[[["เข้าใจง่าย","easyToUnderstand","thumb-up"],["แก้ปัญหาของฉันได้","solvedMyProblem","thumb-up"],["อื่นๆ","otherUp","thumb-up"]],[["ไม่มีข้อมูลที่ฉันต้องการ","missingTheInformationINeed","thumb-down"],["ซับซ้อนเกินไป/มีหลายขั้นตอนมากเกินไป","tooComplicatedTooManySteps","thumb-down"],["ล้าสมัย","outOfDate","thumb-down"],["ปัญหาเกี่ยวกับการแปล","translationIssue","thumb-down"],["ตัวอย่าง/ปัญหาเกี่ยวกับโค้ด","samplesCodeIssue","thumb-down"],["อื่นๆ","otherDown","thumb-down"]],["อัปเดตล่าสุด 2025-07-27 UTC"],[[["\u003cp\u003eThis module focuses on converting logistic regression models into binary classification models for predicting categories instead of probabilities.\u003c/p\u003e\n"],["\u003cp\u003eYou'll learn how to determine the optimal threshold for classification, calculate and select appropriate evaluation metrics, and interpret ROC and AUC.\u003c/p\u003e\n"],["\u003cp\u003eThe module covers binary and provides an introduction to multi-class classification, building upon prior knowledge of machine learning, linear regression, and logistic regression.\u003c/p\u003e\n"],["\u003cp\u003eThe content explores methods for evaluating the quality of classification model predictions and applying them to real-world scenarios.\u003c/p\u003e\n"]]],[],null,["# Classification\n\n| **Estimated module length:** 70 minutes\n| **Learning objectives**\n|\n| - Determine an appropriate threshold for a binary classification model.\n| - Calculate and choose appropriate metrics to evaluate a binary classification model.\n| - Interpret ROC and AUC.\n| **Prerequisites:**\n|\n| This module assumes you are familiar with the concepts covered in the\n| following modules:\n|\n| - [Introduction to Machine Learning](/machine-learning/intro-to-ml)\n| - [Linear regression](/machine-learning/crash-course/linear-regression)\n| - [Logistic regression](/machine-learning/crash-course/logistic-regression)\n\nIn the [Logistic regression module](/machine-learning/crash-course/logistic-regression),\nyou learned how to use the [**sigmoid function**](/machine-learning/glossary#sigmoid-function)\nto convert raw model output to a value between 0 and 1 to make probabilistic\npredictions---for example, predicting that a given email has a 75% chance of\nbeing spam. But what if your goal is not to output probability but a\ncategory---for example, predicting whether a given email is \"spam\" or \"not spam\"?\n\n[**Classification**](/machine-learning/glossary#classification-model) is\nthe task of predicting which of a set of [**classes**](/machine-learning/glossary#class)\n(categories) an example belongs to. In this module, you'll learn how to convert\na logistic regression model that predicts a probability into a\n[**binary classification**](/machine-learning/glossary#binary-classification)\nmodel that predicts one of two classes. You'll also learn how to\nchoose and calculate appropriate metrics to evaluate the quality of a\nclassification model's predictions. Finally, you'll get a brief introduction to\n[**multi-class classification**](/machine-learning/glossary#multi-class)\nproblems, which are discussed in more depth later in the course.\n| **Key terms:**\n|\n| - [Binary classification](/machine-learning/glossary#binary-classification)\n| - [Class](/machine-learning/glossary#class)\n| - [Classification](/machine-learning/glossary#classification-model)\n| - [Multi-class classification](/machine-learning/glossary#multi-class)\n- [Sigmoid function](/machine-learning/glossary#sigmoid-function) \n[Help Center](https://support.google.com/machinelearningeducation)"]]