As technology advances, we're seeing more artificial intelligence (AI) applications across various industries. One such application gaining traction in the legal sector is sentiment analysis.
Sentiment analysis is an AI-powered tool that allows legal professionals to better understand the documents they're reviewing by analysing the language used.
This blog post will explore sentiment analysis, how it works and how legal professionals use it.
Sentiment analysis uses natural language processing (NLP), machine learning and AI to analyse and determine the sentiment, opinion or emotion expressed in text or speech. The process involves the analysis of words and phrases used in communication, as well as the context in which they're used. By doing so, the tool can configure whether the overall sentiment is positive, negative or neutral. The sentiment analysis tool within the RelativityOne platform currently offers four sentiments — positivity, negativity, anger and desire.
Sentiment analysis can be used to analyse a wide range of communications, such as social media posts, news articles and legal documents. The tool aims to better understand the sentiment surrounding a topic or individual.
Sentiment analysis can be applied to various industries. In the legal industry, the tool can be utilised in several ways, including:
Sentiment analysis works sentence by sentence to highlight emotions within a text by searching for indicator words that represent certain sentiments. The total amount of these words, combined with their individual rank, results in an overall score for the sentiment within a sentence.
Within the RelativityOne tool, each sentiment is assigned a colour, which helps reviewers easily identify which sentiments are present. The breakdown of sentiments allows reviewers to quickly identify important areas of a document, leading to more informed decisions on its relevance. Overall, this leads to a faster review.
One of the most streamlined opportunities for collaboration between tools is combining sentiment analysis with concept clustering. After categorising your data into themed groups, you can analyse further by seeking the sentiments in each cluster.
Going one level deeper in your review can lead to more accurate document searching and batch building. For example, instead of simply searching for communications on hotels, you can search for communication regarding hotels that score negatively for sentiment. Therefore, your decisions will be more informed, and you can train your Active Learning algorithms using more relevant data.
The tool can be used to identify emotional distress within communications. This can be useful in cases where emotional distress is a key factor, such as harassment or discrimination.
RelativityOne's sentiment analysis tool scans your documents and assigns a numerical score based on the likelihood of the sentence containing the sentiment you're looking for. The higher the confidence score, the more likely the sentence contains your desired sentiment.
The tool works by tying certain words to sentiments. For example, 'hate' would be attributed to anger and 'want' to desire. These factors ensure your results are as accurate as possible:
Running sentiment analysis using RelativityOne is simple. Start by choosing the document set you wish to sample (max. 300,000 documents per scan), select the sentiments you want to search for and begin your scan.
Much like other sentiment analysis tools, RelativityOne's version uses natural language processing (NLP) algorithms to identify and categorise emotions and attitudes expressed in text documents. RelativityOne's sentiment analysis can speed up reviews by:
These benefits can be useful for any investigation, but mostly those involving employee relations (harassment, wrongful termination, etc.), exfiltration or fraud.
When utilising the sentiment analysis tool, it's vital to remember that the scores are predictions, not verdicts. Therefore, human intervention is imperative to ensure the most accurate results.
Reviewers must also be aware of several language considerations when handling sentiment analysis data. These include:
Overall, the sentiment analysis tool is a powerful one. It can help reviewers add an extra layer of detail to their reviews, combining topic relevance with sentiment. But that's not to say it's perfect — human intervention is still necessary, striking a balance between the reviewer and technology. It undoubtedly speeds up and produces accurate reviews, and much like most AI tools, it's expected to become more powerful in the future.
RelativityOne offers several tools to provide litigation support for your eDiscovery needs, and Array can ensure you get the most from the platform.
The platform offers numerous benefits and the tools to handle the largest and most complex cases. In the hands of an Array expert, you can take your data further than ever before using the software.
If you're looking for a way to efficiently deal with large volumes of data in your review process, visit our RelativityOne page to learn more about the platform and how it can help you.