the same thing. LSI is a very specific, patented technology from the 80’s. Notes: 1. <use a full stop after the numeral. Note number superscript in slide body> 2. <use a full stop after the numeral. Note number superscript in slide body> First, a word about natural language processing Source:http://www.seobythesea.com/2018/01/google-use-latent-semantic-indexing/
to a rancher is a type of animal. A horse to a carpenter is an implement of work. A horse to a gymnast is an implement on which to perform certain exercises.” https://patentscope.wipo.int/search/en/detail.jsf?docId=US17761872 http://www.seobythesea.com/2017/11/semantic-keyword-research-topic-models/ 4
least in part on: - How often you search related terms - Search volume - How often related queries come up in searches together - If searches tend to happen in a particular hierarchical order - If we know the search is related to a broader search Some soundbytes on entities http://appft.uspto.gov/netacgi/nph-Parser?Sect1=PTO1&Sect2=HITOFF&d=PG01&p=1&u=%2Fnetahtml%2FPTO%2Fsrchnum.html&r=1&f=G&l=50&s1=%22201302385 94%22.PGNR.&OS=DN/20130238594&RS=DN/20130238594
presenting search results based on entity associations of the search items. An example method includes generating first-level clusters of items responsive to a query, each cluster representing an entity in a knowledge base and including items mapped to the entity, merging the first-level clusters based on entity ontology relationships, applying hierarchical clustering to the merged clusters, producing final clusters, and initiating display of the items according to the final clusters.
search result is taking into consideration much more than what words a visitor types into Google, but also things like: already-known correlations with the search already-known related topics already-known disambiguations your own personal search history the context of both the page and your query and what broader topic your search is a part of.
what Google returns for a search result, in terms of what they feel is most relevant. • YMYL pages confirmed • EAT confirmed • The importance of supplementary content https://searchengineland.com/google-releases-the-full-version-of-their-search-quality-rating-guidelines-236572 https://moz.com/blog/google-search-quality-raters-guidelines https://support.google.com/websearch/answer/9281931?hl=en https://webmasters.googleblog.com/2019/08/core-updates.html
Diminishing low quality content Quality Rater Guidelines Confirming high quality content Hummingbird Understanding user intent through entity mapping BERT Understanding user intent through natural language processing
once (or too few) Blogs are buried in your footer – we’re ashamed of them The overall architecture doesn’t make sense or isn’t related So why don’t blogs work?
•Google Analytics •Facebook •Performance media •Gather data from qualitative sources including: • Surveys or feedback polls • Focus groups or interviews •If time, validate in internal journey mapping workshop •Build persona including name, age, gender, interests, goals and values Notes: 1. <use a full stop after the numeral. Note number superscript in slide body> 2. <use a full stop after the numeral. Note number superscript in slide body>
Customer service team Google’s Knowledge graph panels (people also ask, etc) Answerthepublic https://ai.google.com/resear ch/NaturalQuestions Case studies Competitor comparisons Source: https://unsplash.com/photos/r-enAOPw8Rs
Topics that will always be relevant • Topics that actually have search volume • Topics that people are still interested in and the trend looks like they still will be Source: https://knowyourmeme.com/memes/you-know-nothing-jon-snow