{"id":7544,"date":"2018-10-12T19:28:19","date_gmt":"2018-10-12T19:28:19","guid":{"rendered":"https:\/\/nxt.scraawl.com\/product\/?p=7544"},"modified":"2022-05-02T22:57:03","modified_gmt":"2022-05-02T22:57:03","slug":"whats-love-sentiment-analysis","status":"publish","type":"post","link":"https:\/\/10.19.3.33\/product\/2018\/10\/12\/whats-love-sentiment-analysis\/","title":{"rendered":"What’s Love Got to Do With It? How Sentiment Analysis Can Propel Your Brand"},"content":{"rendered":"
[vc_row][vc_column][vc_column_text]As the classic Tina Turner song goes what’s love, what’s love got to do with it<\/em>? The answer for brands, of course, is everything. Whether customers return for a repeat purchase lies in the distance between liking and loving a brand. Traditionally, in order to assess audience sentiment around a service or product, companies used to send out surveys. And while many still do, with social media, marketers now have access to an immense amount of text data which can be leveraged for sentiment analysis.<\/p>\n While surveys are helpful in user design research, for A\/B testing and the like, social media is a great place to go to assess sentiment. Most brands conduct social listening, carefully following all mentions of their brand online. That’s why Sentiment Analysis is a powerful tool, because it can help to scale the analysis abilities of a single marketer. But with Sentiment Analysis there are caveats, and this is where we wanted to start first in this blog.<\/p>\n In order to build a machine learning model, data scientists need structured datasets. A structured dataset has features which are given weights in an algorithm. Any classification system, which is at the heart of any sentiment analysis tool, will be dependent on these beginning datasets.<\/p>\n Accuracy in the model also dovetails into the question of linguistic nuance accuracy.\u00a0Famed linguist Noam Chomsky made a name for himself in the 1960s with the revelation that language acquisition is isomorphic, that a sentence approached from different ways could still be understood by a human. But there are many acquisition factors that have yet to be fully replicated by a machine.<\/p>\nLimitations of Sentiment Analysis<\/h2>\n
1. Classification systems are as good as their training datasets<\/h3>\n
2. It’s hard enough for two humans to understand each other<\/h3>\n