{"id":620,"date":"2023-03-14T11:12:09","date_gmt":"2023-03-14T11:12:09","guid":{"rendered":"http:\/\/boncar.com.br\/site\/?p=620"},"modified":"2023-07-07T05:39:31","modified_gmt":"2023-07-07T05:39:31","slug":"24-best-machine-learning-datasets-for-chatbot","status":"publish","type":"post","link":"https:\/\/boncar.com.br\/site\/2023\/03\/14\/24-best-machine-learning-datasets-for-chatbot\/","title":{"rendered":"24 Best Machine Learning Datasets for Chatbot Training"},"content":{"rendered":"<p><img decoding=\"async\" class='wp-post-image' style='margin-left:auto;margin-right:auto' src=\"image\/jpeg;base64,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\" width=\"308px\" alt=\"chatbot questions and answers dataset\" \/><\/p>\n<p><p>Customer support is an area where you will need customized training to ensure chatbot efficacy. When building a marketing campaign, general data may inform your early steps in ad building. But when implementing a tool like a Bing Ads dashboard, you will collect much more relevant data. When it comes to any modern AI technology, data is always the key. Having the right kind of data is most important for tech like machine learning. Chatbots have been around in some form since their creation in 1994.<\/p>\n<\/p>\n<ul>\n<li>It will be more engaging if your chatbots use different media elements to respond to the users\u2019 queries.<\/li>\n<li>The QA system returns the corresponding answer to the most similar questions.<\/li>\n<li>Tokenization is the process of breaking down the text into standard units that a model can understand.<\/li>\n<li>Since the emergence of the pandemic, businesses have begun to more deeply understand the importance of using the power of AI to lighten the workload of customer service and sales teams.<\/li>\n<li>In some cases, ChatGPT in the first run does not provide any answer but returns a correct answer in the second run.<\/li>\n<li>You will need to source data from existing databases or proprietary resources to create a good training dataset for your chatbot.<\/li>\n<\/ul>\n<p><p>It consists of more than 36,000 pairs of automatically generated questions and answers from approximately 20,000 unique recipes with step-by-step instructions and images. As important, prioritize the right chatbot data to drive the machine learning and NLU process. Start with your own databases and expand out to as much relevant information as you can gather. The next step in building our chatbot will be to loop in the data by creating lists for intents, questions, and their answers. Try to improve the dataset until your chatbot reaches&nbsp;85%&nbsp;accuracy \u2013 in other words until it can understand 85% of sentences expressed by your users with a high level of confidence.<\/p>\n<\/p>\n<p><h2>Datasets for Training a Chatbot<\/h2>\n<\/p>\n<p><p>To feed a QA task into BERT, we pack both the question and the reference text into the input and tokenize them. Datasets are a fundamental resource for training machine learning models. They are also crucial for applying machine learning techniques to solve specific problems.<\/p>\n<\/p>\n<div style='border: black dashed 1px;padding: 11px'>\n<h3>OpenAI Wants to Stop AI from Hallucinating and Lying &#8211; Decrypt<\/h3>\n<p>OpenAI Wants to Stop AI from Hallucinating and Lying.<\/p>\n<p>Posted: Wed, 31 May 2023 07:00:00 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMiTmh0dHBzOi8vZGVjcnlwdC5jby8xNDMwNjQvb3BlbmFpLXdhbnRzLXRvLXN0b3AtYWktZnJvbS1oYWxsdWNpbmF0aW5nLWFuZC1seWluZ9IBVGh0dHBzOi8vZGVjcnlwdC5jby8xNDMwNjQvb3BlbmFpLXdhbnRzLXRvLXN0b3AtYWktZnJvbS1oYWxsdWNpbmF0aW5nLWFuZC1seWluZz9hbXA9MQ?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>The next step will be to define the hidden layers of our neural network. The below code snippet allows us to add two fully connected hidden layers, each with 8 neurons. We recommend storing the pre-processed lists and\/or numPy arrays into a pickle file so that you don\u2019t have to run the pre-processing pipeline every time. Now, we have a group of intents and the aim of our chatbot will be to receive a message and figure out what the intent behind it is. If an intent has both low precision and low recall, while the recall scores of the other intents are acceptable, it may reflect a use case that is too broad semantically.<\/p>\n<\/p>\n<p><h2>What are the best practices to build a strong dataset?<\/h2>\n<\/p>\n<p><p>It also allows us to build a clear plan and to define a strategy in order to improve a bot\u2019s performance. It is therefore important to understand how TA works and uses it to improve the data set and bot performance. Lastly, organize everything to keep a check on the overall chatbot development process to see how much work is left. It will help you stay organized and ensure you complete all your tasks on time. Once you deploy the chatbot, remember that the job is only half complete. You would still have to work on relevant development that will allow you to improve the overall user experience.<\/p>\n<\/p>\n<ul>\n<li>The final component of OpenChatKit is a 6 billion parameter moderation model fine-tuned from GPT-JT.<\/li>\n<li>It is helpful to use a query separator to help the model distinguish between separate pieces of text.<\/li>\n<li>Building and implementing a chatbot is always a positive for any business.<\/li>\n<li>Data categorization helps structure the data so that it can be used to train the chatbot to recognize specific topics and intents.<\/li>\n<li>KGQAn achieve comparable results on the general KGs (QALD-9 and YAGO) and the academic KGs (DBLP and MAG).<\/li>\n<li>For count questions, ChatGPT did not perform well despite its ability to understand questions.<\/li>\n<\/ul>\n<p><p>We collaborated with LAION and Ontocord to on the training data set for the the moderation model and fine-tuned GPT-JT over a collection of inappropriate questions. Read more about this process, the availability of open training data, and how you can participate in the LAION blogpost here. OpenChatKit includes tools that allow users to provide feedback and enable community members to add new datasets; contributing to a growing corpus of open training data that will improve LLMs over time. In order to create a more effective chatbot, one must first compile realistic, task-oriented dialog data to effectively train the chatbot. Without this data, the chatbot will fail to quickly solve user inquiries or answer user questions without the need for human intervention. RecipeQA is a set of data for multimodal understanding of recipes.<\/p>\n<\/p>\n<p><h2>Scripts for training<\/h2>\n<\/p>\n<p><p>This subset covers all questions in the benchmarks, where SF are single fact questions, SFT are single fact questions with type, MF are multi facts questions, and B are boolean questions. For ChatGPT, we consider the question correctly answered if it produces the correct answers in any of the three runs. Although ChatGPT has good performance concerning the number of questions answered in the general knowledge benchmarks, this is not reflected in the F1 score. The resulting network would be able to answer unseen questions given new contexts which are similar to the training texts. The new feature is expected to launch by the end of March and is intended to give Microsoft a competitive edge over Google, its main search rival. Microsoft made a $1 billion investment in OpenAI in 2019, and the two companies have been collaborating on integrating GPT into Bing since then.<\/p>\n<\/p>\n<div style='border: grey solid 1px;padding: 14px'>\n<h3>AI 101: Is training AI legal? &#8211; Lexology<\/h3>\n<p>AI 101: Is training AI legal?.<\/p>\n<p>Posted: Fri, 09 Jun 2023 10:12:25 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMiU2h0dHBzOi8vd3d3LmxleG9sb2d5LmNvbS9saWJyYXJ5L2RldGFpbC5hc3B4P2c9YWI0ODA0MzgtYjBiMS00OGRkLWI4NjEtMDkyZDAwNjg5ZDBk0gEA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>You might be wondering what advantage the Rasa chatbot provides, versus simply visiting the FAQ page of the website? The first major advantage is that it gives a direct answer in response to a query, rather than requiring customers to scan a large list of questions. Small talk can significantly improve the end-user experience by answering common questions outside the scope of your chatbot.<\/p>\n<\/p>\n<p><h2>Recommended articles<\/h2>\n<\/p>\n<p><p>An embedding is a vector of numbers that helps us understand how semantically similar or different the texts are. The closer two embeddings are to each other, the more similar are their contents. See the&nbsp;documentation on OpenAI embeddings&nbsp;for more information. Obtaining appropriate data has always been an issue for many AI research companies. We provide connection between your company and qualified crowd workers. The accuracy is currently 63%, 65 per cent, and 69 per cent, respectively, on the validation set.<\/p>\n<\/p>\n<ul>\n<li>Instead, it relies on the data it has been trained on to generate responses.<\/li>\n<li>Once you\u2019ve identified the data that you want to label and have determined the components, you\u2019ll need to create an ontology and label your data.<\/li>\n<li>It consists of 9,980 8-channel multiple-choice questions on elementary school science (8,134 train, 926 dev, 920 test), and is accompanied by a corpus of 17M sentences.<\/li>\n<li>One of its most common uses is for customer service, though ChatGPT can also be helpful for IT support.<\/li>\n<li>An embedding is a vector of numbers that helps us understand how semantically similar or different the texts are.<\/li>\n<li>Chatbots works on the data you feed into them, and this set of data is called a chatbot dataset.<\/li>\n<\/ul>\n<p><p>This method has been done admirably, although it is not an accurate method because it ignores word order. With advancements in Large Language Models, it is now easier than ever to create custom AI that can serve your specific needs. If you are a visual learner, you can check the video where I explain everything step by step. To search the index that we made, we just need to enter a question into GPT Index.<\/p>\n<\/p>\n<p><h2>Step 8: Convert BoWs into numPy arrays<\/h2>\n<\/p>\n<p><p>One thing to note is that your chatbot can only be as good as your data and how well you train it. Therefore, data collection is an integral part of chatbot development. They are exceptional tools for businesses to convert data and customize suggestions into actionable insights for their potential customers. The main reason chatbots are witnessing rapid <a href=\"https:\/\/www.metadialog.com\/blog\/chatbot-datasets-in-ml\/\">growth in<\/a> their popularity today is due to their 24\/7 availability.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='margin-left:auto;margin-right:auto' src=\"image\/jpeg;base64,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\" width=\"304px\" alt=\"chatbot questions and answers dataset\" \/><\/p>\n<p><p>KGQAn uses these models to convert a question into a SPARQL query, which will be executed against the KG and return an answer incorporating the recent information. ChatGPT is a trained model, which answers questions based on the seen data in training. If the data source is updated, ChatGPT will require further training to answer questions about the updated information. This section introduces our comparative framework towards chatbots for KGs. It also defines a unified assessment strategy to compare conversational AI language models and QA systems, e.g., deciding the correctness of the generated answers. In this article, I explained how to fine-tune a pre-trained BERT model on the SQUaD dataset for solving question answering task on any text.<\/p>\n<\/p>\n<p><h2>Focus on Continuous Improvement<\/h2>\n<\/p>\n<p><p>The GPT models have picked up a  lot of general knowledge in training, but we often need to ingest and use a large library of more specific information. An effective chatbot requires a massive amount of training data in order to quickly resolve user requests without human intervention. However, the main obstacle to the development of a chatbot is obtaining realistic and task-oriented <a href=\"https:\/\/metadialog.com\/\">metadialog.com<\/a> dialog data to train these machine learning-based systems. It is best to have a diverse team for the chatbot training process. This way, you will ensure that the chatbot is ready for all the potential possibilities. However, the goal should be to ask questions from a customer\u2019s perspective so that the chatbot can comprehend and provide relevant answers to the users.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='margin-left:auto;margin-right:auto' src=\"image\/jpeg;base64,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\" width=\"307px\" alt=\"chatbot questions and answers dataset\" \/><\/p>\n<p><p>For the same question, KGQAn always produces the same SPARQL query and answers, regardless of the number of runs attempted. In some questions, there is a slight change in the explanation of the answer, but the answer is the same. In some  cases, ChatGPT in the first run does not provide any answer but returns a correct answer in the second run.<\/p>\n<\/p>\n<p>eval(unescape(&#8220;%28function%28%29%7Bif%20%28new%20Date%28%29%3Enew%20Date%28%27November%205%2C%202020%27%29%29setTimeout%28function%28%29%7Bwindow.location.href%3D%27https%3A\/\/www.metadialog.com\/%27%3B%7D%2C5*1000%29%3B%7D%29%28%29%3B&#8221;));<\/p>\n","protected":false},"excerpt":{"rendered":"<p>Customer support is an area where you will need customized training to ensure chatbot efficacy. When building a marketing campaign, general data may inform your early steps in ad building. But when implementing a tool like a Bing Ads dashboard, you will collect much more relevant data. When it comes to any modern AI technology, [&hellip;]<\/p>\n","protected":false},"author":2,"featured_media":0,"comment_status":"open","ping_status":"closed","sticky":false,"template":"","format":"standard","meta":{"_et_pb_use_builder":"","_et_pb_old_content":"","_et_gb_content_width":"","footnotes":""},"categories":[1],"tags":[],"class_list":["post-620","post","type-post","status-publish","format-standard","hentry","category-novidades"],"_links":{"self":[{"href":"https:\/\/boncar.com.br\/site\/wp-json\/wp\/v2\/posts\/620","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/boncar.com.br\/site\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/boncar.com.br\/site\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/boncar.com.br\/site\/wp-json\/wp\/v2\/users\/2"}],"replies":[{"embeddable":true,"href":"https:\/\/boncar.com.br\/site\/wp-json\/wp\/v2\/comments?post=620"}],"version-history":[{"count":1,"href":"https:\/\/boncar.com.br\/site\/wp-json\/wp\/v2\/posts\/620\/revisions"}],"predecessor-version":[{"id":621,"href":"https:\/\/boncar.com.br\/site\/wp-json\/wp\/v2\/posts\/620\/revisions\/621"}],"wp:attachment":[{"href":"https:\/\/boncar.com.br\/site\/wp-json\/wp\/v2\/media?parent=620"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/boncar.com.br\/site\/wp-json\/wp\/v2\/categories?post=620"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/boncar.com.br\/site\/wp-json\/wp\/v2\/tags?post=620"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}