★ 4.7 (4,920)
⏱ 56分
📚 4レッスン
🎧 音声版
このコースについて
Artificial intelligence and modern data science rely on fundamental mathematical models to make decisions and predictions. Understanding these building blocks is the first step toward mastering complex neural networks and deep learning architectures. This course guides you through the transition from basic data analysis to predictive modeling, focusing on the essential logic and code required to build classification systems from the ground up.
You will transform your understanding of data into the ability to create predictive models that can classify information and predict outcomes. By focusing on the mechanics of how models learn, you will move beyond simply using tools to truly understanding the algorithms that power them.
What you'll learn:
- Understand the mathematical theory behind the sigmoid function and cross-entropy loss
- Implement logistic regression from scratch using Python and modern numerical libraries
- Apply gradient descent to optimize model parameters for maximum prediction accuracy
- Evaluate model performance using modern metrics like precision, recall, and F1-scores
- Predict binary outcomes such as user behavior or classification tasks using real-world data patterns
- Practice clean coding standards including type hints and modular script structures
- Map the relationship between logistic regression and the foundational layers of neural networks
The course begins with essential terminology and the statistical theory of classification before moving into practical Python implementation. You will explore the relationship between linear models and deep learning through written explanations, mathematical derivations, and structured code exercises.
This course is designed for beginners with basic Python knowledge who want to understand the inner workings of machine learning models. No prior experience with data science or advanced statistics is required.
Start building your machine learning expertise by mastering the core mechanics of logistic regression today.
得られるもの
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📜
修了証
LinkedInプロフィールに追加
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🎧
音声版付き
画面なしでもどこでも学べる
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♾️
無期限アクセス
いつでも再開可能、有効期限なし
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📱
スマホでもPCでも
どこでもどんな端末でも
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💸
30日返金保証
理由を聞きません
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⚡
短く要点だけ
56分の実践的な内容
レビュー (6)
Fantastic course. The examples used were spot on and really helped solidify the concepts. My understanding has improved dramatically.
Hmm, not sure about this one. The examples didn't always connect well with the theory. Felt a bit disjointed tbh.
This course exceeded my expectations! The examples were spot-on and really helped solidify the learning. Definitely worth the time.
良い入門でした。明確なステップは評価できますが、後半のモジュールはもう少し例があっても良かったかもしれません。
It's a decent introduction. Could benefit from more diverse examples and a slightly better flow between modules.
A good introduction. The structure was mostly clear, but I wish there were a few more real-world examples. Still, learned a lot.
よくある質問
このコースを受けるには何が必要ですか?
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インターネットに接続したスマホかパソコンだけ。インストールも特別な機材も不要です。
支払い方法は?
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Stripe経由のカード、または暗号通貨。カード情報は当社では保存せず、Stripeが安全に取り扱います。
返金できますか?
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はい — 30日以内なら理由を問わず全額返金。
いつまでアクセスできますか?
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ずっと。購入後はあなたのもの。いつでも見返せます。
修了証はもらえますか?
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はい。修了するとLinkedInプロフィールに追加できる修了証を受け取れます。
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