{"payload":{"feedbackUrl":"https://github.com/orgs/community/discussions/53140","repo":{"id":773512096,"defaultBranch":"main","name":"Sentiment-Analysis-on-Amazon-Products-Review","ownerLogin":"Greatwoman23","currentUserCanPush":false,"isFork":false,"isEmpty":false,"createdAt":"2024-03-17T21:17:35.000Z","ownerAvatar":"https://avatars.githubusercontent.com/u/130939299?v=4","public":true,"private":false,"isOrgOwned":false},"refInfo":{"name":"","listCacheKey":"v0:1710715641.0","currentOid":""},"activityList":{"items":[{"before":"3d33f142ccb386831e5c3c50bf349bff131c6162","after":"3c45100c743d8f0afe6ba81f8bb113ed206adfff","ref":"refs/heads/main","pushedAt":"2024-03-18T21:48:33.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Delete dashboard_sentiment_analysis.html","shortMessageHtmlLink":"Delete dashboard_sentiment_analysis.html"}},{"before":"442c8e358d0aeebb615d47cac649cbdd587755d8","after":"3d33f142ccb386831e5c3c50bf349bff131c6162","ref":"refs/heads/main","pushedAt":"2024-03-18T21:43:54.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"dashboard_sentiment_analysis.html","shortMessageHtmlLink":"dashboard_sentiment_analysis.html"}},{"before":"2bef3ba05406999c4924254ddbaddc9ad89a3724","after":"442c8e358d0aeebb615d47cac649cbdd587755d8","ref":"refs/heads/main","pushedAt":"2024-03-18T21:28:10.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Dashboard for sentiment_analysis_app_index.html","shortMessageHtmlLink":"Dashboard for sentiment_analysis_app_index.html"}},{"before":"aade06ada7690f7bebe4fcc8391721f9d0cdbe87","after":"2bef3ba05406999c4924254ddbaddc9ad89a3724","ref":"refs/heads/main","pushedAt":"2024-03-18T21:17:23.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Dashboard for sentiment_analyisis_app.py","shortMessageHtmlLink":"Dashboard for sentiment_analyisis_app.py"}},{"before":"d314f9192f01239c1a712f444ef07ea2ce381bde","after":"aade06ada7690f7bebe4fcc8391721f9d0cdbe87","ref":"refs/heads/main","pushedAt":"2024-03-18T21:16:01.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Delete LINK TO DASHBOARD APP FOR SENTIMENT ANALYSIS ON AMAZON PRODUCTS REVIEW.pdf","shortMessageHtmlLink":"Delete LINK TO DASHBOARD APP FOR SENTIMENT ANALYSIS ON AMAZON PRODUCT…"}},{"before":"a76c3be317a5daf16e022b7990a4772361daf4bb","after":"d314f9192f01239c1a712f444ef07ea2ce381bde","ref":"refs/heads/main","pushedAt":"2024-03-18T21:14:54.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Add files via upload\n\nDashboard for sentiment analysis project","shortMessageHtmlLink":"Add files via upload"}},{"before":"b9e37383b12a59b99ef880da39cadfa3ae7e53ea","after":"a76c3be317a5daf16e022b7990a4772361daf4bb","ref":"refs/heads/main","pushedAt":"2024-03-18T21:07:51.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":" README.md","shortMessageHtmlLink":" README.md"}},{"before":"68b6172e08383b4659bace54d85b7b82618d6a4f","after":"b9e37383b12a59b99ef880da39cadfa3ae7e53ea","ref":"refs/heads/main","pushedAt":"2024-03-18T11:45:15.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Delete Dash_app.py index.html","shortMessageHtmlLink":"Delete Dash_app.py index.html"}},{"before":"a6c6005c7547be588ac91620e4532998769c278b","after":"68b6172e08383b4659bace54d85b7b82618d6a4f","ref":"refs/heads/main","pushedAt":"2024-03-18T11:45:00.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Delete style.css","shortMessageHtmlLink":"Delete style.css"}},{"before":"89e98b7740fdf6db2e36be701155e50835daf2e8","after":"a6c6005c7547be588ac91620e4532998769c278b","ref":"refs/heads/main","pushedAt":"2024-03-18T11:44:44.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Delete app.js","shortMessageHtmlLink":"Delete app.js"}},{"before":"e23ee058b0bb2d59f1947c82f3c17ead15baee97","after":"89e98b7740fdf6db2e36be701155e50835daf2e8","ref":"refs/heads/main","pushedAt":"2024-03-17T23:36:51.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Create style.css","shortMessageHtmlLink":"Create style.css"}},{"before":"95ad76ba53c3d07c00e4cf38893ee1a45bcdc109","after":"e23ee058b0bb2d59f1947c82f3c17ead15baee97","ref":"refs/heads/main","pushedAt":"2024-03-17T23:36:24.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Create app.js","shortMessageHtmlLink":"Create app.js"}},{"before":"206cd307e05f76f074c99ae2884187f55d440af8","after":"95ad76ba53c3d07c00e4cf38893ee1a45bcdc109","ref":"refs/heads/main","pushedAt":"2024-03-17T23:20:15.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"README.md","shortMessageHtmlLink":"README.md"}},{"before":"aa27374db8b4d4ee869ab7c4b4c9f3d5c933df15","after":"206cd307e05f76f074c99ae2884187f55d440af8","ref":"refs/heads/main","pushedAt":"2024-03-17T23:12:14.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Create Dash_app.py index.html\n\nDashboard for deployment","shortMessageHtmlLink":"Create Dash_app.py index.html"}},{"before":"5474a4e2db816aafa4ec5d874011b80ad2ea8fc2","after":"aa27374db8b4d4ee869ab7c4b4c9f3d5c933df15","ref":"refs/heads/main","pushedAt":"2024-03-17T22:51:08.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":" README.md\n\nREADME.md for Sentiment Analysis Project","shortMessageHtmlLink":" README.md"}},{"before":"c3c81b3c0149486ab49a2fdf9dc4e5d6dd4aa665","after":"5474a4e2db816aafa4ec5d874011b80ad2ea8fc2","ref":"refs/heads/main","pushedAt":"2024-03-17T22:47:21.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Add files via upload\n\nIn this project, we aim to harness the power of Natural Language Processing (NLP) techniques to analyze and understand the sentiments expressed in Amazon product reviews. Leveraging advanced machine learning algorithms and libraries such as TensorFlow and scikit-learn, we delve into a dataset consisting of thousands of Amazon product reviews spanning various categories. Our goal is to develop a robust sentiment analysis model capable of accurately classifying these reviews into positive, negative, or neutral sentiments. Throughout the project, we explore different methodologies for data preprocessing, feature extraction, and model training, striving to achieve optimal performance and interpretability. Additionally, we employ visualization techniques to gain insights into the distribution of sentiments across different products and categories. By the end of this endeavor, we aim to create a comprehensive sentiment analysis framework that not only provides valuable insights for businesses but also enhances our understanding of customer sentiments in the digital age.","shortMessageHtmlLink":"Add files via upload"}},{"before":"2f7586c808365522bced0ebd27a9d9715680f577","after":"c3c81b3c0149486ab49a2fdf9dc4e5d6dd4aa665","ref":"refs/heads/main","pushedAt":"2024-03-17T22:35:50.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"README.md\n\nREADME.md for sentiment analysis project","shortMessageHtmlLink":"README.md"}},{"before":"750cfa52a705b86dc5da847e9513c3612a1fd414","after":"2f7586c808365522bced0ebd27a9d9715680f577","ref":"refs/heads/main","pushedAt":"2024-03-17T22:34:27.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":" README.md\n\nREADME.md for sentiment analysis project","shortMessageHtmlLink":" README.md"}},{"before":"39c92d534e6f51a9037df6275def21fde429fd7c","after":"750cfa52a705b86dc5da847e9513c3612a1fd414","ref":"refs/heads/main","pushedAt":"2024-03-17T22:14:59.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Add files via upload\n\nsvm model.pkl refers to the file containing a serialized Support Vector Machine (SVM) model that has been saved using the pickle module in Python. Similar to the logistic regression example, this file would contain all the necessary information about the trained SVM model, such as support vectors, coefficients, kernel parameters, etc.\r\n\r\nYou can load this file in Python using the pickle.load() function to access the trained SVM model and use it for making predictions on new data.","shortMessageHtmlLink":"Add files via upload"}},{"before":"ffa24bf07d9133670d3d1f41f7d55d03fae3cfb5","after":"39c92d534e6f51a9037df6275def21fde429fd7c","ref":"refs/heads/main","pushedAt":"2024-03-17T22:13:54.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Add files via upload\n\nLogistic regression model.pkl\" refers to the file containing a serialized logistic regression model that has been saved using the pickle module in Python. This file would contain all the necessary information about the trained logistic regression model, such as the model parameters, coefficients, and other attributes needed to make predictions on new data.\r\n\r\nYou can load this file in Python using the pickle.load() function to access the trained model and use it for making predictions on new data.","shortMessageHtmlLink":"Add files via upload"}},{"before":"fcfbc34d106919b07826e3bb50101d25dc5d0b25","after":"ffa24bf07d9133670d3d1f41f7d55d03fae3cfb5","ref":"refs/heads/main","pushedAt":"2024-03-17T21:47:04.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Create sentiment_analysis_dataset.txt\n\nDataset Description:\r\n\r\nThe dataset consists of Amazon product reviews collected from various categories. Each review is stored as a separate text file in a .txt format. The reviews cover a wide range of products, including electronics, books, clothing, and more. The text files contain user-generated reviews along with ratings and additional metadata.\r\n\r\nDataset Features:\r\n\r\nText Content: The main body of the review written by the user.\r\nRating: The numerical rating provided by the user for the product.\r\nProduct Category: The category or type of product being reviewed.\r\nPurpose:\r\nThe dataset is intended for sentiment analysis tasks, aiming to extract insights from customer feedback and understand the sentiment expressed in the reviews. It serves as a valuable resource for training machine learning models to classify reviews into positive, negative, or neutral sentiments.\r\n\r\nData Source:\r\nThe dataset is publicly available on GitHub and can be accessed at GitHub Repository Link.\r\n\r\nNote: Due to its open nature, the dataset may contain user-generated content, and discretion is advised when processing the reviews.","shortMessageHtmlLink":"Create sentiment_analysis_dataset.txt"}},{"before":"5b0970bb40b2935eb378c344d1c1456cc35e3063","after":"fcfbc34d106919b07826e3bb50101d25dc5d0b25","ref":"refs/heads/main","pushedAt":"2024-03-17T21:42:37.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Create Dash_app.py\n\nThis code defines a basic Dash app for sentiment analysis of Amazon product reviews. It includes a text area where users can input their reviews, a button to trigger the analysis, and an output area to display the sentiment score and category. The sentiment analysis is performed using the AFINN lexicon.\r\n\r\nTo run this app, save it in a Python file (e.g., app.py) and execute the file using Python. You can then access the app in your web browser at the URL provided by Dash (usually http://127.0.0.1:8050/ by default).","shortMessageHtmlLink":"Create Dash_app.py"}},{"before":"3ca4b2a93d08ee6f9018b4dfa4eb51f241eba467","after":"5b0970bb40b2935eb378c344d1c1456cc35e3063","ref":"refs/heads/main","pushedAt":"2024-03-17T21:24:42.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Add files via upload\n\n\"Our sentiment analysis app on Jupyter Notebook is your go-to solution for analyzing sentiment in Amazon product reviews. With cutting-edge NLP techniques, it delivers invaluable insights to both businesses and consumers, guiding informed decisions.\r\n\r\nKey Features:\r\n\r\nSeamless Deployment: Utilizing Jupyter Notebook, our app ensures a user-friendly experience.\r\nAmazon Review Integration: Analyze reviews in real-time for instant customer sentiment evaluation.\r\nAdvanced Algorithms: Employing state-of-the-art techniques like sentiment polarity analysis.\r\nInteractive Visuals: Dive deep into sentiment patterns with intuitive histograms and word clouds.\r\nCustomizable Analysis: Tailor analysis parameters to meet specific needs.\r\nExportable Reports: Export analysis in various formats for further examination.\r\nScalability and Performance: Efficiently analyze vast volumes of reviews with minimal latency.","shortMessageHtmlLink":"Add files via upload"}},{"before":"8e0ff5bc0e3dceada4fcdfb3efcb2cf79176fa90","after":"3ca4b2a93d08ee6f9018b4dfa4eb51f241eba467","ref":"refs/heads/main","pushedAt":"2024-03-17T21:24:05.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Delete Sentiment_Analysis_App_Deployment.ipynb","shortMessageHtmlLink":"Delete Sentiment_Analysis_App_Deployment.ipynb"}},{"before":"131b1d94366af434d6fecae45e52f18966c6b647","after":"8e0ff5bc0e3dceada4fcdfb3efcb2cf79176fa90","ref":"refs/heads/main","pushedAt":"2024-03-17T21:21:42.000Z","pushType":"push","commitsCount":1,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Add files via upload\n\nOur sentiment analysis app on Jupyter Notebook is your go-to solution for analyzing sentiment in Amazon product reviews. With cutting-edge NLP techniques, it delivers invaluable insights to both businesses and consumers, guiding informed decisions.\r\n\r\nKey Features:\r\n\r\nSeamless Deployment: Utilizing Jupyter Notebook, our app ensures a user-friendly experience.\r\nAmazon Review Integration: Analyze reviews in real-time for instant customer sentiment evaluation.\r\nAdvanced Algorithms: Employing state-of-the-art techniques like sentiment polarity analysis.\r\nInteractive Visuals: Dive deep into sentiment patterns with intuitive histograms and word clouds.\r\nCustomizable Analysis: Tailor analysis parameters to meet specific needs.\r\nExportable Reports: Export analysis in various formats for further examination.\r\nScalability and Performance: Efficiently analyze vast volumes of reviews with minimal latency.","shortMessageHtmlLink":"Add files via upload"}},{"before":null,"after":"131b1d94366af434d6fecae45e52f18966c6b647","ref":"refs/heads/main","pushedAt":"2024-03-17T21:17:35.000Z","pushType":"branch_creation","commitsCount":0,"pusher":{"login":"Greatwoman23","name":"Oluwakemi Helen Deniran","path":"/Greatwoman23","primaryAvatarUrl":"https://avatars.githubusercontent.com/u/130939299?s=80&v=4"},"commit":{"message":"Initial commit","shortMessageHtmlLink":"Initial commit"}}],"hasNextPage":false,"hasPreviousPage":false,"activityType":"all","actor":null,"timePeriod":"all","sort":"DESC","perPage":30,"cursor":"djE6ks8AAAAEGQFt7gA","startCursor":null,"endCursor":null}},"title":"Activity · Greatwoman23/Sentiment-Analysis-on-Amazon-Products-Review"}