Product market demand analysis plays a significant role for originating business strategies due to its noticeable impact on the competitive business field. Furthermore, there are roughly 228 million native Bengali speakers, the majority of whom use Banglish text to interact with one another on social media. Consumers are buying and evaluating items on social media with Banglish text as social media emerges as an online marketplace for entrepreneurs. People use social media to find preferred smartphone brands and models by sharing their positive and bad experiences with them. For this reason, our goal is to gather Banglish text data and use sentiment analysis and named entity identification to assess Bangladeshi market demand for smartphones in order to determine the most popular smartphones by gender. We scraped product related data from social media with instant data scrapers and crawled data from Wikipedia and other sites for product information with python web scrapers. Using Python's Pandas and Seaborn libraries, the raw data is filtered using NLP methods. To train our datasets for named entity recognition, we utilized Spacey's custom NER model, Amazon Comprehend Custom NER. A tensorflow sequential model was deployed with parameter tweaking for sentiment analysis. Meanwhile, we used the Google Cloud Translation API to estimate the gender of the reviewers using the BanglaLinga library. In this article, we use natural language processing (NLP) approaches and several machine learning models to identify the most in-demand items and services in the Bangladeshi market. Our model has an accuracy of 87.99% in Spacy Custom Named Entity recognition, 95.51% in Amazon Comprehend Custom NER, and 87.02% in the Sequential model for demand analysis. After Spacy's study, we were able to manage 80% of mistakes related to misspelled words using a mix of Levenshtein distance and ratio algorithms.
翻译:产品市场需求分析由于对竞争性商业领域的显著影响,对原创商业战略具有重要作用。此外,约有2.28亿孟加拉本地孟加拉语使用者,其中多数人使用孟加拉语文本在社交媒体上相互互动。消费者正在购买和评价社交媒体上的项目,随着社会媒体的在线市场成为企业家的在线市场。人们利用社交媒体找到首选的智能手机品牌和模型,与它们分享积极和不良的经验。为此,我们的目标是收集孟加拉文文本数据,并使用情绪分析和命名实体身份识别来评估孟加拉国对智能手机的市场需求,以便确定最受欢迎的智能手机的性别。我们用即时数据剪裁剪刻数据从社会媒体和从维基百科和其他网站获取的数据,用于与Python网络剪贴的产品信息。使用Python的Pandas和Seablorbil的图书馆,原始数据通过NLP方法过滤。我们用Scread Streal Spreal 服务器的定制模型、Amazonceprecial NER, 和我们用Oral Ral Ral Ral Modeal 做了数 分析,我们使用了Olation Ral dal 和Olation Ral 。在Sild IM IM IM IM IM 上,在服务器上,我们使用了对服务器进行了数个Llationallational 做了数个服务器做了一次数据分析,在Slationalislational 。在Slational 做了一次分析,在Slational 。