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Chapter 5: Analyzing Trends
When performing a web analysis, you may by analyzing the overall trends from your website. These trends include PVs and sessions from the entire website. You have to make sure that you understand the data you are gathering when conducting web analyses. There have been issues in the past when people outlining a city’s PVs ended up making a mistake in the number of search engine results they had received.
When performing web analysis, do not pay attention to detailed data like the referrer source or the analysis of each separate page at first. You might end up reaching an incorrect conclusion. Make sure to focus on user characteristics and inclinations. You can avoid making quick, biased judgements if you look at pure data. You also want to make sure that you understand the definitions of the number of sessions and unique users as the averages available in web analytics tools is often useless in the overall scheme of things.
What Senior Web Analytics Consultants learn about trend analysis
As an Associate Web Analytics Consultant, you focused on learning about basic trends. As a Senior Web Analytics Consultant, you will learn reference values and how they interact with trends. Reference values are metrics you need to be aware of if there is a problem with your website and can help you fix it accordingly. You also need to be able to match trends with your client’s KPI.
- 5.1 How Logfiles Are Structured
- 5.1.1 Aggregated Logfile Data
- 5.1.2 Hits and the number of hits to a webpage
- 5.2 Understanding Raw Data
- 5.2.1 Log formats
- 5.2.2 Defining Metrics
- 5.2.3 Status Code
- 5.2.4 User agents
- 5.2.5 Session Duration
- 5.3 Analyzing Metrics
- 5.3.1 Pageviews
- 5.3.2 Sessions
- 5.3.3 Analyzing Unique Users
- 5.3.4 Using Conversions for web analytics
- 5.3.5 Session Duration
- 5.4 Notes on Web Analytics
- 5.4.1 Analyzing Multiple Devices
- 5.4.2 Notes on Deviations
- 5.4.3 Screen resolution, browsers, and operating systems
- 5.5 Characteristics and Deviation in Web Analytics Data
- 5.5.1 Power Distribution and Average
- 5.5.2 Reasons of Deviation
- Case Study: Focusing on the number of pageviews and improving the site’s structure
Chapter 1: What is Web Analytics?
- 1.1 Does the web have a bright future?
- 1.1.1 Business Management and the Internet
- 1.1.2 Web Specialists
- 1.1.3 The Web Industry
- 1.2 Online marketing and web analytics
- 1.2.1 The Professional Image Required for the Future of the Web Industry
- 1.2.2 The Significance of Web Marketing
- 1.2.3 The Significance of Web Analytics
- 1.3 Web Analytics
- 1.3.1 Bringing Business Results
- 1.3.2 Listen to Your Users’ Voices
- 1.3.3 The PDCA Cycle
- 1.4 The Future of Web Analytics
- 1.4.1 Data to Understand
- 1.4.2 Future Concerns
- 1.5 Web Analytics Consultants
- 1.5.1 The Philosophy of Web Analytics Consultants
- 1.5.2 Facts Regarding Web Analytics
- 1.5.3 Web Analyst’s Issues in Ethics: Confidentiality
- 1.5.4 Web Analytics Consultant’s Issues in Ethics: Code of Conduct
- 1.5.5 Certification Program for Web Analytics Consultants
- 1.5.6 The Web Analytics Consultants Association
- Case Study: Web analytics is an essential element of B2B marketing
- Case Study: Become a web analysis consultant who can commit 100% to the results
- 2.1 Web Analytics Starts with Business Analysis
- 2.1.1 Business Models
- 2.1.2 The 3C Business Model
- 2.1.3 The First C – Customer Analysis
- 2.1.4 The Second C – Competitor Analysis
- 2.1.5 The Third C – Corporation Analysis
- 2.2 Business Models can be used to Understand Customers
- 2.2.1 Developing Communication Design Schematics
- 2.2.2 Using Communication Design to Bring about Positive Results
- 2.3 Using Web Analytics Tools in Industry Analyses
- 2.3.1 Macro & Micro Analysis Tools
- 2.3.2 How to Introduce Micro Analysis
- 2.3.3 Internet Audience Measurement Methodologies
- 2.3.4 Competitor Analysis
- 2.3.5 How to take advantage of web marketing analysis tools
- Case Study: Optimizing Your Website
- Column: Certifying as a Web Analytics Consultant
- 3.1 Understanding Web Analytics Terminology and KPIs
- 3.1.1 Basic Metrics in Web Analytics (e.g. Pageviews)
- 3.1.2 What are KPIs?
- 3.1.3 The definitions of KGI, KSF and KPI
- 3.1.4 KPIs that measure the effectiveness of a website
- 3.2 Develop a plan
- 3.2.1 Planning based on the purpose of the project
- 3.3 E-Commerce Marketing Strategies
- 3.3.1 Planning an E-Commerce Campaign That Will Help You Reach Your KPI
- 3.4 Lead Generation
- 3.4.1 Lead Generation KPIs: What to Measure
- 3.4.2 Divide lead generation into phases
- 3.4.3 Advertising vs Improving Your Webpage
- 3.4.4 How Should We Prioritize Ad Investments?
- Column: Growth Hacking
Chapter 4: Designing a Blueprint for Web Analytics
- 4.1 Selecting Your Web Log Analysis Method
- 4.1.1 The Log file Analysis Method
- 4.1.2 The Packet Sniffing Method
- 4.1.3 The Page Tagging Method
- 4.1.4 How to Choose the Correct Web Log Analysis Method Based on Available Settings and Systems
- 4.1.5 How to Choose Access Analysis Tools: Company Policies
- 4.2 Setup
- 4.2.1 Setting Exclusions
- 4.2.2 Setting Conversion Pages
- 4.2.3 Other Pre-Settings
- 4.3 Solutions for Difficult Access Analysis
- 4.3.1 RIA/AJAX
- 4.3.2 URL Redirection Pages
- 4.3.3 Setting Page Links
- 4.3.4 Download Count of a PDF File (Handling of Data Other than Web Page)
- 4.3.5 Analysis of a SSL Page
- 4.4 Combining Data in Web Analytics
- 4.4.1 Basic Concept of Combining Data in Web Analytics
- 4.4.2 Analyzing Combined Data From Multiple Devices
- 4.4.3 Smartphone Applications and Analytics
- 4.4.4 Data Integration
- 4.4.5 Analysis by Combining Equipment Data
- 4.5 Web Analytics Software
- Case Study: Re-designing the Staff Blog to Successfully Attract New Employees
- 5.1 How Logfiles Are Structured
- 5.1.1 Aggregated Logfile Data
- 5.1.2 Hits and the number of hits to a webpage
- 5.2 Understanding Raw Data
- 5.2.1 Log formats
- 5.2.2 Defining Metrics
- 5.2.3 Status Code
- 5.2.4 User agents
- 5.2.5 Session Duration
- 5.3 Analyzing Metrics
- 5.3.1 Pageviews
- 5.3.2 Sessions
- 5.3.3 Analyzing Unique Users
- 5.3.4 Using Conversions for web analytics
- 5.3.5 Session Duration
- 5.4 Notes on Web Analytics
- 5.4.1 Analyzing Multiple Devices
- 5.4.2 Notes on Deviations
- 5.4.3 Screen resolution, browsers, and operating systems
- 5.5 Characteristics and Deviation in Web Analytics Data
- 5.5.1 Power Distribution and Average
- 5.5.2 Reasons of Deviation
- Case Study: Focusing on the number of pageviews and improving the site’s structure
Chapter 6: Analyzing Referrers
- 6.1 Reference source structures
- 6.1.1 Types of Referrers
- 6.1.2 The User Processes Flow
- 6.1.3 Query strings
- 6.1.4 Improving Traffic for Each Referral Type
- 6.1.5 Referrer sources
- 6.2 Situations when there is no referrer
- 6.2.1 Newsletter
- 6.2.2 Using query strings to identify referrers in no referrer logs
- 6.3 Search Queries and Results
- 6.3.1 What is SEO?
- 6.3.2 SEO and organic searches
- 6.3.3 Google Search Console
- 6.3.4 Keyword tools
- 6.3.5 Take advantage of tools that track trends
- 6.3.6 Off-page and Onpage Search Engine Optimization
- 6.4 Analysis of Keyword and PLA Advertisements
- 6.4.1 Traffic via PPC Ads
- 6.4.2 Pay Per Click Ads
- 6.4.3 Ad Partners
- 6.4.4 The Quality of Pay Per Click Ads The Quality of Product Listing Ads
- 6.4.5 Managing Pay-per-click Ads
- 6.5 Social Media Analytics
- 6.5.1 SNS, Social Media Websites
- 6.5.2 Data from Social Media
- 6.5.3 Using Social Media
- 6.5.4 Social media advertising
- 6.6 Measuring Your Ad’s Effects
- 6.6.1 Terms Used in Ad Effects Measurement
- 6.6.2 Designing Internet Ads
- 6.6.3 Types of Ads
- 6.6.4 Post Click Attribution
- 6.6.5 Ad Technology
- 7.1 Content structures and research methods
- 7.1.1 Managing the quality of a website
- 7.1.2 Self-report studies
- 7.1.3 User experience research
- 7.2 Bounce rate analytics
- 7.2.1 Finding Issues in Bounce Rates
- 7.2.2 LPO (Landing Page Optimization)
- 7.2.3 Improvements with LPO tools
- 7.3 Analyze the exit rate
- 7.3.1 Finding Issues with the Exit Rate
- 7.3.2 Analyzing Internal Search Functions
- 7.3.3 Utilize heatmapping tools
- 7.4 Analyzing Form Abandonment Rates
- 7.4.1 Finding Issues Regarding Form Abandonment Rates
- 7.4.2 Improving Forms
- 7.4.3 Improving with EFO
- Case Study: Don’t Rely Solely on Experience and Intuition.
Chapter 8: Web Analytics, Proposals and Reports
- 8.1 Writing reports
- 8.1.1 The Relationship between PVs, Sessions, and Unique Users
- 8.1.2 Rules you must follow when writing a report
- 8.1.3 Defining Report Requirements
- 8.1.4 Tips for improving the flow of written reports
- 8.1.5 Types of web analytics reports
- 8.1.6 Notes on Writing Reports
- 8.2 How to use tables, charts, and graphs
- 8.2.1 Graphs
- 8.2.2 Types of Charts and Their Usage
- 8.2.3 Notes on creating charts
- 8.3 Logic
- 8.3.1 Deductive and inductive reasoning
- 8.3.2 Cause-Effect Relationships
- 8.3.3 The MECE Principle
- Case Study: How to write a report that encourages companies to take action