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Region-by-region surprisal
Sample item for Subject-Verb Number Agreement (with prepositional phrase)
The first item of the test suite is shown below for quick reference. Please visit the page for Subject-Verb Number Agreement (with prepositional phrase) to see the full list of items.
Item |
Condition
|
intro | np_subject | prep | the | prep_np | matrix_v | continuation |
---|---|---|---|---|---|---|---|---|
Item | Condition | intro | np_subject | prep | the | prep_np | matrix_v | continuation |
1 | match_sing | The | author | next to | the | senators | is | good |
1 | mismatch_sing | The | author | next to | the | senators | are | good |
1 | match_plural | The | authors | next to | the | senator | are | good |
1 | mismatch_plural | The | authors | next to | the | senator | is | good |
Prediction performance for Vanilla LSTM on Subject-Verb Number Agreement (with prepositional phrase)
Accuracy |
Formula
|
Description |
---|---|---|
Accuracy | Prediction | Description |
5.26% | (594,match_sing/6,matrix_v) < (596,mismatch_sing/6,matrix_v) | No description provided. |
52.63% | (595,match_plural/6,matrix_v) < (593,mismatch_plural/6,matrix_v) | No description provided. |