luni, 18 februarie 2013

Damn Cool Pics

Damn Cool Pics


Online Dating Is a One Stop Shop for Love

Posted: 18 Feb 2013 06:50 PM PST

Wacky and disturbing online dating profiles.

























































Wrong Number Texts

Posted: 18 Feb 2013 05:14 PM PST

Selection of funny wrong number texts.





















































United States Postal Service Then and Now

Posted: 18 Feb 2013 11:20 AM PST

A Look at the Past and Present United States Postal Service..

Then
 

Now


Then


Now


Then


Now


Then


Now


Then


Now


Then


Now


Then


Now


Then


Now


Then


Now


Then


Now

Dwayne Johnson (The Rock) at Age 15

Posted: 18 Feb 2013 10:50 AM PST

 

 

 

Deep Inside a Study of 10,000 Adult Stars [Infographic]

Posted: 18 Feb 2013 10:43 AM PST

For the first time, a massive data set of 10,000 porn stars has been extracted from the world's largest database of adult films and performers. I've spent the last six months analyzing it to discover the truth about what the average performer looks like, what they do on film, and how their role has evolved over the last forty years.

Click on Image to Enlarge.
 
Via jonmillward

Meaningful SEO Metrics

Meaningful SEO Metrics


Meaningful SEO Metrics

Posted: 17 Feb 2013 05:38 PM PST

Posted by willcritchlow

This is a post of two halves. The first half runs through my thoughts on what makes for good metrics, while the second half focuses on a specific process for building appropriate reporting metrics for your individual situation.

Now, I’m a very numbers-driven person. I studied math(s) and once thought I was going to be an inventor until I realised that inventing = engineering, and I needed to be good at partial differential equations.

I find, however, that I’m often on the side of less measurement and quantitative decision-making. I like using editorial discretion in our conference programming and often “disagree” with the audience feedback(*). I like running split tests, but spend a lot of time aiming for the big wins (that are easy to spot with the most rudimentary measurement) over small percentage gains gleaned from detailed analysis.

(*) it’s interesting for me to think about what I mean by “disagreeing” with quantitative data from large groups of people. I think this may be called arrogance but at least I’m in good company.

My typical way of working is to spend a lot of energy thinking about hard problems - often in the abstract and often diving deep into whatever data I have to hand - before making the best decision I can in the messy real world. I am not as good as I should be at looping back around on my decisions afterwards and sense-checking them against the resulting outcomes.

I once asked a management consultant friend of mine if his company ever went back and checked their revenue/cost forecasts for companies that they did due diligence on. He looked at me as if I’d reordered his PowerPoint slides. When he got over the shock, he asked me what the point of that would be?

Taking that charitably, I think he was saying “the value is in the planning, not the plans.”

This all leads me into the first half of my post (note that, throughout, I'm going to use Distilled examples because I can be more transparent with our numbers than with those of any of our clients):


1. My views on good metrics

There is no one metric to rule them all

Of course, at a business level, cash rules everything. Run out of cash and you die. But as a marketer, you are so far removed from cash collection or burn rates (in most businesses) that this is not helpful.

Understanding the correct metric to use in any given situation is a large part of the skill of a consultant or marketer. I constantly find myself recommending different metrics in different situations.

The best metrics guide behaviour

People like investors and boards care about KPIs (Key Performance Indicators) that demonstrate the health of a company at a glance. These high-level metrics are good for busy executives and remote investors because they guide behaviour for those people:

  • A healthy KPI means “all is fine - go work on something else”
  • A sickly KPI means “this is where your focus should be”

An example of a company-level KPI for a profitable, growing company like Distilled that doesn’t have a bankroll of investor cash is a (conservative) projection of minimum cash levels over the coming months. Growing a company is cash-intensive, and one of the trickiest parts is funding growth out of operational cashflow. As long as the cash situation looks good, management time should be spent growing the company, but if the cash situation were ever to be poor, there would be nothing more important than resolving that situation.

When we get down into individual marketing campaigns, however, the kind of KPIs beloved of executives become useless. While an executive will focus on whether total online revenue is on-budget (which feeds into the operating model and cashflow mentioned above), knowing that we are above or below budget doesn’t change the day-to-day activities carried out by the marketing team.

Two things go wrong in marketing projects:

  • We don’t get as much done as we wanted to (blog posts shipped, contacts made, pages updated, development tickets completed).
  • Our efforts are less effective than we predicted they would be (not enough people read our posts, too many people ignore our emails, updated pages don’t drive the traffic or conversions we hoped, bug fixes don’t move the needle like they should).

So, for ourselves, I always advocate measuring activity and outcomes. Add some KPIs into the mix to communicate effectively with the execs and you are well on your way to an effective reporting pack.

But, connect to the money

The reason these metrics guide behaviour is that they are ultimately connected to the company’s financial objectives. It’s important that you can see the path from your metrics to those company-wide goals even if there are a bunch of assumptions needed to get there.

At Distilled, we recently started working with an experienced finance guy - his last gig was CFO at a public company - and had a very interesting few days connecting together our various financial reporting. At the end of it, we had a model that connected top-line revenue and costs in the P&L through non-cash balance sheet movements to cashflow. Of course, it bakes in a variety of assumptions (some of which have a critical impact on the outcome - like debtor days).

Even taking into consideration the importance of those key assumptions, it has revolutionised our management accounting to be able to see our financial data all connected together. Of course, we can then both run scenarios on the key assumptions and calibrate them against the real world.

The equivalent assumptions in online marketing are things like conversion rate and churn rate. Of course, in some projects these aren’t assumptions but rather variables - if you are directly seeking to change user behaviour - I’ll talk about this in a little more detail below.

Measure something even when you can’t measure what you’d like to

As the usercycle guys put it, “what happens here?”:

What happens here

The Lean Startup is a methodology designed (as the name implies) for startups, but there are a lot of analogies to marketing campaigns that rely on earned media. Typically, there is a long period of time during which a lot of action generates precious little in the way of end results before (hopefully) the curve starts trending upwards and ultimately (again, hopefully) surpasses any of the ways you could buy new customers.

Eric Ries talks about innovation accounting as a way of defining, measuring, and communicating progress during these long, lonely months. If you are going to succeed as an online marketer, you are going to have to master a similar set of skills.

Our goal during this phase is best described as “learning” - we want to find the things we should be doubling down on, the things to kill before they cost too much money and give ourselves enough evidence to quieten both our own inner demons and those hard-to-convince bosses and clients.

For startups, I’m a big fan of Dave McClure’s pirate metrics - so named after the acronym AARRR:

  • Acquisition
  • Activation
  • Retention
  • Referral
  • Revenue

He argues that your metrics should carefully measure each of these stages in the lifecycle of a customer and, importantly, that you should track them over cohorts of users (we use two-week long cohorts for DistilledU).

During the phase where you only have leading indicators, you may get executive pressure to forecast numbers. My approach here is to plug them into some simple assumptions that are easy to highlight and understand as being currently guess-work (“if these pages accrue search traffic at 80% of the average of similar pages, we will grow traffic X% year on year”).

Only worry about costs when it matters

Cost per acquisition (CPA) is a critical metric for paid marketing channels where the costs scale linearly (or super-linearly) with conversions. In particular, it passes the “actionability” test I described above. If your CPA is too high you can reduce bids, increase conversion rates or increase customer spend.

When we are considering channels with non-linear relationships between cost and conversions, it’s not easy to work out actions from average CPAs. It could be that you need to do more of what you were doing to benefit from flywheels and economies of scale. It could be that you need to throw away the plan and do something different because there is fundamentally no path from here to a profitable campaign.

Much of the artistry present in search and other earned marketing channels comes from the difficulties of working with this uncertainty.

Some tips that I’ve found useful in practice:

Look at the biggest picture you can

Look at the biggest picture you can - earned channels perform best over longer horizons, when multi-touch conversion is considered and lifetime value is counted appropriately. I would far rather be working out whether a five or six figure spend brought a big enough total uplift than deciding if an individual blog post (or even bigger piece of creative) has earned its keep.

Make sure you are considering the profit margin of an incremental sale

It is tempting to think about the marginal profit of a single conversion as:

  • Total profit (for this product) / number of sales

This is misleading any time you have fixed costs involved. Let’s take an extreme example from our business illustrate this:

  • We can easily imagine a situation of a conference that just beat breaking even with (say) 110 paying delegates paying £500 per head and fixed costs of (say) £50,000.
  • How much are another 10 delegates worth?
  • If we have valued incremental delegates as average profit, we think each delegate is worth £45 [((110 * 500) - 50,000) / 110] and so 10 more are worth £450.
  • In fact, in our example with only fixed costs, an extra 10 delegates would bring us additional profits of £5,000 - more than 10x more.

In our own business, I tell anyone working with marketing to consider our whole business as 100% gross margin:

  • In DistilledU, there are (essentially) no variable costs and so 100% gross margin is actually reasonable
  • In conferences, variable costs are dwarfed by the fixed costs and there is a hard-to-quantify benefit to having more people at a conference (in lifetime value, in network effects, in “noise” the conference makes on Twitter etc)
  • The way our consulting works - based almost entirely on full time permanent staff (many of whom have grown up with our business) - we either have no capacity to take on new work (hence no conversions) or there is little marginal cost to doing so

In reality, what I’m doing here is conflating two hard-to-measure things - the marginal cost of an incremental sale and the lifetime value of a sale above and beyond the first transaction.


2. Putting it all into practice

Here’s a step-by-step process to follow:

Understand how the business makes money

In order of increasing complexity:

  • Sells (near-)100% gross margin products online (including pageviews)
  • Sells fixed margin products online
  • Sells variable margin products online (this includes many subscription products where LTV depends directly on churn rate)
  • Micro-converts website visitors onto an easily-valued asset (e.g. an email list that sells advertising)
  • Generates leads online that are converted into sales offline
  • Micro-converts website visitors onto a less-easily-valued asset (e.g. an email list designed to generate consulting leads)

My favourite approach here is to make some simplifying assumptions that we can return to later to sense-check. Let’s think about some assumptions we can make in the most complex situation of building an email list for a consulting business:

  • Fixed micro-conversion rates over time (i.e. if I increase the number of visitors to a conversion page, sign-ups will go up in lockstep)
  • List growth will continue to turn into leads at the same rate as the past
  • The sales team will continue to close leads at the same rate and to the same size contracts as in the past

The goal of all of this work is to come up with KPIs at the micro-conversion level that correlate with the bigger-picture business goals. You need to trade off “small” (benefits = easier to influence, quicker to change, quicker to measure) against “close to the money” (benefits = speaking the language of management, real business benefits).

In the complex situations, I typically find that the sweet-spot is somewhere between visitor growth (to appropriate pages from a good channel) and micro-conversion growth (i.e. email list growth or contact form submissions).

In the simpler businesses, you can typically get closer to the real business metrics and simply work directly with revenue growth.

Build a simple model

This step is probably overkill in many client engagements but it’s important for in-house teams (and those in-house teams should be sharing their models with external teams in my opinion).

The output should be the simplest Excel model you can think of that captures the important business drivers. The important part here is really the planning process rather than the specific plans that come out of it.

Here’s the majority of the inputs I created when I was building the DistilledU business model before it had launched to the public (i.e. while it was still in private beta):

DistilledU model inputs

In our case, I pulled a bunch of numbers from Rand’s exceptionally transparent funding post and used them to benchmark against our visitor numbers and conversion rates.

The output was a single sheet Excel model that forecast revenue growth (most of which was to be driven by inbound means):

DistilledU model

In truth, pretty much every single assumption in my model is wrong - many of them by quite some distance (including our ability to generate conversions from paid advertising which has been even worse than we forecast). But the planning process was the valuable part, and although the real world is never as neat and tidy, we have ended up not a million miles away:

DistilledU model plus actuals

And now we know where the levers are that we need to pull to get the business results we want (one of which is conversion rate - we’ve already had one successful A/B test that nearly doubled conversion rate thanks to Optimizely - my favourite testing platform - but that’s a story for another day).

Estimate LTV, model CPA

Any serious discussion of measurement in marketing needs to understand the lifetime value (LTV) of a conversion. As discussed above, it can be hard enough to work out the immediate value of a micro-conversion, never mind the lifetime value.

Here are some techniques I have used to get to workable LTV numbers:

Assume static churn rates

If you are working with a subscription business, you can estimate LTV as:

monthly average revenue per user (ARPU) / monthly churn

So if you make $35/month / user on average and have a churn rate of 9%/month you can estimate LTV as $389

Make the numbers work with first purchase only

If you have an efficient enough marketing engine, you may get to beyond break-even on average on first purchase. In this case, you can build a reporting pack based on first purchase (sometimes with some hard-to-estimate factors in the other direction such as the variable margins mentioned above) and include notes of additional uplift available from subsequent / repeat purchases. This is the approach I’ve taken with big ticket / b2b services with long lead and delivery times - even if there are repeat purchases, they come so far in the future that they are irrelevant on the short-term planning horizon.

Average everything together - assuming all users are similar

If you have access to the right data, you can bucket together large sets of users and their purchases over some large time horizon (12-24 months is sensible for many online businesses), discount appropriately and get to a very rough average LTV. This misses many subtleties and variation in underlying LTV. It’s probably most effective with small-to-mid-ticket basket sizes that aren’t skewed by large repeat purchases in the way that, say, consulting services would be.

I’ve even used this approach to bucket together the “LTV” of email subscribers - many of whom purchase nothing. Doing some back-of-the-envelope calculations led me to a rough value of $6 per email subscriber per year for Distilled, for example. If I were to rely on this for paid marketing, I would need to keep a very close eye on the trends in this value as I artificially added subscribers from a different channel mix than that which grew the list to its current size.

Build a simple model

For mid-ticket purchases where basket sizes (and repeat purchasing behaviour) can vary over a wide range, I’ve found it best to build an explicit model based on a simple “propensity to convert again” in each time period after initial purchase.

For those working through this at home, you end up modelling a simple Poisson Process but you can get 80+% of the way there with a simple “x% of prior customers buy again in the subsequent quarter and y% in the quarter after that”. I tend to move towards longer time-periods when modelling this kind of process as purchases that fall close together might as well be counted simply as a larger basket.

Measure a combination of KPIs and lean metrics

So you now have access to a bunch of (estimates / modelled versions of) metrics like LTV, churn rate, CPA and have picked AARRR metrics that correlate with future success. Finally (we’re nearly there, I promise) you need to put this together. I suggest that you think about building two different reporting packs:

  • KPI pack with high level “total success” metrics that demonstrates the value of the work you are doing (this will need to contain leading indicators and extrapolations in the early days)
  • Project steering pack with actionable metrics that helps you, your team and your immediate point of contact / boss build a more effective campaign

KPI pack - most likely updated and reviewed quarterly

Brings together big numbers over long time periods - for example, it might contain:

  • Total LTV generated through your channels
    • % growth for new products
  • YoY traffic and revenue growth
  • 2+ year projections

You want to show graphs like this one (revenue from organic search to deep pages within DistilledU):

DistilledU organic revenue growth

Project steering pack - most likely reviewed monthly

Based on time-boxed or cohort-based data, focusses on metrics that give you deep insight into what you need to change to do even better in each of the key activities you are undertaking. This is likely to be highly custom to your specific business and marketing campaigns but here are some examples from campaigns I’ve been involved with recently:

Conversion rate optimisation:

  • Number of tests run
  • Total traffic to each variation
  • Conversions for each variation
  • Number of successful tests run
  • Total improvement in conversion rate

Outreach:

  • Total new contacts made
  • Responses (segmented by approach / type of contact)
  • Successful outcomes

User satisfaction:

  • % of new sign-ups who subsequently upgrade to paid
  • % of new paying members who engage with the service
  • churn rates

The table below shows (a section of) our cohort analysis for DistilledU and the bump in conversion rates to paying and engaging with the content when we announced that we were including all of our conference videos within DistilledU subscriptions:

DistilledU cohorts

This was a test - and initially one that we marketed only to our existing community. It wasn’t without its costs (we estimated that it would reduce video sales by $50-100k / year) but the success led to (a) keeping it in place and (b) a successful landing page A/B test that we’re going to write up on our own site soon.


I hope this meander through meaningful metrics has been useful to you. I’d love to hear your experiences in the comments and any thoughts you have on how I can improve any part of my approach.


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Seth's Blog : Planting, harvesting and your fair share

 

Planting, harvesting and your fair share

When there is scarcity, we worry a lot about getting our fair share—what goes to him doesn't go to me. The harvest becomes fraught with danger and competition.

When we worry more about planting, though, sharing the harvest gets a lot less complex.

Plant enough seeds and the scarcity eases. In fact, if you plant enough, you'll never have to think twice about the harvesting.


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duminică, 17 februarie 2013

Mish's Global Economic Trend Analysis

Mish's Global Economic Trend Analysis


Rebalancing in Spain Stage Two: 20,000 Iberia Airline Workers to Strike, 1,222 flights Cancelled in First five Days

Posted: 17 Feb 2013 06:44 PM PST

The "rebalancing" in Spain continues along the lines I have suggested, not as suggested by economists and those who think there is guaranteed future of the eurozone.

Via Google translate from El Economista, please consider Strike by Iberia Starts Monday
The nearly 20,000 workers are called from Iberia to strike on Monday in the first week of the 15 days of strikes called by unions CCOO, Asetma, USE, SITCPLA and CTA-Flight, which has forced airlines group to cancel a total of 1,222 flights in its first five days.

The 24-hour strikes, affecting ground staff and cabin crew (TCP), but which are called all employees of the airline, will be held from Monday 18 to Friday 22 February, from Monday 4 to Friday 8 March and Monday 18 (a public holiday in some ACs) to 22 next month. The pilots' union will join the strike in March.

Furthermore, the six unions representing 93% of the staff have organized concentrations for 18 and 22 February in all Spanish airports, coinciding with the start of the 15-day strike.

The Minister of Development, Ana Pastor, reiterated on Friday to unions and the management of Iberia make an "effort" to avoid the strike.

At a meeting in Development with representatives of both sides, Pastor said the government has "no authority" to intervene in the management of a private company, but said he does have the "legal obligation" and "direct responsibility" for ensuring connectivity in Spain, so it would intervene in the event that gave a "serious disruption of transportation", as it has done on other occasions.

Iberia has insisted that the 15-day strike "worsen" the situation of the company, so it has appealed to the groups to call off the strikes, considering that they only hurt customers, reputation and all his employed.

The airline has launched a contingency plan to cater to all passengers during the strike days and has flexible rates to facilitate the exchange or refund.

It has also reached agreements to protect customers with other airlines in order to have more choices, and has taken shape that has agreements with Oneworld alliance members, along with about a dozen companies.

Travelers concerned may Serviberia phone call 902 400 500 or 900 100 480 in Spain to change your flight or request a refund if the change is not interested.
Rebalancing the German Way Cannot Work

I am not taking the side of the union. Rather, I am pointing out that rebalancing the German way, by forcing still higher unemployment in Spain cannot and will not work.

At some point, and quite frankly I would have expected it by now, there is going to be mass resistance to efforts to balance the budget and productivity differences on the backs of workers.

Spanish Debt Grows by €146 Billion

I like working with Dough Short at Advisor Perspectives. He took my post Spanish Debt Grows by €146 Billion, Largest Ever Recorded; Debt-to-GDP Highest Since 1910 and added a couple of charts to it, stating in an email "I couldn't resist adding a postscript".

Here are the charts and commentary from Doug Short's reposting of Spanish Debt Grows by €146 Billion
Postscript from dshort: Here is an updated chart that I last posted about ten months ago highlighting the disconnect between the S&P 500 and Spain's IBEX 35. Fed policy has certainly been more successful in boosting US equities than the various strategies in Spain despite EU support. The divergence starts at approximately the date of Chairman Bernanke's speech at the Fed's 2010 annual symposium in Jackson Hole, Wyoming (August 27, 2010). Bernanke strongly hinted at the forthcoming Federal Reserve intervention that was subsequently initiated in November of 2010, namely, the second round of quantitative easing, aka QE2.



click on chart for sharper image

Here is a closer look at the correlation between the S&P 500 and Fed policy.



click on chart for sharper image
Rebalancing the Hard Way

Unemployment in Spain is over 26%. Youth unemployment is over 50%. Spain's budget deficit is still large and growing even though taxes have increased.

Rebalancing the German Way (the hard way), will require still  higher levels of unemployment and still lower wages, perhaps for a decade.

I suggest the patience of the Spanish population cannot possibly last that long.

Mike "Mish" Shedlock
http://globaleconomicanalysis.blogspot.com

Spanish Debt Grows by €146 Billion, Largest Ever Recorded; Debt-to-GDP Highest Since 1910

Posted: 17 Feb 2013 11:21 AM PST

Proof there is no rebalancing in Europe is easy to find. For example, El Pais reports Spanish Debt Grows by €146 Billion.

What follows is a Mish-modified translation of the above Google-translation.

Key Points

  • The public debt exceeded €882 billion at the end of 2012
  • Debt Grew by €146 Billion in one year
  • The increase in the first year of Prime Minister Mariano Rajoy is the largest ever recorded
  • Debt-to-GDP is highest since 1910 
  • Interest expense is at record high

The Government and the Bank of Spain debt figures are chilling. Government debt broke records in 2012. In the first year of the Government of Mariano Rajoy, debt skyrocketed to €882 billion, a one year increased of €146 Billion. Never in the economic history of Spain's general government debt had increased so much in a single year. In five years, the debt has increased by €500 Billion, Debt is one of the major drags on the recovery of the Spanish economy.

Debt to GDP



The increase in public debt in 2012 is the equivalent of more than 14 percentage points of gross domestic product (GDP). €882 billion is equivalent to between 83.5% and 84% of GDP. The government had forecast a ratio of 79.8% for the 2012 budget last July, but has since revised the figure upwards. In relative terms, debt-to-GDP is at highest debt level in more than a century, particularly since 1910, when the Spanish debt stood at 88% of GDP, according to a historical IMF data.

Despite cuts and tax increases, the government of Mariano Rajoy has been unable to significantly reduce the gap in the public accounts.

Skyrocketing Public Debt




click on chart for sharper image

Outstanding liabilities will probably exceed 100% of GDP at the end of the year, and there are more than €100 billion of a government debt in the hands of others (Social Security mainly). The €882 billion figure also does not include about €60 billion of debt owed by public enterprises.

A Troubling Context

To Emilio Ontiveros, president of Financial Analysts International (AFI), "the main problem is the payment of interest, because it is the most unproductive spending item possible and occurs in a country that has had to cut back in other areas and need to recover growth."

Spain had never spent so much money to pay only the interest on its debt: €38.66 billion. Financial expenses for the first time in history exceeded staff costs. "If you do not grow, you cannot pay your debts," said Ontiveros, who argues that Spain should have requested the bond purchase program prepared by the Bank Central Bank (ECB) to cut interest paid on Spanish debt markets, a mechanism for which the Government should ask before rescue its European partners. "The corollary of this is that Spain needs urgent measures aimed to reduce this expense," he says.

The average interest paid by the state's debt is 4.1% with an average maturity of 6.1 years, but this level of return that investors demand may grow by the economic downturn. Despite the truce that markets have given Spain, political tensions rose in Spain and Italy .

Jose Carlos Diez, chief economist Intermoney, warns that Spain fails in all the variables that serve to stabilize the debt: its economy does not grow, it pays a high interest rate and has primary deficit (prior to payment of interest on the debt). "This dynamic eventually leads to non-payment," he reflects.

End-Transalation

Note that last comment by Jose Carlos Diez, chief economist Intermoney "This dynamic eventually leads to non-payment."

Indeed!

More on Non-Rebalancing

Many economists see signs of stabilization. I see signs of delusion in economists.



Mike "Mish" Shedlock
http://globaleconomicanalysis.blogspot.com

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Benefits of Online Backup for Businesses

Posted: 17 Feb 2013 06:05 AM PST

Online backup is highly important for all kinds of businesses in order to attain effectiveness. It makes them rather cost effectives gradually and tends to be a good way to regain backup. This is often implied by businesses and serves to be simple and can be easily used in times...
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Top 7 Smartest iPhone Apps for Bloggers

Posted: 17 Feb 2013 05:51 AM PST

Most of the bloggers find it very difficult to manage their work while traveling. You can not keep your laptop turned on at all times to keep a check on things. However, you can easily check for updates on an iPhone. In this article, we will tell you about 7...
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