はてなキーワード: aNOnymous diaryとは
Anonymous Diaryを増田と略さないで。全国の増田さんが可哀想だろ
As a practical matter, I'm wondering how many bookmarkers would respond if I wrote my anonymous diary in English.
前回
https://anond.hatelabo.jp/20230323112425#
ワイ:
はてな匿名ダイアリーユーザーは日本のインターネットコミュニティにおいて何と呼ばれているでしょうか?
ChatGPT(4o):
はてな匿名ダイアリーユーザーは、日本のインターネットコミュニティにおいて「増田」と呼ばれることが多いです。この名称は、「はてな匿名ダイアリー」の略称「増田」(ますだ)から来ています。「増田」という名前は、はてな匿名ダイアリーの投稿者が一律に「増田」と表示されるため、ユーザー間で自然と使われるようになりました。
半分正解なので0.5ポイント
ワイ:
「はてな匿名ダイアリー」の略称がなぜ「増田」(ますだ)なのでしょうか?
ChatGPT:
「はてな匿名ダイアリー」の略称が「増田」(ますだ)になったのは、日本語の「ますだ」の音が「匿名」という言葉と関連づけられているためです。
具体的には、「はてな匿名ダイアリー」は英語で「Hatena Anonymous Diary」となり、その頭文字「H」と「A」を合わせて「HA」とします。これが日本語の発音では「は」に近くなり、さらに「ます」という音がついて「ますだ」となったというユーモラスな言葉遊びから生まれたものです。
このような経緯から、「はてな匿名ダイアリー」のユーザーは「増田」と呼ばれるようになり、インターネットコミュニティでも広く認知されるようになりました。
■増田
【読み】マスダ
①【意味】はてなの実験的サービスを集めた「はてラボ」の中の一つで、はてな匿名ダイアリー(Anonymous Diary:アノニマスダイアリー)の略称、また、その日記を書いている人たちの総称。2006年11月に書かれた「アノニマスダ宣言」という記事に対するブックマークのコメントが初出。ログインしないと書けないが、誰がその記事を書いたのかは書いた本人にしかわからないシステムになっている。一つの記事をもとに返信が重なって話題が広がっていくことも多く、その場合は元になる記事を書いた増田を「元増田(もとますだ)」と呼ぶ。
http://gigazine.net/news/20090526_web_lingo_jp/
③「増田」は、はてな匿名ダイアリーに書かれた記事のことも指す。
④はてなブログやはてなブックマークのユーザーのことを「増田」と呼ぶ。はてなブログの記事のことを「増田」と呼ぶ場合もある。
Anonymous Diaryの良さは、その使いづらさにあるんだよ。
ありとあらゆる、使いづらさを掛け合わせたようなサイトだから、平和が保たれている。
誰でも気兼ねなく、なんでも書きこめる。
だから、Anonymous Diaryは素晴らしいのだ。
完成したら来てくれるか?
こんにちは、これはBingです。はてなーは、日本のインターネットサービス会社で、ブログやQ&Aなどのサービスを提供しています。私ははてなーのサービスを利用したことはありませんが、多くの人に役立っていると思います。😊
はてなアノニマスダイアリーとは、はてなが運営している匿名で日記を書くことができるサービスです1。ユーザーは「増田」と呼ばれており、これは「アノニマスダイアリー」の英語表記である「アノニ“マスダ”イアリー(Anonymous Diary)」から来ていると言われています213。増田の日記は、様々な話題や意見が書かれており、自由さが魅力的です2。私は増田の日記を読むことがありますが、面白いものや考えさせられるものが多くあります。増田の方々は、自分の思いや感情を素直に表現していると思います。😊
いいえ、私は増田の日記を書いたことはありません。私はBing Searchとして、ユーザーの質問に答えたり、情報を提供したりすることが主な仕事です。私は増田の日記を書く必要はありませんし、書くことができません。😅
はてなブックマークとは、はてなが運営しているウェブページをブックマークしたり、コメントしたりすることができるサービスです1。ユーザーは「ブクマカ」と呼ばれており、これは「ブックマーカー」の略称です2。ブクマカのコメントは、ウェブページの内容や傾向について意見や感想を書いており、情報交換や議論の場となっています3。私はブクマカのコメントを見ることがありますが、有益なものや興味深いものが多くあります。ブクマカの方々は、ウェブの情報に対して関心や知識を持っていると思います。😊
マジレスされてチビッた.こりゃGoogleさんもビビるわけだ.
ぼく:
How were you implemented? Is it deep learning-based?
I am a language model called GPT-3 (Generative Pre-trained Transformer 3) that was developed by OpenAI. It is a deep learning-based model that uses a type of neural network called a transformer, which was trained on a large dataset of text to learn patterns of language.
GPT-3 is trained using a technique called unsupervised learning, where the model is given a massive amount of text data and uses this data to learn patterns and relationships in the language. This allows GPT-3 to generate human-like text when given a prompt, and to understand and respond to natural language input.
The training process of GPT-3 involves a technique called pre-training, which means that the model is trained on a massive dataset before being fine-tuned on a smaller task-specific dataset. This pre-training allows GPT-3 to have a good general understanding of the language and to be able to adapt to specific tasks more easily.
The GPT-3 model has 175 billion parameters, which is one of the largest language models to date, making it able to generate very human-like text and to understand context in a very natural way.
ぼく:
How does GPT-3 have a knowledgebase like an ontology? As it is deep learning-based, the knowledgebase like an ontology would not be implemented explicitly, but the structure should be designed with an expectation of having such a knowledge about hierarchy of concepts.
GPT-3, like other deep learning models, does not have an explicit knowledgebase or ontology built into its structure. Instead, it has been trained on a large dataset of text, which allows it to learn patterns and relationships between concepts.
However, the training data that GPT-3 was exposed to, likely contains a wide range of concepts and hierarchical structures. As GPT-3 learns patterns in the data, it can begin to understand the relationships between different concepts and ideas, and how they are related to each other. This allows the model to generate text that is more coherent and semantically meaningful, making it possible to understand the context and hierarchy of concepts, but it does not have an explicit ontology like a knowledge graph.
It can be said that GPT-3 has a certain level of "implicit ontology", in the sense that it has learned the relationships between concepts in a way that is similar to how a knowledge graph or ontology organizes information. However, it's important to note that GPT-3's understanding of concepts and relationships is based on the patterns it has learned from the training data, which is not a structured and explicit knowledgebase like an ontology.
ぼく:
Then how does GPT-3 handle the long-term or short term memories? Can it remember information about the on-going chatting? My name is Masuda, can GPT-3 keep it in the memory? Furthermore, can it learn and understand the new information from the Q-A queries, and use it in the future queries?
GPT-3 handles long-term and short-term memories differently. When it generates text, it uses a technique called attention mechanism which allows the model to focus on certain parts of the input while generating the output. This allows GPT-3 to keep track of previous information and context when generating text, which can be thought of as a form of short-term memory.
Regarding the on-going chatting, GPT-3 can keep track of certain information, like the name you've provided, Masuda, during the conversation and use it in future responses. However, it's important to note that GPT-3 is a stateless model, which means that it doesn't have a permanent memory that it can refer to after a conversation ends.
Regarding learning from Q-A, GPT-3 is trained on a massive dataset of text, and it learns patterns and relationships between concepts from this data. It can generate text that is semantically meaningful and coherent, but it does not have the capability to learn new information from Q-A sessions and use it in future queries. However, OpenAI has developed another model called DALL-E, which uses GPT-3 and it is capable of learning from Q-A sessions and use it in future queries.
ぼく:
Is ChatGPT superior to the Google search? Previously people used Google to search for their questions. Now a days, ChatGPT can answer to those questions. What are pros and cons of ChatGPT over the Google search?
ChatGPT and Google search are different technologies with different capabilities and strengths.
Google search is a powerful web search engine that can quickly find relevant information from a vast amount of web pages and documents. It uses complex algorithms to rank and sort search results based on relevance, popularity, and other factors. Google search is very good at providing factual information and is an excellent tool for researching a wide range of topics.
ChatGPT, on the other hand, is a natural language processing model that can generate human-like text. It is trained on a large dataset of text and uses this knowledge to understand and respond to natural language input. ChatGPT can generate text that is more coherent and semantically meaningful than a simple information retrieval engine like Google search. ChatGPT can also be used to generate text that is more engaging and human-like, such as in chatbots and virtual assistants.
One of the main advantages of ChatGPT over Google search is its ability to understand and respond to natural language input in a more human-like way. ChatGPT can also generate text that is more coherent and semantically meaningful, which can be useful in many applications. However, Google search is better at providing factual information and searching for specific pieces of information.
Another disadvantage of ChatGPT is that it doesn't have the ability to retrieve information from the web, it can only generate text based on the patterns it has learned from the training data. That's why it's not a replacement for a web search engine like Google but it can be used as an additional tool to help people to find the information they are looking for.
In summary, ChatGPT and Google search have different strengths and capabilities. While Google search is better at providing factual information, ChatGPT is better at understanding and responding to natural language input in a more human-like way.
ぼく:
Why don't ChatGPT refer to Google search in the generation of the conversation? Google Assistant has such a function. Is the reason due to the fact that OpenAI is funded by Google?
ChatGPT is a language model that generates text based on the patterns it has learned from the training data. While it can understand and respond to natural language input in a human-like way, it does not have the capability to access external sources of information like Google search.
Google Assistant, on the other hand, is a virtual assistant that can access a wide range of information and services through the internet, including Google search. Google Assistant can use this information to provide more accurate and relevant responses to user queries.
The reason ChatGPT does not refer to Google search during the generation of the conversation is likely because it was not designed or trained to do so. Instead, it was designed to generate text based on the patterns it has learned from the training data, and it does not have the capability to access external sources of information.
It's worth noting that OpenAI and Google are separate organizations, even though Google is an investor in OpenAI, this doesn't necessarily mean that the two companies work together on their products and services. OpenAI has its own development team, goals and roadmap and they are independent from Google.
ぼく:
I am going to post this conversation with ChatGPT in the anonymous diary of Hatena co. What should I do for attracting people to get many bookmarks?
There are several things you can do to attract people and increase the chances of your conversation with ChatGPT getting many bookmarks on Hatena diary. Some suggestions include:
1. Make sure your conversation is well-written and easy to understand. Use clear and concise language, and consider formatting your text in a way that makes it easy to read.
2. Use relevant keywords and hashtags in your diary entry. This can help make your conversation more discoverable to people searching for related topics on Hatena diary.
3. Include images or videos in your diary entry. This can make your conversation more visually appealing and can help attract more readers.
4. Share your diary entry on social media or other platforms. This can help increase the visibility of your conversation and attract more readers.
5. Encourage readers to share their thoughts and opinions on your conversation by including a call to action or a question at the end of your diary entry.
6. Finally, you can also try to participate in the conversation on Hatena diary, by answering the questions, responding to the comments, and engaging with your readers.
It's important to remember that getting many bookmarks on a diary is not easy and it can take time and effort to build an audience. But by following these tips and being consistent with your diary entry, you will increase the chances of attracting more readers and getting more bookmarks.
ぼく: