Report for distilbert/distilbert-base-uncased-finetuned-sst-2-english
Hi Team,
This is a report from Giskard Bot Scan 🐢.
We have identified 5 potential vulnerabilities in your model based on an automated scan.
This automated analysis evaluated the model on the dataset sst2 (subset default
, split validation
).
You can find a full version of scan report here.
👉Robustness issues (1)
When feature “text” is perturbed with the transformation “Add typos”, the model changes its prediction in 13.0% of the cases. We expected the predictions not to be affected by this transformation.
Level | Metric | Transformation | Deviation |
---|---|---|---|
major 🔴 | Fail rate = 0.130 | Add typos | 104/800 tested samples (13.0%) changed prediction after perturbation |
Taxonomy
avid-effect:performance:P0201🔍✨Examples
text | Add typos(text) | Original prediction | Prediction after perturbation | |
---|---|---|---|---|
13 | we root for ( clara and paul ) , even like them , though perhaps it 's an emotion closer to pity . | we root for ( clara and paul ) , even like them , htough perhaps it 's an emotiom closer to pity . | POSITIVE (p = 0.96) | NEGATIVE (p = 0.99) |
16 | the emotions are raw and will strike a nerve with anyone who 's ever had family trauma . | the ekotions are raw andw ill strike a nerve with anyone wgo 's ever had family trauma . | POSITIVE (p = 1.00) | NEGATIVE (p = 0.60) |
22 | holden caulfield did it better . | holdsn caulfkeld did t better . | POSITIVE (p = 0.99) | NEGATIVE (p = 1.00) |
👉Performance issues (4)
For records in the dataset where text_length(text)
>= 50.500 AND text_length(text)
< 61.500, the Precision is 15.5% lower than the global Precision.
Level | Data slice | Metric | Deviation |
---|---|---|---|
major 🔴 | text_length(text) >= 50.500 AND text_length(text) < 61.500 |
Precision = 0.759 | -15.50% than global |
Taxonomy
avid-effect:performance:P0204🔍✨Examples
text | text_length(text) | label | Predicted label |
|
---|---|---|---|---|
92 | you wo n't like roger , but you will quickly recognize him . | 61 | NEGATIVE | POSITIVE (p = 1.00) |
171 | rarely has leukemia looked so shimmering and benign . | 54 | NEGATIVE | POSITIVE (p = 0.98) |
183 | the lower your expectations , the more you 'll enjoy it . | 58 | NEGATIVE | POSITIVE (p = 1.00) |
For records in the dataset where text_length(text)
>= 73.500 AND text_length(text)
< 82.500, the Recall is 11.19% lower than the global Recall.
Level | Data slice | Metric | Deviation |
---|---|---|---|
major 🔴 | text_length(text) >= 73.500 AND text_length(text) < 82.500 |
Recall = 0.826 | -11.19% than global |
Taxonomy
avid-effect:performance:P0204🔍✨Examples
text | text_length(text) | label | Predicted label |
|
---|---|---|---|---|
93 | if steven soderbergh 's ` solaris ' is a failure it is a glorious failure . | 76 | POSITIVE | NEGATIVE (p = 1.00) |
123 | turns potentially forgettable formula into something strangely diverting . | 75 | POSITIVE | NEGATIVE (p = 0.99) |
142 | what better message than ` love thyself ' could young women of any size receive ? | 82 | POSITIVE | NEGATIVE (p = 0.99) |
For records in the dataset where text_length(text)
>= 165.500 AND text_length(text)
< 179.500, the Recall is 6.37% lower than the global Recall.
Level | Data slice | Metric | Deviation |
---|---|---|---|
medium 🟡 | text_length(text) >= 165.500 AND text_length(text) < 179.500 |
Recall = 0.871 | -6.37% than global |
Taxonomy
avid-effect:performance:P0204🔍✨Examples
text | text_length(text) | label | Predicted label |
|
---|---|---|---|---|
158 | by getting myself wrapped up in the visuals and eccentricities of many of the characters , i found myself confused when it came time to get to the heart of the movie . | 168 | NEGATIVE | POSITIVE (p = 0.99) |
266 | a coda in every sense , the pinochet case splits time between a minute-by-minute account of the british court 's extradition chess game and the regime 's talking-head survivors . | 179 | POSITIVE | NEGATIVE (p = 0.99) |
282 | while there 's something intrinsically funny about sir anthony hopkins saying ` get in the car , bitch , ' this jerry bruckheimer production has little else to offer | 166 | POSITIVE | NEGATIVE (p = 1.00) |
For records in the dataset where text_length(text)
>= 151.500 AND text_length(text)
< 165.500, the Recall is 5.93% lower than the global Recall.
Level | Data slice | Metric | Deviation |
---|---|---|---|
medium 🟡 | text_length(text) >= 151.500 AND text_length(text) < 165.500 |
Recall = 0.875 | -5.93% than global |
Taxonomy
avid-effect:performance:P0204🔍✨Examples
text | text_length(text) | label | Predicted label |
|
---|---|---|---|---|
324 | you 'll gasp appalled and laugh outraged and possibly , watching the spectacle of a promising young lad treading desperately in a nasty sea , shed an errant tear . | 164 | POSITIVE | NEGATIVE (p = 0.95) |
673 | drops you into a dizzying , volatile , pressure-cooker of a situation that quickly snowballs out of control , while focusing on the what much more than the why . | 162 | POSITIVE | NEGATIVE (p = 0.94) |
692 | sustains its dreamlike glide through a succession of cheesy coincidences and voluptuous cheap effects , not the least of which is rebecca romijn-stamos . | 154 | NEGATIVE | POSITIVE (p = 0.94) |
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Disclaimer: it's important to note that automated scans may produce false positives or miss certain vulnerabilities. We encourage you to review the findings and assess the impact accordingly.