Online media sentiment analysis for US oysters

Author:

Bradford Taylor L.1ORCID,Quagrainie Kwamena K.1

Affiliation:

1. Department of Agricultural Economics Purdue University West Lafayette Indiana USA

Abstract

AbstractSentiment analysis, a form of data analytics, utilises information from online discussions, reviews, and social media posts to assess consumer sentiments. This study utilised data collected from social media using online listening procedures to assess online sentiments on oysters from January 2019 through December 2022. The analysis utilises machine learning algorithms to extract consumer sentiments, opinions, and demands from online chatter from different online domains. The online sentiments are determined as positive, negative, or neutral based on their word choice, tone, and context. The information provided gives insights into perception, which is valuable information for oyster producers, seafood industry stakeholders, and marketers to identify consumer preferences and formulate appropriate strategies accordingly. The results suggest that while farmed oysters are gaining popularity, there are still some concerns and criticisms around the industry. Positive words associated with mentions of oysters in general include ‘great’, ‘love’, ‘delicious’, ‘enjoyed’, and ‘oyster bar’, while negative words associated with oysters include ‘water’, ‘raw oyster’, ‘bad’, and ‘not eat’. The overall percentage net sentiment associated with all oysters in the United States is positive at 63%. The net sentiment associated with wild oysters is positive, at 51%, and that of farmed oysters is 58%. The oyster industry could invest more in public education, sustainability, and water‐cleaning initiatives to improve its image. Utilising social media to monitor and shape public perception can help the industry address concerns and enhance oyster‐related sentiments, offering valuable insights for marketing and sales strategies.

Funder

Illinois-Indiana Sea Grant, University of Illinois

National Institute of Food and Agriculture

Publisher

Wiley

Reference32 articles.

1. Agricultural Marketing Resource Center (AMRC). (2022)Oysters. Available at:https://www.agmrc.org/commodities‐products/aquaculture/aquaculture‐non‐fish‐species/oysters[Accessed 16 June 2023].

2. Text emotion analysis in aquaculture communication via Twitter: The case of Spain

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