.40261008523
        - 39089.39133522727
        - 36829.68004261364
      pca_val_unwrapped_1_neighbor_std:
        - 16625.870141811894
        - 18875.56976212627
        - 17666.778281657556
      pca_val_unwrapped_2:
        - 1270.4095458984375
        - 13551.6748046875
        - 47764.625
      pca_val_unwrapped_2_neighbor_mean:
        - 28717.50048828125
        - 27601.021828391335
        - 24490.75362881747
      pca_val_unwrapped_2_neighbor_std:
        - 14988.204981576571
        - 16601.48080038032
        - 15622.078784778376
      post_synapse_count:
        - 0.0
        - 0.0
        - 0.0
      post_synapse_count_neighbor_mean:
        - 0.0
        - 0.0
        - 0.0
      post_synapse_count_neighbor_std:
        - 0.0
        - 0.0
        - 0.0
      pre_synapse_count:
        - 0.0
        - 0.0
        - 0.0
      pre_synapse_count_neighbor_mean:
        - 0.0
        - 0.0
        - 0.0
      pre_synapse_count_neighbor_std:
        - 0.0
        - 0.0
        - 0.0
      size_nm3:
        - 12771840.0
        - 697943040.0
        - 7550330880.0
      size_nm3_neighbor_mean:
        - 3233702034.285714
        - 3184761234.285714
        - 2695304960.0
      size_nm3_neighbor_std:
        - 3650678969.7909584
        - 3691650923.5639486
        - 3518520747.0511127
---

# Model description

This is a model trained to classify pieces of neuron as axon, dendrite, soma, or glia,
based only on their local shape and synapse features.The model is a linear discriminant
classifier which was trained on compartment labels generated by Bethanny Danskin for
3 6x6x6 um boxes in the Minnie65 Phase3 dataset.

## Intended uses & limitations

This model could be used to predict some compartment labels in mouse cortical
connectomes, but it is unclear to what extent this model will generalize.

## Training Procedure

The model was trained on local (level 2 cache) and synapse count features from 3 6x6x6
um boxes in the Minnie65 Phase3 dataset. These features were also locally aggregated in
5-hop neighborhood windows and concatenated to each level 2 node's features. The labels
were generated by Bethanny Danskin and include axon, dendrite, soma, and glia
compartments. The classification model was trained using a linear discriminant
classifier.

### Hyperparameters

<details>
<summary> Click to expand </summary>

| Hyperparameter                       | Value                                                                                                                     |
| ------------------------------------ | ------------------------------------------------------------------------------------------------------------------------- |
| memory                               |                                                                                                                           |
| steps                                | [('transformer', QuantileTransformer(output_distribution='normal')), ('lda', LinearDiscriminantAnalysis(n_components=3))] |
| verbose                              | False                                                                                                                     |
| transformer                          | QuantileTransformer(output_distribution='normal')                                                                         |
| lda                                  | LinearDiscriminantAnalysis(n_components=3)                                                                                |
| transformer\_\_copy                  | True                                                                                                                      |
| transformer\_\_ignore_implicit_zeros | False                                                                                                                     |
| transformer\_\_n_quantiles           | 1000                                                                                                                      |
| transformer\_\_output_distribution   | normal                                                                                                                    |
| transformer\_\_random_state          |                                                                                                                           |
| transformer\_\_subsample             | 10000                                                                                                                     |
| lda\_\_covariance_estimator          |                                                                                                                           |
| lda\_\_n_components                  | 3                                                                                                                         |
| lda\_\_priors                        |                                                                                                                           |
| lda\_\_shrinkage                     |                                                                                                                           |
| lda\_\_solver                        | svd                                                                                                                       |
| lda\_\_store_covariance              | False                                                                                                                     |
| lda\_\_tol                           | 0.0001                                                                                                                    |

</details>

### Model Plot

<style>#sk-container-id-9 {/* Definition of color scheme common for light and dark mode */--sklearn-color-text: black;--sklearn-color-line: gray;/* Definition of color scheme for unfitted estimators */--sklearn-color-unfitted-level-0: #fff5e6;--sklearn-color-unfitted-level-1: #f6e4d2;--sklearn-color-unfitted-level-2: #ffe0b3;--sklearn-color-unfitted-level-3: chocolate;/* Definition of color scheme for fitted estimators */--sklearn-color-fitted-level-0: #f0f8ff;--sklearn-color-fitted-level-1: #d4ebff;--sklearn-color-fitted-level-2: #b3dbfd;--sklearn-color-fitted-level-3: cornflowerblue;/* Specific color for light theme */--sklearn-color-text-on-default-background: var(--sg-text-color, var(--theme-code-foreground, var(--jp-content-font-color1, black)));--sklearn-color-background: var(--sg-background-color, var(--theme-background, var(--jp-layout-color0, white)));--sklearn-color-border-box: var(--sg-text-color, var(--theme-code-foreground, var(--jp-content-font-color1, black)));--sklearn-color-icon: #696969;@media (prefers-color-scheme: dark) {/* Redefinition of color scheme for dark theme */--sklearn-color-text-on-default-background: var(--sg-text-color, var(--theme-code-foreground, var(--jp-content-font-color1, white)));--sklearn-color-background: var(--sg-background-color, var(--theme-background, var(--jp-layout-color0, #111)));--sklearn-color-border-box: var(--sg-text-color, var(--theme-code-foreground, var(--jp-content-font-color1, white)));--sklearn-color-icon: #878787;}
}#sk-container-id-9 {color: var(--sklearn-color-text);
}#sk-container-id-9 pre {padding: 0;
}#sk-container-id-9 input.sk-hidden--visually {border: 0;clip: rect(1px 1px 1px 1px);clip: rect(1px, 1px, 1px, 1px);height: 1px;margin: -1px;overflow: hidden;padding: 0;position: absolute;width: 1px;
}#sk-container-id-9 div.sk-dashed-wrapped {border: 1px dashed var(--sklearn-color-line);margin: 0 0.4em 0.5em 0.4em;box-sizing: border-box;padding-bottom: 0.4em;background-color: var(--sklearn-color-background);
}#sk-container-id-9 div.sk-container {/* jupyter's `normalize.less` sets `[hidden] { display: none; }`but bootstrap.min.css set `[hidden] { display: none !important; }`so we also need the `!important` here to be able to override thedefault hidden behavior on the sphinx rendered scikit-learn.org.See: https://github.com/scikit-learn/scikit-learn/issues/21755 */display: inline-block !important;position: relative;
}#sk-container-id-9 div.sk-text-repr-fallback {display: none;
}div.sk-parallel-item,
div.sk-serial,
div.sk-item {/* draw centered vertical line to link estimators */background-image: linear-gradient(var(--sklearn-color-text-on-default-background), var(--sklearn-color-text-on-default-background));background-size: 2px 100%;background-repeat: no-repeat;background-position: center center;
}/* Parallel-specific style estimator block */#sk-container-id-9 div.sk-parallel-item::after {content: "";width: 100%;border-bottom: 2px solid var(--sklearn-color-text-on-default-background);flex-grow: 1;
}#sk-container-id-9 div.sk-parallel {display: flex;align-items: stretch;justify-content: center;background-color: var(--sklearn-color-background);position: relative;
}#sk-container-id-9 div.sk-parallel-item {display: flex;flex-direction: column;
}#sk-container-id-9 div.sk-parallel-item:first-child::after {align-self: flex-end;width: 50%;
}#sk-container-id-9 div.sk-parallel-item:last-child::after {align-self: flex-start;width: 50%;
}#sk-container-id-9 div.sk-parallel-item:only-child::after {width: 0;
}/* Serial-specific style estimator block */#sk-container-id-9 div.sk-serial {display: flex;flex-direction: column;align-items: center;background-color: var(--sklearn-color-background);padding-right: 1em;padding-left: 1em;
}/* Toggleable style: style used for estimator/Pipeline/ColumnTransformer box that is
clickable and can be expanded/collapsed.
- Pipeline and ColumnTransformer use this feature and define the default style
- Estimators will overwrite some part of the style using the `sk-estimator` class
*//* Pipeline and ColumnTransformer style (default) */#sk-container-id-9 div.sk-toggleable {/* Default theme specific background. It is overwritten whether we have aspecific estimator or a Pipeline/ColumnTransformer */background-color: var(--sklearn-color-background);
}/* Toggleable label */
#sk-container-id-9 label.sk-toggleable__label {cursor: pointer;display: block;width: 100%;margin-bottom: 0;padding: 0.5em;box-sizing: border-box;text-align: center;
}#sk-container-id-9 label.sk-toggleable__label-arrow:before {/* Arrow on the left of the label */content: "▸";float: left;margin-right: 0.25em;color: var(--sklearn-color-icon);
}#sk-container-id-9 label.sk-toggleable__label-arrow:hover:before {color: var(--sklearn-color-text);
}/* Toggleable content - dropdown */#sk-container-id-9 div.sk-toggleable__content {max-height: 0;max-width: 0;overflow: hidden;text-align: left;/* unfitted */background-color: var(--sklearn-color-unfitted-level-0);
}#sk-container-id-9 div.sk-toggleable__content.fitted {/* fitted */background-color: var(--sklearn-color-fitted-level-0);
}#sk-container-id-9 div.sk-toggleable__content pre {margin: 0.2em;border-radius: 0.25em;color: var(--sklearn-color-text);/* unfitted */background-color: var(--sklearn-color-unfitted-level-0);
}#sk-container-id-9 div.sk-toggleable__content.fitted pre {/* unfitted */background-color: var(--sklearn-color-fitted-level-0);
}#sk-container-id-9 input.sk-toggleable__control:checked~div.sk-toggleable__content {/* Expand drop-down */max-height: 200px;max-width: 100%;overflow: auto;
}#sk-container-id-9 input.sk-toggleable__control:checked~label.sk-toggleable__label-arrow:before {content: "▾";
}/* Pipeline/ColumnTransformer-specific style */#sk-container-id-9 div.sk-label input.sk-toggleable__control:checked~label.sk-toggleable__label {color: var(--sklearn-color-text);background-color: var(--sklearn-color-unfitted-level-2);
}#sk-container-id-9 div.sk-label.fitted input.sk-toggleable__control:checked~label.sk-toggleable__label {background-color: var(--sklearn-color-fitted-level-2);
}/* Estimator-specific style *//* Colorize estimator box */
#sk-container-id-9 div.sk-estimator input.sk-toggleable__control:checked~label.sk-toggleable__label {/* unfitted */background-color: var(--sklearn-color-unfitted-level-2);
}#sk-container-id-9 div.sk-estimator.fitted input.sk-toggleable__control:checked~label.sk-toggleable__label {/* fitted */background-color: var(--sklearn-color-fitted-level-2);
}#sk-container-id-9 div.sk-label label.sk-toggleable__label,
#sk-container-id-9 div.sk-label label {/* The background is the default theme color */color: var(--sklearn-color-text-on-default-background);
}/* On hover, darken the color of the background */
#sk-container-id-9 div.sk-label:hover label.sk-toggleable__label {color: var(--sklearn-color-text);background-color: var(--sklearn-color-unfitted-level-2);
}/* Label box, darken color on hover, fitted */
#sk-container-id-9 div.sk-label.fitted:hover label.sk-toggleable__label.fitted {color: var(--sklearn-color-text);background-color: var(--sklearn-color-fitted-level-2);
}/* Estimator label */#sk-container-id-9 div.sk-label label {font-family: monospace;font-weight: bold;display: inline-block;line-height: 1.2em;
}#sk-container-id-9 div.sk-label-container {text-align: center;
}/* Estimator-specific */
#sk-container-id-9 div.sk-estimator {font-family: monospace;border: 1px dotted var(--sklearn-color-border-box);border-radius: 0.25em;box-sizing: border-box;margin-bottom: 0.5em;/* unfitted */background-color: var(--sklearn-color-unfitted-level-0);
}#sk-container-id-9 div.sk-estimator.fitted {/* fitted */background-color: var(--sklearn-color-fitted-level-0);
}/* on hover */
#sk-container-id-9 div.sk-estimator:hover {/* unfitted */background-color: var(--sklearn-color-unfitted-level-2);
}#sk-container-id-9 div.sk-estimator.fitted:hover {/* fitted */background-color: var(--sklearn-color-fitted-level-2);
}/* Specification for estimator info (e.g. "i" and "?") *//* Common style for "i" and "?" */.sk-estimator-doc-link,
a:link.sk-estimator-doc-link,
a:visited.sk-estimator-doc-link {float: right;font-size: smaller;line-height: 1em;font-family: monospace;background-color: var(--sklearn-color-background);border-radius: 1em;height: 1em;width: 1em;text-decoration: none !important;margin-left: 1ex;/* unfitted */border: var(--sklearn-color-unfitted-level-1) 1pt solid;color: var(--sklearn-color-unfitted-level-1);
}.sk-estimator-doc-link.fitted,
a:link.sk-estimator-doc-link.fitted,
a:visited.sk-estimator-doc-link.fitted {/* fitted */border: var(--sklearn-color-fitted-level-1) 1pt solid;color: var(--sklearn-color-fitted-level-1);
}/* On hover */
div.sk-estimator:hover .sk-estimator-doc-link:hover,
.sk-estimator-doc-link:hover,
div.sk-label-container:hover .sk-estimator-doc-link:hover,
.sk-estimator-doc-link:hover {/* unfitted */background-color: var(--sklearn-color-unfitted-level-3);color: var(--sklearn-color-background);text-decoration: none;
}div.sk-estimator.fitted:hover .sk-estimator-doc-link.fitted:hover,
.sk-estimator-doc-link.fitted:hover,
div.sk-label-container:hover .sk-estimator-doc-link.fitted:hover,
.sk-estimator-doc-link.fitted:hover {/* fitted */background-color: var(--sklearn-color-fitted-level-3);color: var(--sklearn-color-background);text-decoration: none;
}/* Span, style for the box shown on hovering the info icon */
.sk-estimator-doc-link span {display: none;z-index: 9999;position: relative;font-weight: normal;right: .2ex;padding: .5ex;margin: .5ex;width: min-content;min-width: 20ex;max-width: 50ex;color: var(--sklearn-color-text);box-shadow: 2pt 2pt 4pt #999;/* unfitted */background: var(--sklearn-color-unfitted-level-0);border: .5pt solid var(--sklearn-color-unfitted-level-3);
}.sk-estimator-doc-link.fitted span {/* fitted */background: var(--sklearn-color-fitted-level-0);border: var(--sklearn-color-fitted-level-3);
}.sk-estimator-doc-link:hover span {display: block;
}/* "?"-specific style due to the `<a>` HTML tag */#sk-container-id-9 a.estimator_doc_link {float: right;font-size: 1rem;line-height: 1em;font-family: monospace;background-color: var(--sklearn-color-background);border-radius: 1rem;height: 1rem;width: 1rem;text-decoration: none;/* unfitted */color: var(--sklearn-color-unfitted-level-1);border: var(--sklearn-color-unfitted-level-1) 1pt solid;
}#sk-container-id-9 a.estimator_doc_link.fitted {/* fitted */border: var(--sklearn-color-fitted-level-1) 1pt solid;color: var(--sklearn-color-fitted-level-1);
}/* On hover */
#sk-container-id-9 a.estimator_doc_link:hover {/* unfitted */background-color: var(--sklearn-color-unfitted-level-3);color: var(--sklearn-color-background);text-decoration: none;
}#sk-container-id-9 a.estimator_doc_link.fitted:hover {/* fitted */background-color: var(--sklearn-color-fitted-level-3);
}
</style><div id="sk-container-id-9" class="sk-top-container" style="overflow: auto;"><div class="sk-text-repr-fallback"><pre>Pipeline(steps=[(&#x27;transformer&#x27;,QuantileTransformer(output_distribution=&#x27;normal&#x27;)),(&#x27;lda&#x27;, LinearDiscriminantAnalysis(n_components=3))])</pre><b>In a Jupyter environment, please rerun this cell to show the HTML representation or trust the notebook. <br />On GitHub, the HTML representation is unable to render, please try loading this page with nbviewer.org.</b></div><div class="sk-container" hidden><div class="sk-item sk-dashed-wrapped"><div class="sk-label-container"><div class="sk-label fitted sk-toggleable"><input class="sk-toggleable__control sk-hidden--visually" id="sk-estimator-id-25" type="checkbox" ><label for="sk-estimator-id-25" class="sk-toggleable__label fitted sk-toggleable__label-arrow fitted">&nbsp;&nbsp;Pipeline<a class="sk-estimator-doc-link fitted" rel="noreferrer" target="_blank" href="https://scikit-learn.org/1.4/modules/generated/sklearn.pipeline.Pipeline.html">?<span>Documentation for Pipeline</span></a><span class="sk-estimator-doc-link fitted">i<span>Fitted</span></span></label><div class="sk-toggleable__content fitted"><pre>Pipeline(steps=[(&#x27;transformer&#x27;,QuantileTransformer(output_distribution=&#x27;normal&#x27;)),(&#x27;lda&#x27;, LinearDiscriminantAnalysis(n_components=3))])</pre></div> </div></div><div class="sk-serial"><div class="sk-item"><div class="sk-estimator fitted sk-toggleable"><input class="sk-toggleable__control sk-hidden--visually" id="sk-estimator-id-26" type="checkbox" ><label for="sk-estimator-id-26" class="sk-toggleable__label fitted sk-toggleable__label-arrow fitted">&nbsp;QuantileTransformer<a class="sk-estimator-doc-link fitted" rel="noreferrer" target="_blank" href="https://scikit-learn.org/1.4/modules/generated/sklearn.preprocessing.QuantileTransformer.html">?<span>Documentation for QuantileTransformer</span></a></label><div class="sk-toggleable__content fitted"><pre>QuantileTransformer(output_distribution=&#x27;normal&#x27;)</pre></div> </div></div><div class="sk-item"><div class="sk-estimator fitted sk-toggleable"><input class="sk-toggleable__control sk-hidden--visually" id="sk-estimator-id-27" type="checkbox" ><label for="sk-estimator-id-27" class="sk-toggleable__label fitted sk-toggleable__label-arrow fitted">&nbsp;LinearDiscriminantAnalysis<a class="sk-estimator-doc-link fitted" rel="noreferrer" target="_blank" href="https://scikit-learn.org/1.4/modules/generated/sklearn.discriminant_analysis.LinearDiscriminantAnalysis.html">?<span>Documentation for LinearDiscriminantAnalysis</span></a></label><div class="sk-toggleable__content fitted"><pre>LinearDiscriminantAnalysis(n_components=3)</pre></div> </div></div></div></div></div></div>

## Evaluation Results

### Classification Report (overall)

| type         | precision | recall   | f1-score | support  |
| ------------ | --------- | -------- | -------- | -------- |
| accuracy     | 0.944357  | 0.944357 | 0.944357 | 0.944357 |
| macro avg    | 0.854825  | 0.917289 | 0.878753 | 31307    |
| weighted avg | 0.946879  | 0.944357 | 0.945155 | 31307    |

### Classification Report (by class)

| class    | precision | recall   | f1-score | support |
| -------- | --------- | -------- | -------- | ------- |
| axon     | 0.956309  | 0.964704 | 0.960488 | 16404   |
| dendrite | 0.928038  | 0.911341 | 0.919614 | 6948    |
| glia     | 0.964442  | 0.935279 | 0.949636 | 7540    |
| soma     | 0.570513  | 0.857831 | 0.685274 | 415     |

# How to Get Started with the Model

[More Information Needed]

# Model Card Authors

Ben Pedigo
Bethanny Danskin