Last time we talked about the significance and value of user behavior data. Why do we need to do user behavior analysis? ”, and the construction of user models for Internet products, which includes two major parts: data collection and analysis. This article will discuss the three key points of data collection , how to make analysis more valuable and efficient, and data analysis thinking. 1. Three key points of data collection1. Comprehensiveness The amount of data is sufficient to have analytical value, and the data surface is sufficient to support the analysis needs. For example, for the behavior of "viewing product details", it is necessary to collect the environmental information, session, and user ID behind the user trigger. Finally, it is necessary to count the number of people, number of times, average number of times per person, and active ratio who trigger this behavior in a certain period of time. 2. Multidimensionality What is more important is that data can meet the analysis needs. Flexibly and quickly customize multiple attributes and different types of data to meet different analysis goals. For example, for the action of "view product details", we can know what product the user is viewing, as well as multiple attributes such as price, type, product ID, etc. through tracking. This will help you understand which products users have viewed, what types of products are viewed most, and how many times a particular product has been viewed. It’s not just about knowing that the user has entered the product details page. 3. Efficiency Efficiency includes the efficiency of technical execution, the efficiency of collaboration among team members, and the efficiency of achieving data analysis needs and goals. Based on the above three points, let’s see how to make data collection more accurate, analysis more useful, and the team more efficient. 2. Data Analysis Value and EfficiencyStep 1: Clarify data-driven goals Data collection should avoid being too large and comprehensive. Data analysis needs also evolve with the continuous iteration of products. It is important to clarify the analysis needs for the long term and the current stage to make the analysis more purposeful and the technical execution more efficient. Example scenario: Xiao Ge is the company's product manager , and Xiao Zhu is a technical person. Recently, both of them have realized the importance of data in product operations and decision-making. After researching several data platforms, they finally chose Zhuge io and have clarified the data needs at the current stage...
Seeing Xiao Ge turning around to leave, Xiao Zhu hesitated and continued typing code silently... Step 2: Collect data on demand Collecting data with requirements and analysis goals in mind not only avoids the confusion caused by data redundancy, but also avoids the embarrassment of not knowing what to analyze after collecting all the data. The figure shows an example of a buried point: Graphic documents can be organized by data analysis personnel. The table organization makes the collaboration between demand personnel and technical personnel more efficient, and also greatly improves the subsequent analysis value and efficiency. Step 3: Multi-dimensional cross-positioning problem Applications to data can be divided into general analysis and exploratory analysis. General analysis includes monitoring and analysis of daily data such as new additions, activity, retention , and core funnels, as well as data monitoring of daily operations of each department. Monitor daily growth and analyze abnormal situations, such as monitoring and timely optimization of registration failures and payment failures. Exploratory analysis is an advanced application of data. Conduct correlation analysis on core events and discover key points for product improvement, such as correlation analysis to promote user purchases and finding actions to promote retention. Step 4: Optimize products and operation strategies Based on the problems reflected by the data, we can carry out real-time monitoring and timely solutions. Based on the growth inspiration obtained from the analysis, we can perform A/B testing, grayscale testing, and MVP practice. Step 5: Measure Measurement is the last step from data analysis to practice, but it can also be the first step. Sometimes we seem to have found a growth point, but experiments show that the facts are not as expected. Don’t be discouraged, don’t be disheartened, and don’t skip meals. The understanding of users and in-depth exploration of the business during the analysis process may lead to cumulative value for the next optimization. 3. Data Analysis ThinkingData collection is important, and the methodology of data analysis is also important, but don’t be superstitious about data, because what may be more important is human creativity and imagination! Data analysis is never a one-time thing. Products are constantly iterating and businesses are constantly updating. From cognition to decision-making, data plays a more auxiliary role. From sorting out needs, to collection, to analysis, to practice, and then to measurement, it is always circulating in the entire process of enterprise growth. Finally, those programmers who change the world always hope to create more value with their technology. In many cases, what they want may be clear data requirements, clear analysis goals, and a set of efficient and collaborative methods. After all, everyone believes that: being able to accurately solve problems and drive business growth is more important! Heavy! want! Actually, Xiao Zhu wants to say that it is actually very simple to bury the dots. I don’t need to work overtime tonight~ Mobile application product promotion service: APP promotion service Qinggua Media advertising The author of this article @朱葛IO compiled and published by ( Qinggua Media ). Please indicate the author information and source when reprinting! |
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