10 Lessons from a 100k Pageview Post

Posted by SteKenwright This post was originally in YouMoz , and was promoted to the main blog because it provides great value and interest to our community. The author’s views are entirely his or her own and may not reflect the views of SEOmoz, Inc. This kind of thing might happen to Rand all the time, but it’s not often that a digital marketing company based in Leeds gets 100,000+ people reading anything it does (at least on its own site). That’s what unexpectedly happened to us on www.branded3.com a few weeks ago – what essentially started as a rant from some guy having a bad day blew up and now has 1,184 votes on Hacker News (and incoming links from some of the biggest sites in the world). I think it’s likely I’ll never replicate this, and I didn’t intend this either – so I’ll not preach: “this is how you get 100,000 page views.” Everyone else is just as qualified as I am to write a post that’s read all around the world, and that’s exactly what I want to happen. I’d like to tell you what I’m taking away from this, and how I’ll use it when I’m creating content for my clients in the future. Commonly known as sharking. Google it. 1. [citation needed]…but not always. Google only wants you to list the links that are most relevant to and most important to your content – Eric Enge likened this to a research paper around a month ago on Search Engine Watch . The difference between your content and a research paper, though, is that your content doesn’t get discredited if there is nobody to link to that backs up the point you’re trying to make. In a Webmaster Help Video earlier in the year, Google Engineer Matt Cutts said don’t link out to low quality sites – this is pretty much the equivalent of quoting from Wikipedia in an essay. You don’t have to get peer approved before people will read your post, though, so if there’s nobody to link to that’s talking about whatever you are then that could actually be a good thing. If someone else is covering the same subject as you there’s no real reason why you should get all the links, so you should definitely write about things that no one else is covering if you can. NB: Not having anyone to back up your point doesn’t excuse you from not having a point in the first place . 2. Content needs to solve people’s problems…or highlight them. I had a problem with Path and as of the time I started writing the post, nobody had solved it, though a few people had tweeted about experiencing similar problems. I tweeted @path at roughly 7am and the first person to reply was someone else who was (very) actively looking for an answer to the same problem. I embedded Design33’s tweet in the post and linked to him; let my cohort know; and instantly a problem shared is a problem…erm, doubled. Whether your content is solving someone’s problem, or you’re just empathising with them; if you know where to find them…let them know it’s there and get your influencers on board. 3. Find out what people are looking for. The principles behind content marketing are gaining real traction in the SEO community, and more and more companies are getting on board with long-term content strategies. There’s plenty to say about planning your content out for months in advance , but as Simon points out in this fantastic YouMoz post from last year, it’s not all about Google Keyword Tool anymore. There are some great tools out there to find hot topics ( Bottlenose is particularly useful), but the best way to find what your audience is looking for is by using the same tools as they are. Wil Reynolds is a great advocate of using Google Complete to find content topics (check out Wil’s LinkLove 2013 presentation , around slide 90) – start typing questions, don’t press enter; just note down what people are actually searching for. Search Twitter and find out not only what problems need solving, but who it is that actually has that problem (see point two)! Google Keyword Tool shouldn’t be your first stop when you’re looking for fires to put out, and if it’s monthly search volume you’re looking at, chances are someone faster has created content solving the same issue weeks ago. 4. Find your forum. …by which I don’t literally mean a forum, since as an industry we’ve pretty much ruined that for everyone – all I’m saying is that you just need to find the right soapbox to spread your message. In the comment string on our site this guy called me out for posting this on a company blog. At the time I hadn’t really questioned where else I could actually write this up, so Luca made me think. If I had put this on my own blog nobody would have read it…I would have just been complaining without any real platform to build on (might as well have just put it on Facebook or Twitter). One of our clients is a cloud storage company who obviously have a vested interest in online security, and do write about issues such as this from time to time. They’d never approve something like this for their blog (more in point six) so I would have had to dry it right out…or put it on another site on their behalf. Hammering this article to fit brand guidelines would have dulled its impact so much, and for a company to write about real life issues like this they really would have had to find a real life case…otherwise they’re just tipping off the media. It would never have worked. If you’re going to be controversial, find a site that’s fine with that to host your content – that goes for the content you’re putting out on behalf of your clients too. We’ve had plenty of content turned down by webmasters for being too much for their blogs, and you’ve got to respect that. Guest blogging is like the name implies, and you’ve got to make sure you don’t leave a mess in someone else’s house. 5. Write for your audience… Something everyone is taught in English class from a relatively early age is how to write for an audience. Even if you came into SEO from something else – a computer science degree, MA in marketing; whatever – you still have those classes to fall back on, and they’ll give you a pretty solid foundation in content marketing. In this industry everything comes from experience – if you covered search engine optimisation in your degree I’m sure you found half the things you knew were obsolete by the time you’d graduated…and post-Penguin the other half will get you penalised too. I found when I moved from in-house to agency side search engine marketing, most of the things I’d been doing for the last year were considered pretty spammy. If you’re writing to put content on websites that nobody reads, like article marketing websites, then you’re not writing for an audience…and that shows in the work you put out. You don’t have to be a journalist to create great content. If you’re solving problems imagine you’ve got that problem yourself and then just write for you… 6. …don’t write for your client. If you think you’ve found a hot topic and your client isn’t happy with being associated with it, there’s probably a case for not pushing that. Controversial content gets links, but there’s a certain amount of press that comes with those links. I don’t have a PR agency, so TechCrunch pointing out that it was probably my fault isn’t a disaster from my point of view. If your client makes a mistake then it might be. In the case of my blog post it wasn’t long before the media-at-large didn’t care anymore (TechCrunch may have even been the start of that) and the chances are pretty good that nobody will remember a guy getting mad at his phone in a few weeks – if a tech company posted a rant about Path it would probably be called a smear campaign. …and I won’t lie – when the VP of Marketing called me I was more than a little worried. 7. Your content has to be worthy of links to get any… This is my very first YouMoz post, and there’s a good reason for that – up until now I’ve not really had anything to say that I think might help the community, so I’ve stuck to my blog, Twitter and getting all up in other people’s business when I get the chance . If you’ve got an opportunity to write for a great site – or to work with a well-known journalist, or whatever – giving them a few hundred words of nothing content will a) not generate much in the way in traffic, b) not generate any leads, and c) make that great site think twice about having you back. 8. …and so does your site. Which leads me on to number eight: the whole point of placing links as part of a content marketing strategy (or at least it probably should be the main point) is for people to click through to your site. Make sure your users are arriving on a page they want to see. @ stekenwright @ phillipsnick @ newsyc20 @ path I think that branded3.com needs to install a WordPress caching plugin. :D — David Lynch (@kemayo) April 30, 2013 When St. Louis-based developer David Lynch submitted the post to Hacker News our entire site went down almost immediately (at 17:25, which our Development team were definitely not happy about). It’s a pretty extreme example, but if your site doesn’t present people with the screen they were expecting to see they’re probably going to leave straight away. This applies not only in a technical SEO sense (see Aleyda Solis’ wonderful resources on mobile SEO and which versions of a page you should be serving to which people for a start), but also in something as intrinsic as the services you’re providing. Going back to point four (Find your forum): the company I work for not only has a burgeoning social team, but an entire blog dedicated to social media – the perfect place to host an article about a social network, in my opinion. Make sure your link is pointing to the kind of page your audience wants to find. 9. Be funny, or insightful. Probably not both. The links generated by my post contain so much more useful information and insight than my content does. Like I said, I’m not pretending to be a journalist uncovering a story. I just presented a real life experience in a humorous way…because it was pretty funny. How do you explain what you do to your partner’s grandparents? I go with “I work with computers”. Imagine trying to explain a social network to two different pairs of 80 year-olds before 6:30 in the morning? You’ve got to laugh, as the expression goes. Your multi-national debt management firm probably can’t be funny in its content (very happy for people to prove me wrong here). Companies like this have guidelines to uphold and the chances are they’re much more interested in their brand guidelines than the links you’re working so hard to get for them. Make sure you take tone of voice into account and if your content doesn’t work in their speak, see point six. You’re writing the wrong thing. Your post definitely needs a Wonka meme. 10. Don’t do it for the links. Writing my blog post, I had absolutely no intention of getting a single link. In all honestly I didn’t fully expect the guys at Path to see it – I just wanted to vent and if possible, make my colleagues laugh. In a very helpful post on Quick Sprout last October KISSmetrics’ Neil Patel wrote that he never manually built a link – he just kept writing. We’re not KISSmetrics, but our blog has been covering as many of the happenings in the digital marketing world as we can possibly manage for more than half a decade – and mostly we just do it because we want to. Posting a piece of content on your blog every few weeks or months and expecting it to get picked up isn’t going to happen; and it’s definitely not content marketing – it’s just content. No matter how good your stuff is, don’t be disheartened if you don’t get any traction with a blog post…or a hundred blog posts. What I do think is important is that you look at every piece of content you write and think about how to make it better this time. You don’t need to over-analyse every post before it goes live – I would guess you’ve got targets and deadlines to make after all – just think about how to improve on what you’ve got so your next article will make outreach easier, or will help more people out; and if your last piece performed well, how are you going to beat it? Even if you know you won’t. Sign up for The Moz Top 10 , a semimonthly mailer updating you on the top ten hottest pieces of SEO news, tips, and rad links uncovered by the Moz team. Think of it as your exclusive digest of stuff you don’t have time to hunt down but want to read!

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10 Lessons from a 100k Pageview Post

Decoding Google’s Referral String (or, how I surviVED Secure Search)

Posted by timresnik Last week, I held a Mozinar outlining a method to extract SERP vertical — called Universal Search by Google — from Google referral strings. Since the Mozinar concluded, the number of people who have reached out with their own theories and ideas has been impressive. I want to post everything that I know here and then leave it up to you folks in the SEOmoz community to start hacking and sharing your insight. For those of you who did not see the Mozinar, you can access it here (voiceover included). You can also download or view the slides without VO on Slideshare here . Before getting into the step-by-step process and providing examples of how to use the Google referral string to interpret where in Universal Search your traffic came from, I want to lay out a problem we were having at AudienceWise. In 2011, Matthew Brown and I started an agency to help news publishers with technical SEO and audience development. In our other jobs, specifically Matthew at the New York Times, we struggled with reconciling for the lack of data around Universal Search referrals. As far as our web analytics platforms were concerned, a visit from web search, a News OneBox link, and an image result were all treated exactly the same: as organic search traffic. Then came Google Secure Search , and referral data got even more opaque. In addition to not knowing which Universal vertical the referral came from, now in about 10% of cases we didn’t even know the keyword that referred the traffic. The question that kept going through our collective ginger minds was: how can we help our clients with content strategy if we know nothing about WHY they are receiving said search traffic? Unfortunately, Secure Search has vastly expanded and now accounts for a large percentage of all Google referral traffic. As way of an example, here is the latest percentage of keyword = (not provided) for SEOmoz: Matthew and I knew the only way to reclaim *some* of this lost data was to start looking at other sources. Luckily, Matt speaks Spanish (sort of) and came across this blog . The author posited that the ‘ved’ parameter in the Google referral string held some magic in determining the vertical that result appeared in. After doing some quick searches, and looking at the “href” values for the results, it seemed like he was onto something. We immediately set up Google Analytics profile filters to extract this parameter on a client that receives 300,000 search referrals from Google per day. After a couple of hours, we were loaded with enough data to start confirming some of the authors theories and coming up with a few of our own. I will layout what we found, provide a step-by-step tutorial to setup Google Analytics filters, and provide a few examples of how to use the data. First, let’s talk about where you can find this parameter. Simply, the Google referral string is the “href” value assigned to each URL in a set of search results. When a user clicks on the above, she is being redirected through a google URL prior to reaching her final destination; Radiohead.com, in this case. Google most likely does this for internal data aggregation reasons — we’re not suppose to know where our traffic comes from, but they sure make use of it — probably for aggregating data around SERPs. There are two parameters that I will focus on here: ‘cd’ and ‘ved.’  The ‘cd’ parameter has been written about before and tells us the position of the search result in the set. As far as I can tell, the ‘ved’ parameter is divided into three parts and tells us which Universal vertical the result is part of, the position within that vertical (relative position), and the position within the search result (absolute position). I will focus on just the Universal aspect for this post and will follow up with relative vs. absolute position in a follow-up. Let’s have a look at a few examples. When QFj is in the ‘ved’ parameter that the result is a standard web search result, such as: One of the attendees of the Mozinar made this astute observation about a special variation for the web search ‘ved’: When QqQIw (that’s a capital “i” not a lowercase “L”) it is a Universal result that resides within the Google News OneBox. When QpwI is present that means the result was the thumbnail image within the News OneBox. You get the idea. Here are some other values of ‘ved.’ I suspect that there are many more and am curious to see what the community here can find and SHARE here within: Setting up Google Analytics filters You should have a good understanding now of potential power of this information. Did I mention that it is still available even if the keyword is “(not provided)”? We could potentially interpret the keyword by comparing ‘ved.’ Anyone up for the challenge? I go through one example below. While ‘ved’ appears to persist through Secure Search only about 50% of the search referrals within GA have this data. If anyone can shine light on this, I’m sure the rest of the community would shower you with thumbs ups! Step 1: Set up a Google Analytics Profile filter Go to the account’s administrative dashboard and select “New Profile.” I would recommend against setting this filter up on an existing profile as that it will overwrite some data that you otherwise want. I called mine ‘Universal Search.’ Next, you will need to set up two advanced filters; one to extract ‘ved’ and ‘cd’ from the Google referral string, and the other to display the data within Google Analytics. Universal Extract Here’s the text of the regex that I used Field A  (?|&)(ved)=([^&]*) Field B (?|&)(cd)=([^&]*) Universal Display There’s many different ways to do this. I’ve decided to overwrite the campaign dimension of source since that’s where I am checking my organic search referrals. Filters work while the data is streaming in and will not be reflected retroactively. That’s fine; you just have to wait for a day or so (or an hour or so for bigger sites) to start digging in. Here’s what it should look like: Step 2: Set up Advanced Segments I prefer to do this level of analysis in Excel, but Advanced Segments can be created to make it all look pretty in GA. I will walk you through the setup of one, which will inform you how to do the rest. You will want to name your Advanced Segment something that will clue you in to which vertical you are analyzing. In this case, I have called out that it is a standard ‘blue link’ result from a News OneBox. From there, all you need to do is search on ‘Source’ for anything containing the ‘ved’ you are trying to isolate. In this case, we are looking for ‘QqQIw.’ Here’s an example of what you will see: Wow! There is an actionable result right in front of me. It’s probably time to do some image optimization. Google apparently respects the site as a news authority, but not one that creates good images. Another useful ‘ved’ to investigate is Sitelinks. Sitelinks are a subset of results triggered by a branded search. Google algorithmically determines which links to include, but webmasters have the ability to demote links in Webmaster Tools. The ‘ved’ parameter can come in handy to measure performance of Sitelink pages and action can be taken. In order to figure out the Sitelink that sent the search referral, look at the ‘cd’ value that was passed with the referral string. We accounted for this in the filters and it is in your data here: Here’s what the ‘cd’ values mean in relation to Sitelink results: There are myriad of use cases for bubbling up SEO action items. Here are a few, and please add more in the comments: Calculating ROI and resource allocation for different SEO efforts : News, image, branded, and semantic markup. As marketers, we are only as valuable as what we can quantify. A challenge with SEO is demonstrating value. This does not solve the problem, but exposes a few more variables to work with. Optimizing branded search Sitelinks : As I outlined above, there is value in knowing which branded links send you traffic. This is also one area where you can mitigate the loss of keyword data due to Secure Search. When you see that a keyword is (not provided) AND ved = xxxxQjB, you can interpolate that keyword = YOUR BRAND. Image optimization for Google News : The top link in the Google News OneBox is most often a different source than the image thumbnail. If ved = xxxxQqQIw ÷ ved = xxxxQpwI, or the ratio of links to images, is way off-kilter it suggests there is an image optimization issue. Publishers can then use this data to measure optimization efforts against a pre-established baseline. Optimizing video thumbnails : Images of video that are alongside a link are always from the same source as the link. Marketers can use a similar ratio as above to analyze click-through rates and on-page analysis when ved = xxxxQuAIw. Analyzing efficacy of semantic markup : As the occurrences of SERPS that include clickable rich-snippets and knowledge graph elements increase, being able to parse and understand the referrals using ‘ved’ is clear. I have only started looking at results that have rich-snippets, but the initial data suggests that ‘ved’ may even indicate what type event, of rich snippet was clicked. Here are a few examples: (This is one area that could use a lot more research from the community!) Events Markup: ved = xxxBE0MGM Music Markup: ved = xxxQ6hEw SERP landscape analysis : If you can scrape a Google SERP, you can tell which ‘ved’ elements are on the page and know which verticals are in each. The ‘href’ lives within Java Script so the simplest way to retrieve it is by using a headless browser such PhantomJS. That about wraps it up for my first — of hopefully many — posts on ‘ved.’ In the months to come, Moz will be collecting Google referral string data on a great number of SERPs for various keywords. We plan to unleash our data hound  to sniff out the most useful elements. In the meantime, I would like to use this post as a place for the hacking to begin and the sharing of your thoughts in the comments. Dig in! Sign up for The Moz Top 10 , a semimonthly mailer updating you on the top ten hottest pieces of SEO news, tips, and rad links uncovered by the Moz team. Think of it as your exclusive digest of stuff you don’t have time to hunt down but want to read!

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Decoding Google’s Referral String (or, how I surviVED Secure Search)

Back to the Future: Forecasting Your Organic Traffic

Posted by Dan Peskin This post was originally in YouMoz , and was promoted to the main blog because it provides great value and interest to our community. The author’s views are entirely his or her own and may not reflect the views of SEOmoz, Inc. Great Scott! I am finally back again for another spectacularly lengthy post, rich with wonderful titles, and this time – statistical goodness. It just so happens, that in my past short-lived career, I was a Forecast Analyst (not this kind ). So today class, we will be learning about the importance of forecasting organic traffic and how you can get started. Let’s begin our journey. Forecasting is Your Density. I Mean, Your Destiny Why should I forecast? Besides the obvious answer – it’s f-ing cool to predict the future, there are a number of benefits for both you and your company. Forecasting adds value in both an agency and in-house setting. It provides a more accurate way to set goals and plan for the future, which can be applied to client projects, internal projects, or overall team/dept. strategy. Forecasting creates accountability for your team. It allows you to continually set goals based on projections and monitor performance through forecast accuracy (Keep in mind that exceeding goals is not necessarily a good thing, which is why forecast accuracy is important. We will discuss this more later). Forecasting teaches you about inefficiencies in your team, process, and strategy. The more you segment your forecast, the deeper you can dive into finding the root of the inaccuracies in your projections. And the more granular you get, the more accurate your forecast, so you will see that segmentation is a function of accuracy (assuming you continually work to improve it). Forecasting is money. This is the most important concept of forecasting, and probably the point in where you decided that you will read the rest of this article. The fact that you can improve inefficiencies in your process and strategy through forecasting, means you can effectively increase ROI. Every hour and resource allocated to a strategy that doesn’t deliver results can be reallocated to something that proves to be a more stable source of increased organic traffic. So finding out what strategies consistently deliver the results you expect, means you’re investing money into resources that have a higher probability of delivering you a larger ROI. Furthermore, providing accurate projections, whether it’s to a CFO, manager, or client, gives the reviewer a more compelling reason to invest in the work that backs the forecast. Basically, if you want a bigger budget to work with, forecast the potential outcome of that bigger budget and sell it. Sell it well. Okay. Flux Capacitor, Fluxing. Forecast, Forecasting? I am going to make the assumption that everyone’s DeLorean is in the shop, so how do we forecast our organic traffic? There are four main factors to account for in an organic traffic forecast: historical trends, growth, seasonality, and events. Historical data is always the best place to start and create your forecast. You will want to have as many historical data points as possible, but the accuracy of the data should come first. Determining the Accuracy of the Data Once you have your historical data set, start analyzing it for outliers . An outlier to a forecast is what Biff is to George McFly, something you need to punch in the face and then make wash your car 20 years in the future. Well something like that. The quick way to find outliers is to simply graph your data and look for spikes in the graph. Each spike is associated with a data point, which is your outlier, whether it spikes up or down. This way does leave room for error, as the determination of outliers is based on your judgement and not statistical significance. The long way is much more fun and requires a bit of math. I’ll provide some formula refreshers along the way. Calculating the mean and the standard deviation of your historical data is the first step. Mean Standard Deviation   Looking at the standard deviation can immediately tell you whether you have outliers or not. The standard deviation tells you how close your data falls near the average or mean, so the lower the standard deviation, the closer the data points are to each other. You can go a step further and set a rule by calculating the coefficient of variation (COV). As a general rule, if your COV is less than 1, the variance in your data is low and there is a good probability that you don’t need to adjust any data points. Coefficient of Variation (COV) If all the signs point to you having significant outliers, you will now need to determine which data points those are. A simple way to do this is calculate how many standard deviations away from the mean your data point is. Unfortunately, there is no clear cut rule to qualify an outlier with deviations from the mean. This is due to the fact that every data set is distributed differently. However, I would suggest starting with any data point that is more than one deviation from the mean. Making your decision about whether outliers exist takes time and practice. These general rules of thumb can help you figure it out, but it really relies on your ability to interpret the data and be able to understand how each data point affects your forecast. You have the inside knowledge about your website, your equations and graphs don’t. So put that to use and start making your adjustments to your data accordingly. Adjusting Outliers Ask yourself one question: Should we account for this spike? Having spikes or outliers is normal, whether you need to do anything about it is what you should be asking yourself now. You want to use that inside knowledge of yours to determine why the spike occurred, whether it will happen again, and ultimately whether it should accounted for in your future forecast. In the case that you don’t want to account for an outlier, you will need to accurately adjust it down or up to the number it would have been without the event that caused the anomaly. For example, let’s say you launched a super original infographic about the Olympics in July last year that brought your site an additional 2,000 visits that month. You may not want to account for this as it will not be a recurring event or maybe it fails to bring qualified organic traffic to the site (if the infographic traffic doesn’t convert, then your revenue forecast will be inaccurate). So the resulting action would be to adjust the July data point down 2,000 visits. On the flipside, what if your retail electronics website has a huge positive spike in November due to Black Friday? You should expect that rise in traffic to continue this November and account for it in your forecast. The resulting action here is to simply leave the outlier alone and let the forecast do it’s business (This is also an example of seasonality which I will talk about more later). Base Forecast When creating your forecast, you want to create a base for it before you start incorporating additional factors into it. The base forecast is usually a flat forecast or a line straight down the middle of your charted data. In terms of numbers, this can be simply be using the mean for every data point. The line down the middle of the data follows the trend of the graph, so this would be the equivalent of the average but accounting for slope too. Excel provides a formula which actually does this for you: =FORECAST( x, known_y’s,known_x’s) Given the historical data, excel will output a forecast based on that data and the slope from the starting point to end point. Dependent on your data, your base forecast could be where you stop, or where you begin developing an accurate forecast. Now how do you improve your forecast? It’s a simple idea – account for anything and everything the data might not be able to account for. Now you don’t need to go overboard here. I would draw the line well before you start forecasting the decrease in productivity on Fridays due to beer o clock. I suggest accounting for three key factors and accounting for them well; growth, seasonality, and events. Growth You have to have growth. If you aren’t planning to grow anytime soon, then this is going to be a really depressing forecast. Including growth can be as simple as adding 5% month over month, due to a higher level estimate from management, or as detailed as estimating incremental search traffic by keyword from significant ranking increases. Either way, the important part is being able to back your estimates with good data and know where to look for it. With organic traffic, growth can come from a number of sources but these are a couple key components to consider: Are you launching new products? New products means new pages, and dependent on your domain’s authority and your internal linking structure, you can see an influx of organic traffic. If you have analyzed the performance of newly launched pages, you should be able to estimate on average what percentage of search traffic from relevant and target keywords they can bring over time. Using Google Webmaster Tools CTR data and the Adwords Tool for search volume are your best bet to acquire the data you need to estimate this. You can then apply this estimate to search volumes for the keywords that are relevant to each new product page and determine the additional growth in organic traffic that new product lines will bring. Tip: Make sure to consider your link building strategies when analyzing past product page data. If you built links to these pages over the analyzed time period, then you should plan on doing the same for the new product pages. What ongoing SEO efforts are increasing? Did you get a link building budget increase? Are you retargeting several key pages on your website? These things can easily be factored in, as long as you have consistent data to back it up. Consistency in strategy is truly an asset, especially in the SEO world. With the frequency of algorithm updates, people tend to shift strategies fairly quickly. However, if you are consistent, you can quantify the results of your strategy and use it improve your strategy and understand its effects on the applied domain. The general idea here is that if you know historically the effect of certain actions on a domain, then you can predict how relative changes to the domain will affect the future (given there are no drastic algorithm updates). Let’s take a simple example. Let’s say you build 10 links to a domain per month and the average Page Authority is 30 and Domain Authority is 50 for the targeted pages and domain when you started. Over time you see as a result, your organic traffic increase by 20% for the pages you targeted on this campaign. So if your budget increases and allows you to apply the same campaign to other pages on the website, you can estimate an increase in organic traffic of 20% to those pages. This example assumes the new target pages have: Target keywords with similar search volumes Similar authority at prior to the campaign start Similar existing traffic and ranking metrics Similar competition While this may be a lot to assume, this is for the purpose of the example. However, these are things that will need to be considered and these are the types of campaigns that should be invested in from a SEO standpoint. When you find a strategy that works, repeat it and control the factors as much as possible. This will provide for an outcome that is the least likely to diverge from expected results. Seasonality To incorporate seasonality into a organic traffic forecast, you will need to create seasonal indices for each month of the year. A seasonal index is an index of how that month’s expected value relates to the average expected value. So in this case, it would be how each month’s organic traffic compares with average or mean monthly organic traffic. So let’s say your average organic traffic is 100,000 visitors per month and your adjusted traffic for last November was 150,000 visitors, then your index for November is 1.5. In your forecast you simply multiply by this weight for the corresponding index month. To calculate these seasonal indices, you need data of course. Using adjusted historical data is the best solution, if you know that it reflects the seasonality of the website’s traffic well. Remember all that seasonal search volume data the Adwords tool provides? That can actually be put to practical use! So if you haven’t already, you should probably get with the times and download the Adwords API excel plugin from SEOgadget (if you have API access). This can make gathering seasonal data for a large set of keywords quick and easy. What you can do here, is gather data for all the keywords that drive your organic traffic, aggregate it, and see if the trends in search align with the seasonality you are observing in your adjusted historical data. If there is a major discrepancy between the two, you may need to dig deeper into why or shy away from accounting for it in your forecast. Events This one should be straightforward. If you have big events coming up, find a way to estimate their impact on your organic traffic. Events can be anything from a yearly sale, to a big piece of content being pushed out, or a planned feature on a big media site. All you have to do here is determine the expected increase in traffic from each event you have planned. This all goes back to digging into your historical data. What typically happens when you have a sale? What’s the change in traffic when you launch a huge content piece? If you can get an estimate of this, just add it to the corresponding month when the event will take place. Once you have this covered, you should have the last piece to a good looking forecast. Now it’s time to put it to the test. Forecast Accuracy So you have looked into your crystal ball and finally made your predictions, but what do you do now? Well the process of forecasting is a cycle and you now need to measure the accuracy of your predictions. Once you have the actuals to compare to your forecast, you can measure your forecast accuracy and use this to determine whether your current forecasting model is working. There is a basic formula you can use to compare your forecast to your actual results, which is the mean absolute percent error (MAPE): This formula requires you to calculate the mean of the absolute percent error for each time period, giving you your forecast accuracy for the total given forecast period. Additionally, you will want to analyze your forecast accuracy for just a single period if your forecast accuracy is low. Looking at the percent error month to month will allow you to pin point where the largest error in your forecast is and help you determine the root of the problem. Keep in mind that accuracy is crucial if organic traffic is a powerful source of product revenue for your business. This is where exceeding expectations can be a bad thing. If you exceed forecast, this can result in stock outs on products and a loss in potential revenue. Consider the typical online consumer, do you think they will wait to purchase your product on your site if they can find it somewhere else? Online shoppers want immediate results, so making sure you can fulfil their order makes for better customer service and less bounces on product pages (which can affect rank as we know).   Top result for this query is out of stock, which will not help maintain that position in the long term. Now this doesn’t mean you should over forecast. There is a price to pay on both ends of the spectrum. Inflating your forecast means you could be bringing in excess inventory as it ties to product expectations. This can bring in unnecessary inventory expenses such as increased storage costs and tie up cash flow until the excess product is shipped. And dependent on product life cycles, continuing this practice can lead to an abundance of obsolete product and huge financial problems. So once you have measured your forecast to actuals and considered the above, you can repeat the process more accurately and refine your forecast! Well this concludes our crash course in forecasting and how to apply it to organic traffic. So what are you waiting for? Start forecasting! Oh and here is a little treat to get you started. Are you telling me you built a time machine…in Excel? Well no, Excel can’t help you time travel, but it can help you forecast. The way I see it, if you’re gonna build a forecast in Excel, why not do it in style? I decided that your brain has probably gone to mush by now, so I am going to help you on your way to forecasting until the end of days. I am providing a stylish little excel template that has several features, but I warn you it doesn’t do all the work. It’s nothing to spectacular, but this template will put you on your way to analyzing your historical data and building your forecast. Forecasting isn’t an exact science, so naturally you need to do some work and make the call on what needs to be added or subtracted to the data. What this excel template provides: The ability to plug in the last two years of monthly organic traffic data and see a number of statistical calculations that will allow you to quickly analyze your historical data. Provides you with the frequency distribution of your data. Highlights the data points that are more than a standard deviation from the mean. Provides you with some metrics we discussed (mean, growth rate, standard deviation, etc). Oh wait there’s more? Yes. Yes. Yes. This simple tool will graph your historical and forecast data, provide you with a base forecast, and a place to easily add anything you need to account for in the forecast. Lastly, for those who don’t have revenue data tied to Analytics, it provides you with a place to add your AOV and Average Conversion Rate to estimate future organic revenue as well. Now go have some fun with it . ________________________________________________________________________________________ Obviously we can’t cover everything you need to know about forecasting in a single blog post. That goes both from a strategic and mathematical standpoint. So let me know what you think, what I missed, or if there are any points or tools that you think are applicable for the typical marketer to add to their skillset and spend some time learning. Sign up for The Moz Top 10 , a semimonthly mailer updating you on the top ten hottest pieces of SEO news, tips, and rad links uncovered by the Moz team. Think of it as your exclusive digest of stuff you don’t have time to hunt down but want to read!

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Back to the Future: Forecasting Your Organic Traffic