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[DOC] fix incorrect references of classes in getting started page #2762

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10 changes: 5 additions & 5 deletions docs/getting_started.md
Original file line number Diff line number Diff line change
Expand Up @@ -314,7 +314,7 @@ tasks related to time series similarity search. The estimators can be used stand
or as parts of pipelines, while the functions give you the tools to build your own
estimators that would rely on similarity search at some point.

The estimators are inheriting from the [BaseSimiliaritySearch](similarity_search.base.BaseSimiliaritySearch)
The estimators are inheriting from the [BaseSimilaritySearch](similarity_search.base.BaseSimilaritySearch)
class accepts as inputs 3D time series (n_cases, n_channels, n_timepoints) for the
fit method. Univariate and single series can still be used, but will need to be reshaped
to this format.
Expand Down Expand Up @@ -356,7 +356,7 @@ and those that transform a collection.

### Transformers for Single Time Series

Transformers inheriting from the [BaseSeriesTransformer](transformations.base.BaseSeriesTransformer)
Transformers inheriting from the [BaseSeriesTransformer](transformations.series.base.BaseSeriesTransformer)
in the `aeon.transformations.series` package transform a single (possibly multivariate)
time series into a different time series or a feature vector. More info to follow.

Expand Down Expand Up @@ -385,7 +385,7 @@ Most time series classification and regression algorithms are based on some form
transformation into an alternative feature space. For example, we might extract some
summary time series features from each series, and fit a traditional classifier or
regressor on these features. For example, we could use
[Catch22](transformations.collection.feauture_based), which calculates 22 summary
[Catch22](transformations.collection.feature_based.Catch22), which calculates 22 summary
statistics for each series.

```{code-block} python
Expand All @@ -403,7 +403,7 @@ statistics for each series.
```

There are also series-to-series transformations, such as the
[Padder](transformations.collection) to lengthen
[Padder](transformations.collection.Padder) to lengthen
series and process unequal length collections.

```{code-block} python
Expand Down Expand Up @@ -438,7 +438,7 @@ For machine learning tasks such as classification, regression and clustering, th
`scikit-learn` `make_pipeline` functionality can be used if the transformer outputs
a valid input type.

The following example uses the [Catch22](transformations.collection.catch22.Catch22)
The following example uses the [Catch22](transformations.collection.feature_based.Catch22)
feature extraction transformer and a random forest classifier to classify.

```{code-block} python
Expand Down