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Light Text Classification
Out of the Box Packages > UiPath Language Analysis > LightTextClassification
This is a generic, retrainable model for text classification. It supports all languages based on Latin characters, such as English, French, Spanish, and others. This ML Package must be trained, and if deployed without training first the deployment will fail with an error stating that the model is not trained. This model operates on Bag of Words. This model provides explainability based on n-grams.
JSON with class and confidence (between 0-1).
{
"class": "7",
"confidence": 0.1259827300369445,
"ngrams": [
[
"like",
1.3752658445706787
],
[
"like this",
0.032029048484416685
]
]
}
{
"class": "7",
"confidence": 0.1259827300369445,
"ngrams": [
[
"like",
1.3752658445706787
],
[
"like this",
0.032029048484416685
]
]
}
This package supports all three types of pipelines (Full Training, Training, and Evaluation). The model uses advanced techniques to find a performant model using hyperparameter search. By default, hyperparameter search (the BOW.hyperparameter_search.enable variable) is enabled. The parameters of the most performant model are available in the Evaluation Report.
Three options are available to structure your dataset for this model : JSON, CSV and AI Center JSON format. The model will read all CSV and JSON files in the specified directory. For every format, the model expects two columns or two properties, dataset.input_column_name and dataset.target_column_name by default. The names of these two columns and/or directories are configurable using environment variables.
CSV file format
Each CSV file can have any number of columns, but only two will be used by the model. Those columns are specified by the dataset.input_column_name and dataset.target_column_name parameters.
Check the following sample and environment variables for a CSV file format example.
text, label
I like this movie, 7
I hated the acting, 9
text, label
I like this movie, 7
I hated the acting, 9
The environment variables for the previous example would be as follows :
- dataset.input_format:
auto
- dataset.input_column_name:
text
- dataset.target_column_name:
label
JSON file format
Multiple datapoints could be a part of the same JSON file.
Check the following sample and environment variables for a JSON file format example.
[
{
"text": "I like this movie",
"label": "7"
},
{
"text": "I hated the acting",
"label": "9"
}
]
[
{
"text": "I like this movie",
"label": "7"
},
{
"text": "I hated the acting",
"label": "9"
}
]
The environment variables for the previous example would be as follows :
- dataset.input_format:
auto
- dataset.input_column_name:
text
- dataset.target_column_name:
label
ai_center file format
.json
extension.
Check the following sample and environment variables for an ai_center file format example.
{
"annotations": {
"intent": {
"to_name": "text",
"choices": [
"TransactionIssue",
"LoanIssue"
]
},
"sentiment": {
"to_name": "text",
"choices": [
"Very Positive"
]
},
"ner": {
"to_name": "text",
"labels": [
{
"start_index": 37,
"end_index": 47,
"entity": "Stakeholder",
"value": " Citi Bank"
},
{
"start_index": 51,
"end_index": 61,
"entity": "Date",
"value": "07/19/2018"
},
{
"start_index": 114,
"end_index": 118,
"entity": "Amount",
"value": "$500"
},
{
"start_index": 288,
"end_index": 293,
"entity": "Stakeholder",
"value": " Citi"
}
]
}
},
"data": {
"cc": "",
"to": "xyz@abc.com",
"date": "1/29/2020 12:39:01 PM",
"from": "abc@xyz.com",
"text": "I opened my new checking account with Citi Bank in 07/19/2018 and met the requirements for the promotion offer of $500 . It has been more than 6 months and I have not received any bonus. I called the customer service several times in the past few months but no any response. I request the Citi honor its promotion offer as advertised."
{
"annotations": {
"intent": {
"to_name": "text",
"choices": [
"TransactionIssue",
"LoanIssue"
]
},
"sentiment": {
"to_name": "text",
"choices": [
"Very Positive"
]
},
"ner": {
"to_name": "text",
"labels": [
{
"start_index": 37,
"end_index": 47,
"entity": "Stakeholder",
"value": " Citi Bank"
},
{
"start_index": 51,
"end_index": 61,
"entity": "Date",
"value": "07/19/2018"
},
{
"start_index": 114,
"end_index": 118,
"entity": "Amount",
"value": "$500"
},
{
"start_index": 288,
"end_index": 293,
"entity": "Stakeholder",
"value": " Citi"
}
]
}
},
"data": {
"cc": "",
"to": "xyz@abc.com",
"date": "1/29/2020 12:39:01 PM",
"from": "abc@xyz.com",
"text": "I opened my new checking account with Citi Bank in 07/19/2018 and met the requirements for the promotion offer of $500 . It has been more than 6 months and I have not received any bonus. I called the customer service several times in the past few months but no any response. I request the Citi honor its promotion offer as advertised."
For leveraging the previous sample JSON, the environment variables need to be set as follows:
- dataset.input_format:
ai_center
- dataset.input_column_name:
data.text
- dataset.target_column_name:
annotations.intent.choices
- dataset.input_column_name
- The name of the input column containing the text.
- Default value is
data.text
. - Make sure that this variable is configured according to your input JSON or CSV file.
- dataset.target_column_name
- The name of the target column containing the text.
- Default value is
annotations.intent.choices
. - Make sure that this variable is configured according to your input JSON or CSV file.
- dataset.input_format
- The input format of the training data.
- Default value is
ai_center
. - Supported values are:
ai_center
orauto
. - If
ai_center
is selected, onlyJSON
files are supported. Make sure to also change the value of the dataset.target_column_name toannotations.sentiment.choices
ifai_center
is selected. - If
auto
is selected, bothCoNLL
andJSON
files are supported.
- BOW.hyperparameter_search.enable
- The default value for this parameter is
True
. If left enabled, this will find the most performant model in the given timeframe and compute resources. - This will also generate a
HyperparameterSearch_report
PDF file to showcase variations of parameters that were tried.
- The default value for this parameter is
- BOW.hyperparameter_search.timeout
- The maximum time the hyperparameter search is allowed to run in seconds.
- Default value is
1800
.
- BOW.explain_inference
- When this is set to
True
, during inference time when model is served as ML Skill, some of the most important n-grams will also be returned along with the prediction. - Default value is
False
.
- When this is set to
Optional variables
True
, the optimal values of these variables are searched. For the following optional parameters to be used by the model, please
set the BOW.hyperparameter_search.enable search variable to False
:
- BOW.lr_kwargs.class_weight
- Supported values are:
balanced
orNone
.
- Supported values are:
- BOW.ngram_range
- Range of sequence length of consecutive word sequence that can be considered as features for the model.
- Make sure to follow this format:
(1, x)
, wherex
is the maximum sequence length you want to allow.
- BOW.min_df
- Used to set the minimum number of occurrences of the n-gram in the dataset to be considered as a feature.
- Recommended values are between
0
and10
.
- dataset.text_pp_remove_stop_words
- Used to configure whether or not stop words should be included in the search (for example, words like
the
,or
). - Supported values are:
True
orFalse
.
- Used to configure whether or not stop words should be included in the search (for example, words like
The evaluation report is a PDF file containing the following information in a human-readable format:
- ngrams per class
- Precision-recall diagram
- Classification report
- Confusion matrix
- Best Model Parameters for Hyperparameter search
ngrams per class
This section contains the top 10 n-grams that affects the model prediction for that class. There is a different table for each class that the model was trained on.
Precision recall diagram
You can use this diagram and the table to check the precision, recall trade-off, along with f1-scores of the model. The thresholds and corresponding precision and recall values are also provided in a table below this diagram. This table will choose the desired threshold to configure in your workflow so as to decide when to send the data to Action Center for human in the loop. Note that the higher the chosen threshold, the higher the amount of data that gets routed to Action Center for human in the loop will be.
There is a precision-recall diagram for each class.
For an example of a precision-recall diagram, see the figure below.
For an example of a precision-recall table, see the table below.
Precision | Recall | Threshold |
---|---|---|
0.8012232415902141 | 0.6735218508997429 | 0.30539842728983285 |
0.8505338078291815 | 0.6143958868894601 | 0.37825683923133907 |
0.9005524861878453 | 0.4190231362467866 | 0.6121292357073038 |
0.9514563106796117 | 0.2519280205655527 | 0.7916427288647211 |
Classification report
The classification report contains the following information:
- Label - the label part of the test set
- Precision - the accuracy of the prediction
- Recall - relevant instances that were retrieved
- F1 score - the geometric mean between precision and recall; you can use this score to compare two models
- Support - the number of times a certain label appears in the test set
For an example of a classification report, see the table below.
Label | Precision | Recall | F1 Score | Support |
---|---|---|---|---|
0.0 | 0.805 | 0.737 | 0.769 | 319 |
1.0 | 0.731 | 0.812 | 0.77 | 389 |
2.0 | 0.778 | 0.731 | 0.754 | 394 |
3.0 | 0.721 | 0.778 | 0.748 | 392 |
4.0 | 0.855 | 0.844 | 0.85 | 385 |
5.0 | 0.901 | 0.803 | 0.849 | 395 |
Confusion Matrix
Best Model Parameters for Hyperparameter search
True
the best model parameters picked by the algorithm are displayed in this table. To retrain the model with different parameters
not covered by the hyperparameter search you can also set these parameters manually in the Environment variables. For more information on this, check the (doc:light-text-classification#environment-variables) section.
For an example of this report, see the table below.
Name | Value |
---|---|
BOW.ngram_range | (1, 2) |
BOW.min_df | 2 |
BOW.lr_kwargs.class_weight | balanced |
dataset.text_pp_remove_stop_words | True |
Hyperparameter search report
True
. The report contains the best values for the optional variables and a diagram to display the results.
JSON files
You can find separate JSON files corresponding to each section of the Evaluation Report PDF file. These JSON files are machine-readable and you can use them to pipe the model evaluation into Insights using the workflow.