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Tools for loading and analyzing large text corpora.

Project description

# CorpusSearch

A tool to load and search in text corpora.

The tool provides routines to search in large corpora in pandas dataframe format, where rows contain textual information on the level of sentences or paragraphs.
Dataframes can be single or multilevel indexed and loaded from URL, DOI, [citable](http://www.edition-topoi.org/publishing_with_us/citable) or local files. Accepted file formats are pickle, excel, json and csv.

This package is designed to work with Jupyter Notebooks as well as in the IPython command line. If used in a Notebook, the user has access to a search GUI.

# Installation

The package can be installed via `pip`:
```
pip install corpussearch
```

Since the package is under active development, the most recent version is always on Github, and can be installed by
```
pip install git+https://github.com/computational-antiquity/corpussearch.git
```

# Basic usage

Import the package
```python
from corpussearch.base import CorpusTextSearch
```

The class is instantiated by providing the path to the source file. Excepted
formats are pickled dataframes, CSV, JSON or Excel files.

Standard parameters assume pickled, multi-indexed dataframes, where the main text
is contained in a column 'text'. For other sources change parameters accordingly.

## Loading data

Using a pre-pickled dataframe:
```python
search = CorpusTextSearch('./path/to/dataframe/file.pickle')
```

Using data in excel format:
```python
search = CorpusTextSearch(
pathDF='./path/to/excel/file.xlsx'
dataType='excel',
dataIndex='single'
)
```

Loading data in excel format from a DOI:
```python
search = CorpusTextSearch(
pathDF='10.17171/1-6-90'
pathType='DOI',
dataType='excel',
dataIndex='single'
)
```

## Search for text and/or parts

A reduction to a specific part and page number is obtained by chaining the desired
reductions `.reduce(key,value)`, where `key` can be either a level of the multi index, or a column name. To obtain the resulting dataframe, `.results()` is added.

```python
result = search.reduce('part','part_name').reduce('page','page_number').results()
```

To restart a search, e.g. within another part, use
```python
search.resetSearch()
```

Additional search logic can be used with `.logicReduce()`. The method accepts a
list of reductions chained with logical AND,OR, or NOT. For example,
```python
search.logicReduce([('part','Part1'),&,('page','10'),|,('text','TEST')]).result()
```
will return the entries of a dataframe where part is Part1 and page number is 10, or the text string contains TEST.

# GUI usage

**Attention:** *Work in progress*

Import the GUI part of the package into a Jupyter Notebook
```python
from corpussearch.gui import CorpusGUI
```

Instantiate with path to source file, as above.
```python
gui = CorpusGUI('./path/to/dataframe/file.pickle')
```
and display the interface
```python
gui.displayGUI()
```

A basic word search returns all results where the search word is contained in the main column, e.g. 'text'. Search values can contain regular expressions, e.g. `\d{2,4}\s[A-Z]`.
For search in parts other then the main column, fuzzy searches are possible if the number of unique values on that level is less than `maxValues`. This routine uses `difflib` to compare the search string to possible values on that level. This can help if the actual string formating is not well known, but could possibly lead to undesired results.

Results are displayed in the sentence output boxes, where the right box contains meta-information derived from the non-main columns or multi-index levels.

To navigate between results use the 'previous' and 'next' buttons.

## Additional search logic

To chain search terms, use the 'more'-button. This opens additional search fields.
Possible logic operations are 'AND', 'OR', and 'NOT'. Each logic operation is between
two consecutive search pairs (part,value). The logic operates in a linear fashion, from the first triple downwards, e.g. for the search (('text','NAME') & ('part','PART1') | ('page','PAGE4')) each tuple (key,value) yields a boolean vector v, such that the search becomes (v1 & v2 | v3). Evaluation continues for the pair v<sub>temp</sub> = (v1 & v2), and finally v<sub>res</sub>= (v<sub>temp</sub> | v3). The resulting boolean vector is used to reduce the full data to the dataframe containing the search result.


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