Evaluating Frequency of words and Word Cloud from Astrological sentiments using NLP

The identification of interest/disinterest over a notion is having a huge demand in the current competitive data analytical world. For example, the customer preferences in various seasons, approximate visitors to a tourist place based on scenarios like weather and special occasions in the place, and so on. While giving an opinion on any concept, natural language in form of sentences/words/symbols/ratings plays a vital role. Depends upon the context and usage of natural language, captured opinions can be interpreted as either in a positive or negative sense. The terminology used for providing the opinions is used for analysing the data in an easy way. The evaluation of the word frequencies and word cloud are identified accurately, only after a keen analysis of the collected opinions. The Term-Document Matrix is one of the techniques that identify the frequency of words in each and every document/row in the given dataset, which can be used to generate the word cloud. In this paper to identify the frequency of words from the opinions given by multi-domain personalities on Astrology, distinct Natural Language Processing (NLP) techniques are used. A word cloud can also be generated from the set of words used for the astrological dataset.

[1]  Praveen Dhyani,et al.  Astrological prediction for profession using classification techniques of artificial intelligence , 2015, International Conference on Computing, Communication & Automation.

[2]  Shuang Feng,et al.  Research on Music Emotion Classification Based on Lyrics and Audio , 2018, 2018 IEEE 3rd Advanced Information Technology, Electronic and Automation Control Conference (IAEAC).

[3]  Agostino Forestiero,et al.  Natural language processing approach for distributed health data management , 2020, 2020 28th Euromicro International Conference on Parallel, Distributed and Network-Based Processing (PDP).

[4]  Junhee Seok,et al.  Stock Prices Prediction using the Title of Newspaper Articles with Korean Natural Language Processing , 2019, 2019 International Conference on Artificial Intelligence in Information and Communication (ICAIIC).

[5]  L. Ragha,et al.  Featured based sentiment classification for hotel reviews using NLP and Bayesian classification , 2012, 2012 International Conference on Communication, Information & Computing Technology (ICCICT).

[6]  S. Babbar Battle with COVID-19 Under Partial to Zero Lockdowns in India , 2020, medRxiv.

[7]  M Kali Das,et al.  Assessment of Optical Character Recognition Techniques for Hindi Language , 2019 .

[8]  C. Impey,et al.  Linking introductory astronomy students’ basic science knowledge, beliefs, attitudes, sources of information, and information literacy , 2018, Physical Review Physics Education Research.

[9]  Jingbo Zhu,et al.  Sentiment word identification using the maximum entropy model , 2010, Proceedings of the 6th International Conference on Natural Language Processing and Knowledge Engineering(NLPKE-2010).

[10]  Chalermpol Tapsai Information Processing and Retrieval from CSV File by Natural Language , 2018, 2018 IEEE 3rd International Conference on Communication and Information Systems (ICCIS).

[11]  Vijay K. Mago,et al.  Automating Articulation: Applying Natural Language Processing to Post-Secondary Credit Transfer , 2019, IEEE Access.

[12]  Zheng Hu,et al.  A Natural Language Process-Based Framework for Automatic Association Word Extraction , 2020, IEEE Access.

[13]  Thomas Ertl,et al.  Word Cloud Explorer: Text Analytics Based on Word Clouds , 2014, 2014 47th Hawaii International Conference on System Sciences.

[14]  Sardar Jaf,et al.  Deep Learning for Natural Language Parsing , 2019, IEEE Access.