Reviews are emotions and moods expressed by customers about your store. Customers describe their impressions in text by writing full sentences or single words. They also include emoticons, gifs and even short audio or video recordings. Buyers, on the other hand, are mainly guided by emotions and first impressions.
There’s a reason Google is the most popular review site. Zero-click searches, which in 2022 accounted for 57% of searches from mobile devices and 53% from computers, mean that more than half of users read Google reviews directly from search results and make decisions based on that.
So how do we improve the first impression our store makes? The answer is by working with artificial intelligence. AI can help manage customer feedback using sentiment analysis. But how can AI understand e-commerce customer feedback?
Sentiment analysis is the process of determining what sentiment has been expressed in a customer comment:
Artificial intelligence can quickly analyze numerous utterances through Natural Language Processing (NLP) and Machine Learning (ML). NLP helps understand the linguistic structure of utterances by identifying:
With NLP, machines can “understand” text at a human-like level. Machine learning (ML), in turn, is used to automatically classify these statements based on predetermined categories of emotion or mood (positive, negative, neutral). In practice, the ML model is trained on a large dataset where different opinions are already pre-rated by humans. After a period of training, the model can independently evaluate the sentiment of new opinions with high accuracy. But what can be done with the results thus obtained?
Manually analyzing all customer reviews would require a huge amount of time and work. Using NLP and ML, you can effortlessly analyze all the data coming from your store and use this knowledge for effective feedback management. The first step, therefore, is a well-executed sentiment analysis.
Once the results of the sentiment analysis have been obtained, so that the artificial intelligence “understands” what each opinion expresses, the next step is to segment them, i.e. organize them according to their business relevance, for example:
This allows you to target specific areas of concern. For example, if you notice an increase in negative feedback about your deliveries, you can quickly identify the problem and implement appropriate countermeasures, such as changing suppliers or introducing additional quality control steps.
The next step is to respond in a targeted and individualized manner. Positive feedback can help in building customer loyalty through thank-you notes or special offers. Negative feedback, on the other hand, is an opportunity to improve and demonstrate that as a company you are listening to your customers. You can proactively respond by offering solutions to difficulties, which can cause customers to change the review thus improving the store’s image. In addition, you can utilize the collected data to train your customer service team, improve features on your website or introduce new products according to customer expectations. To properly respond to customer feedback, you can also enlist the help of artificial intelligence.
Artificial intelligence-based tools make it possible to generate immediate and personalized responses to customer feedback. They help resolve customer issues quickly, thereby improving customer satisfaction. AI can also monitor customer reviews for negative content and take appropriate action if necessary, such as removing fake reviews or informing relevant people about hurtful reviews.
The use of artificial intelligence-based tools for online reputation management is first and foremost:
The three most interesting tools that will help you deal with taking care of your store’s online reputation are:
RepBot.ai can collect customer feedback from a variety of sources, such as social media, review sites and customer service tickets. It can also identify negative reviews and flag them so they don’t escape the company’s attention, and can even generate personalized responses to negative reviews.
It has an extra feature, you can set up automatic messages and reminders to encourage customers to give feedback, as well as display the best reviews on the store’s website with customized widgets.
Source: RepBot (https://repbot.ai/)
The RepBot website also offers two free tools showing a fraction of its capabilities – a review response generator (https://repbot.ai/free-tools/ai-review-response) and a tool for detecting unsubstantiated negative e-commerce reviews on Google (https://repbot.ai/free-tools/remove-negative-google-reviews)
Source: MARA (https://www.mara-solutions.com/
Source: BrandBastion (https://www.brandbastion.com/)
BrandBastion allows you to quickly respond to customer feedback and prevent negative situations from escalating. It also offers features for detecting and removing fake reviews, as well as for generating responses and positive content, such as customer testimonials. BrandBastion uses sentiment analysis to understand customer feedback and take appropriate action. We find the reporting feature particularly handy as it lets you track campaign results and monitor progress over time.
Artificial intelligence, with its advanced natural language processing and machine learning capabilities, offers solutions to effectively analyze and segment opinions. Thanks to AI, companies not only gain precise insight into the emotions and needs of their customers but can also generate personalized responses in real time, resulting in increased customer satisfaction and building a positive brand image.
However, this is only the beginning of the possibilities of artificial intelligence. Soon, AI tools will be even more advanced, enabling complex analysis of consumer behavior and predictions of their future decisions. Moreover, they will be able to automatically respond to market dynamics, adjusting product offers or streamlining logistics processes based on sentiment analysis. One thing is certain: e-commerce businesses operating locally and internationally that do not invest in these technologies may be left behind.
If you like our content, join our busy bees community on Facebook, Twitter, LinkedIn, Instagram, YouTube, Pinterest, TikTok.
Author: Robert Whitney
JavaScript expert and instructor who coaches IT departments. His main goal is to up-level team productivity by teaching others how to effectively cooperate while coding.
Pinterest, which made its debut on the social media scene a decade ago, never gained…
Thinking carefully on a question of how to promote a startup will allow you to…
A podcast in marketing still seems to be a little underrated. But it changes. It…
Video marketing for small business is an excellent strategy of internet marketing. The art of…
Are you wondering how to promote a startup business? We present crowdfunding platforms and websites…
How to use social media to increase sales? Well, let's start like that. Over 2.3…