Google Algorithm Changes For April: Big List Released

As expected, Google has finally released its big list of algorithm changes for the month of April. It’s been an interesting month, to say the least, with not only the Penguin update, but a coupl...
Google Algorithm Changes For April: Big List Released
Written by Chris Crum
  • As expected, Google has finally released its big list of algorithm changes for the month of April. It’s been an interesting month, to say the least, with not only the Penguin update, but a couple of Panda updates sprinkled in. There’s not a whole lot about either of those on this list, however, which is really a testament to just how many things Google is always doing to change its algorithm – signals (some of them, at least) which could help or hurt you in other ways besides the hugely publicized updates.

    We’ll certainly be digging a bit more into some of these in forthcoming articles. At a quick glance, I noticed a few more freshness-related tweaks. Google has also expanded its index base by 15%, which is interesting. As far as Penguin goes, Google does mention: “Keyword stuffing classifier improvement. [project codename “Spam”] We have classifiers designed to detect when a website is keyword stuffing. This change made the keyword stuffing classifier better.”

    Keyword stuffing is against Google’s quality guidelines, and was one of the specific things Matt Cutts mentioned in his announcement of the update.

    Interestingly, unlike previous lists, there is no mention of Panda whatsoever on this list, though there were 2 known Panda data refreshes during April.

    Here’s the list in its entirety:

    • Categorize paginated documents. [launch codename “Xirtam3”, project codename “CategorizePaginatedDocuments”] Sometimes, search results can be dominated by documents from a paginated series. This change helps surface more diverse results in such cases.
    • More language-relevant navigational results. [launch codename “Raquel”] For navigational searches when the user types in a web address, such as [bol.com], we generally try to rank that web address at the top. However, this isn’t always the best answer. For example, bol.com is a Dutch page, but many users are actually searching in Portuguese and are looking for the Brazilian email service, http://www.bol.uol.com.br/. This change takes into account language to help return the most relevant navigational results.
    • Country identification for webpages. [launch codename “sudoku”] Location is an important signal we use to surface content more relevant to a particular country. For a while we’ve had systems designed to detect when a website, subdomain, or directory is relevant to a set of countries. This change extends the granularity of those systems to the page level for sites that host user generated content, meaning that some pages on a particular site can be considered relevant to France, while others might be considered relevant to Spain.
    • Anchors bug fix. [launch codename “Organochloride”, project codename “Anchors”] This change fixed a bug related to our handling of anchors.
    • More domain diversity. [launch codename “Horde”, project codename “Domain Crowding”] Sometimes search returns too many results from the same domain. This change helps surface content from a more diverse set of domains.
    • More local sites from organizations. [project codename “ImpOrgMap2”] This change makes it more likely you’ll find an organization website from your country (e.g. mexico.cnn.com for Mexico rather than cnn.com).
    • Improvements to local navigational searches. [launch codename “onebar-l”] For searches that include location terms, e.g. [dunston mint seattle] or [Vaso Azzurro Restaurant 94043], we are more likely to rank the local navigational homepages in the top position, even in cases where the navigational page does not mention the location.
    • Improvements to how search terms are scored in ranking. [launch codename “Bi02sw41”] One of the most fundamental signals used in search is whether and how your search terms appear on the pages you’re searching. This change improves the way those terms are scored.
    • Disable salience in snippets. [launch codename “DSS”, project codename “Snippets”] This change updates our system for generating snippets to keep it consistent with other infrastructure improvements. It also simplifies and increases consistency in the snippet generation process.
    • More text from the beginning of the page in snippets. [launch codename “solar”, project codename “Snippets”] This change makes it more likely we’ll show text from the beginning of a page in snippets when that text is particularly relevant.
    • Smoother ranking changes for fresh results. [launch codename “sep”, project codename “Freshness”] We want to help you find the freshest results, particularly for searches with important new web content, such as breaking news topics. We try to promote content that appears to be fresh. This change applies a more granular classifier, leading to more nuanced changes in ranking based on freshness.
    • Improvement in a freshness signal. [launch codename “citron”, project codename “Freshness”] This change is a minor improvement to one of the freshness signals which helps to better identify fresh documents.
    • No freshness boost for low-quality content. [launch codename “NoRot”, project codename “Freshness”] We have modified a classifier we use to promote fresh content to exclude fresh content identified as particularly low-quality.
    • Tweak to trigger behavior for Instant Previews. This change narrows the trigger area for Instant Previews so that you won’t see a preview until you hover and pause over the icon to the right of each search result. In the past the feature would trigger if you moused into a larger button area.
    • Sunrise and sunset search feature internationalization. [project codename “sunrise-i18n”] We’ve internationalized the sunrise and sunset search feature to 33 new languages, so now you can more easily plan an evening jog before dusk or set your alarm clock to watch the sunrise with a friend.
    • Improvements to currency conversion search feature in Turkish. [launch codename “kur”, project codename “kur”] We launched improvements to the currency conversion search feature in Turkish. Try searching for [dolar kuru], [euro ne kadar], or [avro kaç para].
    • Improvements to news clustering for Serbian. [launch codename “serbian-5”] For news results, we generally try to cluster articles about the same story into groups. This change improves clustering in Serbian by better grouping articles written in Cyrillic and Latin. We also improved our use of “stemming” — a technique that relies on the “stem” or root of a word.
    • Better query interpretation. This launch helps us better interpret the likely intention of your search query as suggested by your last few searches.
    • News universal results serving improvements. [launch codename “inhale”] This change streamlines the serving of news results on Google by shifting to a more unified system architecture.
    • UI improvements for breaking news topics. [launch codename “Smoothie”, project codename “Smoothie”] We’ve improved the user interface for news results when you’re searching for a breaking news topic. You’ll often see a large image thumbnail alongside two fresh news results.
    • More comprehensive predictions for local queries. [project codename “Autocomplete”] This change improves the comprehensiveness of autocomplete predictions by expanding coverage for long-tail U.S. local search queries such as addresses or small businesses.
    • Improvements to triggering of public data search feature. [launch codename “Plunge_Local”, project codename “DIVE”] This launch improves triggering for the public data search feature, broadening the range of queries that will return helpful population and unemployment data.
    • Adding Japanese and Korean to error page classifier. [launch codename “maniac4jars”, project codename “Soft404”] We have signals designed to detect crypto 404 pages (also known as “soft 404s”), pages that return valid text to a browser, but the text only contains error messages, such as “Page not found.” It’s rare that a user will be looking for such a page, so it’s important we be able to detect them. This change extends a particular classifier to Japanese and Korean.
    • More efficient generation of alternative titles. [launch codename “HalfMarathon”] We use a variety of signals to generate titles in search results. This change makes the process more efficient, saving tremendous CPU resources without degrading quality.
    • More concise and/or informative titles. [launch codename “kebmo”] We look at a number of factors when deciding what to show for the title of a search result. This change means you’ll find more informative titles and/or more concise titles with the same information.
    • Fewer bad spell corrections internationally. [launch codename “Potage”, project codename “Spelling”] When you search for [mango tea], we don’t want to show spelling predictions like “Did you mean ‘mint tea’?” We have algorithms designed to prevent these “bad spell corrections” and this change internationalizes one of those algorithms.
    • More spelling corrections globally and in more languages. [launch codename “pita”, project codename “Autocomplete”] Sometimes autocomplete will correct your spelling before you’ve finished typing. We’ve been offering advanced spelling corrections in English, and recently we extended the comprehensiveness of this feature to cover more than 60 languages.
    • More spell corrections for long queries. [launch codename “caterpillar_new”, project codename “Spelling”] We rolled out a change making it more likely that your query will get a spell correction even if it’s longer than ten terms. You can watch uncut footage of when we decided to launch this from our past blog post.
    • More comprehensive triggering of “showing results for” goes international. [launch codename “ifprdym”, project codename “Spelling”] In some cases when you’ve misspelled a search, say [pnumatic], the results you find will actually be results for the corrected query, “pneumatic.” In the past, we haven’t always provided the explicit user interface to say, “Showing results for pneumatic” and the option to “Search instead for pnumatic.” We recently started showing the explicit “Showing results for” interface more often in these cases in English, and now we’re expanding that to new languages.
    • “Did you mean” suppression goes international. [launch codename “idymsup”, project codename “Spelling”] Sometimes the “Did you mean?” spelling feature predicts spelling corrections that are accurate, but wouldn’t actually be helpful if clicked. For example, the results for the predicted correction of your search may be nearly identical to the results for your original search. In these cases, inviting you to refine your search isn’t helpful. This change first checks a spell prediction to see if it’s useful before presenting it to the user. This algorithm was already rolled out in English, but now we’ve expanded to new languages.
    • Spelling model refresh and quality improvements. We’ve refreshed spelling models and launched quality improvements in 27 languages.
    • Fewer autocomplete predictions leading to low-quality results. [launch codename “Queens5”, project codename “Autocomplete”] We’ve rolled out a change designed to show fewer autocomplete predictions leading to low-quality results.
    • Improvements to SafeSearch for videos and images. [project codename “SafeSearch”] We’ve made improvements to our SafeSearch signals in videos and images mode, making it less likely you’ll see adult content when you aren’t looking for it.
    • Improved SafeSearch models. [launch codename “Squeezie”, project codename “SafeSearch”] This change improves our classifier used to categorize pages for SafeSearch in 40+ languages.
    • Improvements to SafeSearch signals in Russian. [project codename “SafeSearch”] This change makes it less likely that you’ll see adult content in Russian when you aren’t looking for it.
    • Increase base index size by 15%. [project codename “Indexing”] The base search index is our main index for serving search results and every query that comes into Google is matched against this index. This change increases the number of documents served by that index by 15%. *Note: We’re constantly tuning the size of our different indexes and changes may not always appear in these blog posts.
    • New index tier. [launch codename “cantina”, project codename “Indexing”] We keep our index in “tiers” where different documents are indexed at different rates depending on how relevant they are likely to be to users. This month we introduced an additional indexing tier to support continued comprehensiveness in search results.
    • Backend improvements in serving. [launch codename “Hedges”, project codename “Benson”] We’ve rolled out some improvements to our serving systems making them less computationally expensive and massively simplifying code.
    • “Sub-sitelinks” in expanded sitelinks. [launch codename “thanksgiving”] This improvement digs deeper into megasitelinks by showing sub-sitelinks instead of the normal snippet.
    • Better ranking of expanded sitelinks. [project codename “Megasitelinks”] This change improves the ranking of megasitelinks by providing a minimum score for the sitelink based on a score for the same URL used in general ranking.
    • Sitelinks data refresh. [launch codename “Saralee-76”] Sitelinks (the links that appear beneath some search results and link deeper into the site) are generated in part by an offline process that analyzes site structure and other data to determine the most relevant links to show users. We’ve recently updated the data through our offline process. These updates happen frequently (on the order of weeks).
    • Less snippet duplication in expanded sitelinks. [project codename “Megasitelinks”] We’ve adopted a new technique to reduce duplication in the snippets of expanded sitelinks.
    • Movie showtimes search feature for mobile in China, Korea and Japan. We’ve expanded our movie showtimes feature for mobile to China, Korea and Japan.
    • No freshness boost for low quality sites. [launch codename “NoRot”, project codename “Freshness”] We’ve modified a classifier we use to promote fresh content to exclude sites identified as particularly low-quality.
    • MLB search feature. [launch codename “BallFour”, project codename “Live Results”] As the MLB season began, we rolled out a new MLB search feature. Try searching for [sf giants score] or [mlb scores].
    • Spanish football (La Liga) search feature. This feature provides scores and information about teams playing in La Liga. Try searching for [barcelona fc] or [la liga].
    • Formula 1 racing search feature. [launch codename “CheckeredFlag”] This month we introduced a new search feature to help you find Formula 1 leaderboards and results. Try searching [formula 1] or [mark webber].
    • Tweaks to NHL search feature. We’ve improved the NHL search feature so it’s more likely to appear when relevant. Try searching for [nhl scores] or [capitals score].
    • Keyword stuffing classifier improvement. [project codename “Spam”] We have classifiers designed to detect when a website is keyword stuffing. This change made the keyword stuffing classifier better.
    • More authoritative results. We’ve tweaked a signal we use to surface more authoritative content.
    • Better HTML5 resource caching for mobile. We’ve improved caching of different components of the search results page, dramatically reducing latency in a number of cases.

    More to come…

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