Tools for text mining and analysis
By SaveDelete

Meaning
Text mining involves automatic extraction of high-quality information from written sources or text. It almost works in the same way as data mining part from the fact that text-mining tools are designed to handle unstructured data sets such as documents with full text. On the other hand, text analysis is structuring text data to make it machine readable. In other words, text analysis is the application of text mining in solving different problems. Text mining and analysis are utilized in several real-life fields including a systematic review of literature that can be used for necessary essay paper writing.
Application of Text Mining
Automatic correction and detection of errors or typos is the working mechanism behind all applications or software used for text mining. This could range from simple mistakes such as omission, duplication, and transposition to complex ones like original use of synonyms and spelling errors. This is particularly useful in college essay writing using spell checking systems or plagiarism checkers like Grammarly. Below is a breakdown of some of the applications of text mining:
- Document summarization: This can be applied in news summary where only the key points in a more significant original text document are provided
- Categorization of text: Here text is categorized for instance detection of explicit content or differentiating between non-spam emails and spam emails.
- Analysis of sentiments: It can be used to deduce customers’ perception of a company by extracting or detecting personal information from text documents.
- Entity/concept extraction: this can identify text entries of places, people and organizations into documents.
- Text Clustering: Large sets of data or documents can be organized automatically.
- Coreference resolution: this is applied in plagiarism checkers
Text Analysis
Text analysis is done in several ways. This includes:- Natural Language Processing: this is a type of machine learning technique that extracts meaning from plain text using computational methods.
- Machine Learning: machine learning, forms the basis of text analysis. Therefore, machine learning is an aspect of computer science in which a computer is trained to recognize trends and patterns.
- Network Analysis: network analysis aims to achieve the connection or link between concepts, modes of presenting, concepts and much more.
- Visualization: this is basically, the way in which data is seen regarding the relationships between different concepts.
- Topic Modeling: this is a form of machine learning in which themes and patterns are identified.