technology

Empathy and Chatbots: Not So Exclusive

Photo by Cam Morin on Unsplash

I have a friend who is a salesman in a high-end clothing store.  

I recently asked him how he does it so well.  He replied “Think of it like a sixth sense.  I can tell how a person is feeling right when they walk in.  In five seconds or less (usually less), I can tell if a customer is happy, stressed, or sad.”

How does he do it, though?

“I watch the way they walk.  I look at their eyes.  I can tell if they came in to browse, if they have something in mind, or if they want to talk.  And I know just how to respond so I can make my commission.”

Compare this with an experience I had recently with a chatbot created for a national florist.  A different friend had a good experience with it, and encouraged me to try it out.  It took me through my order and was quite efficient about it.  As I was taking out my credit card, it said “Have a colorful, fantastic day!

Ordinarily this would be considered friendly and perhaps even pleasing.  Of course, I had just spent the better part of the last hour looking through floral arrangements … for a funeral.

Sure, this came from a chatbot hosted on Facebook Messenger.  (edit:  Since this writing, the company has taken funeral arrangements off of the chatbot interface.  I did not contact them, so I do not think there is any causal relationship there.)  It had no idea what actions I might have taken on the company’s website. 

Chatbots are extremely popular right now, though, and more are coming.  Facebook released the chatbot API in April 2016; in June there were over 11,000 chatbots on that platform alone.  As of September there were over 30,000. 

These bots are supposed to represent artificial intelligence.  They don’t.  Right now they offer scripted, highly structured experiences. 

Wouldn’t it have been more appropriate for the florist’s chatbot to wish me condolences, after watching my shopping habits?  This should be a no-brainer for ecommerce folks.  It ought to be easy for a bot to see what I’m doing and respond accordingly

Of course this still wouldn’t be actual artificial intelligence.  The easiest way to make this happen would be through a script.  But still.  When chatbots actually do get intelligent, things are going to get awfully interesting.

What happens when a bot can examine a user’s actions, derive their most likely mindset, and be able to respond accordingly?

Perhaps more importantly, what will happen when they can empathize with us?


Understanding the Users

Photo by Mimi Thian on Unsplash

The term “digital body language” refers to a person’s combined digital activity.  My digital body language with the florist chatbot should have prompted an offering of condolences, as opposed to the cheery thanks it did offer.  It’s hugely important to understand what users do online, and not just record what they say.

So why should digital body language be so important to ecommerce vendors and chatbot developers?  Because digital interactions are based in large part on nonverbal communication, just like the real-world interactions we have every day.  When interacting with people in the physical world, we continually assess and process thousands of nonverbal cues.  Just a few examples include eye contact, gestures, tone of voice, and facial expressions.  As anyone who has gotten into an argument over text knows, it’s impossible to know what an interaction truly means unless we have access to these signals. 

In the burgeoning age of AI and chatbots, it’s just as important for a website — or a chatbot — to be able to interpret these signals.

Sadly, even as important as digital body language is, it is still underutilized by ecommerce.  For the most part, it remains an umbrella phrase, covering profile-based personalization and after-the-fact analysis.  Chatbot vendors have attempted to humanize their products, and they’ve as yet to succeed.  To date they have failed to assess, examine and fully parse the aspect of human communication that’s most powerful and meaningful:  The unspoken.

This is soon to change, however.  Utilizing and exploiting the power of digital body language is hardly science fiction.


Using Digital Body Language

Photo by Aziz Acharki on Unsplash

So what’s the breakthrough?  It might sound like it’s science fiction, but it’s not.  In the same way as we infer another’s nonverbal signals when we are in the offline world, we can use innovative customer experience technology that can infer the mindset of a customer.  In real time.

With the help of these advanced solutions, it is possible to keep track of real-time digital activities, such as hesitation, click-through rates, scrolling speed, browsing behavior, navigation use, and more.  This allows retailers to stay ahead of the curve and stop using behavioral models based solely on past behavior.  Instead they can capture, utilize and respond to actual current digital behavior.  They can quickly zoom in on the psychological needs of each shopper, in order to be more effective when assisting them with the decision-making and buying process.

Machine learning makes it possible to develop models which are able to assess and categorize the mindset each customer has when they visit the site.  As they assess this per shopper data, these algorithms would be able to categorize a user’s intent.  To do this, they would simply look at the user’s actions.  Then using this knowledge, a brand can alter their offerings. 


Where do Chatbots Come In?

Photo by Alexander Sinn on Unsplash

The answer is simple.  If we can look at a user’s behavior on a website, if we can quantify their mindset — and if we can then offer the user customization based on that data, if we can then personalize their experience — then we can code a chatbot that will do the same thing.

Looking at the example with the florist, their chatbot would determine that it should offer me condolences, based on the fact I was looking at funeral arrangements.  Not only that, but it would also assess the actions I took on the website — what page I visited, the movements of my mouse, which pages I looked at, which I passed over, which images I lingered on.  It would use this data to infer my mindset as I browse. 

A savvy chatbot would be able to see that I was simply looking at all the choices on the site, and offer to assist me by narrowing down my options.  It would also be able to tell if a more focused user came to the site, ready to buy.  It would then engage a subroutine to help guide them through the process as fast as possible.  It may also be able to tell if a user would be open to suggestions on an order:  For instance, if I might be willing to go with a wreath versus a more traditional arrangement.  Either way, it would then suggest some popular options.

Simply put, a well-coded chatbot would be able to do what my salesperson friend can do with his customers.  It would sense my mindset and be able to react to it.  It would behave in an empathic manner, even if it is not able to empathize in the human sense.

 My clothing store friend was not happy to hear about the information in this article.  “Next thing you know,” he said, “chatbots will be able to tell your waist size, just by looking at you.”

That’s just science fiction, though.  For now.

Posted by John Onorato in Chatbots, Portfolio, Technology, 0 comments
Empathy and Chatbots:  Not So Exclusive

Empathy and Chatbots: Not So Exclusive

by John Onorato

I have a friend who is a salesman in a high-end clothing store.  

I recently asked him how he does it so well.  “Think of it like a sixth sense,” he replied. “I can tell how a person is feeling right when they walk in.  In five seconds or less (usually less), I can tell if a customer is happy, stressed, or sad.”

How does he do it, though?

“I watch the way they walk.  I look at their eyes.  I can tell if they came in to browse, if they have something in mind, or if they want to talk.  And I know just how to respond so I can make my commission.”

Compare this with an experience I had recently with a chatbot created for a national florist.  A different friend had a good experience with it, and encouraged me to try it out.  It took me through my order and was quite efficient about it.  As I was taking out my credit card, it said “Have a colorful, fantastic day!”

Ordinarily this would be considered friendly and perhaps even pleasing.  Of course, I had just spent the better part of the last hour looking through floral arrangements … for a funeral.

Sure, this came from a chatbot hosted on Facebook Messenger.  (edit:  Since this writing, the company has taken funeral arrangements off of the chatbot interface.  I did not contact them, so I do not think there is any causal relationship there.)  It had no idea what actions I might have taken on the company’s website. 

Chatbots are extremely popular right now, though, and more are coming.  Facebook released the chatbot API in April 2016; in June there were over 11,000 chatbots on that platform alone.  As of September there were over 30,000. 

These bots are supposed to represent artificial intelligence.  They don’t.  Right now they offer scripted, highly structured experiences. 

Wouldn’t it have been more appropriate for the florist’s chatbot to wish me condolences, after watching my shopping habits?  This should be a no-brainer for ecommerce folks.  It ought to be easy for a bot to see what I’m doing and respond accordingly.

Of course this still wouldn’t be actual artificial intelligence.  The easiest way to make this happen would be through a script.  But still.  When chatbots actually do get intelligent, things are going to get awfully interesting.

What happens when a bot can examine a user’s actions, derive their most likely mindset, and be able to respond accordingly?

Perhaps more importantly, what will happen when they can empathize with us?

Understanding the Users

The term “digital body language” refers to a person’s combined digital activity.  My digital body language with the florist chatbot should have prompted an offering of condolences, as opposed to the cheery thanks it did offer.  It’s hugely important to understand what users do online, and not just record what they say.

So why should digital body language be so important to ecommerce vendors and chatbot developers? 

Because digital interactions are based in large part on nonverbal communication, just like the real-world interactions we have every day. 

When interacting with people in the physical world, we continually assess and process thousands of nonverbal cues.  Just a few examples include eye contact, gestures, tone of voice, and facial expressions.  As anyone who has gotten into an argument over text knows, it’s impossible to know what an interaction truly means unless we have access to these signals. 

In the burgeoning age of AI and chatbots, it’s just as important for a website — or a chatbot — to be able to interpret these signals.

Sadly, even as important as digital body language is, it is still underutilized by ecommerce.  For the most part, it remains an umbrella phrase, covering profile-based personalization and after-the-fact analysis.  Chatbot vendors have attempted to humanize their products, and they’ve as yet to succeed. 

To date they have failed to assess, examine and fully parse the aspect of human communication that’s most powerful and meaningful:  The unspoken.

This is soon to change, however.  Utilizing and exploiting the power of digital body language is hardly science fiction.

Using digital body language

So what’s the breakthrough?  It might sound like it’s science fiction, but it’s not.  In the same way as we infer another’s nonverbal signals when we are in the offline world, we can use innovative customer experience technology that can infer the mindset of a customer.  In real time.

With the help of these advanced solutions, it is possible to keep track of real-time digital activities, such as hesitation, click-through rates, scrolling speed, browsing behavior, navigation use, and more.  This allows retailers to stay ahead of the curve and stop using behavioral models based solely on past behavior.  Instead they can capture, utilize and respond to actual current digital behavior.  They can quickly zoom in on the psychological needs of each shopper, in order to be more effective when assisting them with the decision-making and buying process.

Machine learning makes it possible to develop models which are able to assess and categorize the mindset each customer has when they visit the site.  As they assess this per shopper data, these algorithms would be able to categorize a user’s intent.  To do this, they would simply look at the user’s actions.  Then using this knowledge, a brand can alter their offerings. 

Where do chatbots come in?

The answer is simple.  If we can look at a user’s behavior on a website, if we can quantify their mindset — and if we can then offer the user customization based on that data, if we can then personalize their experience — then we can code a chatbot that will do the same thing.

Looking at the example with the florist, their chatbot would determine that it should offer me condolences, based on the fact I was looking at funeral arrangements.  Not only that, but it would also assess the actions I took on the website — what page I visited, the movements of my mouse, which pages I looked at, which I passed over, which images I lingered on.  It would use this data to infer my mindset as I browse. 

A savvy chatbot would be able to see that I was simply looking at all the choices on the site, and offer to assist me by narrowing down my options.  It would also be able to tell if a more focused user came to the site, ready to buy.  It would then engage a subroutine to help guide them through the process as fast as possible.  It may also be able to tell if a user would be open to suggestions on an order:  For instance, if I might be willing to go with a wreath versus a more traditional arrangement.  Either way, it would then suggest some popular options.

Simply put, a well-coded chatbot would be able to do what my salesperson friend can do with his customers.  It would sense my mindset and be able to react to it.  It would behave in an empathic manner, even if it is not able to empathize in the human sense. 

My friend was not happy to hear about the information in this article.  “Next thing you know,” he said, “chatbots will be able to tell your waist size, just by looking at you.”

That’s just science fiction, though.  For now.

Posted by John Onorato in Blog, Technology, 0 comments
IP Phones can be Six-Figure Liabilities Just Waiting to Happen

IP Phones can be Six-Figure Liabilities Just Waiting to Happen

by John Onorato (ghostwritten for Toshiba)

Bob Foreman’s seven-person architecture firm is using the latest technology in IP phones.  Thinking they were safe and protected, they went about their business normally, until one day they opened their phone bill to see that they had run up a bill of $166,000 in one weekend.  Quite odd, given that no one was in the office at the time.

Based on the firm’s normal phone bill, it would have taken them 34 years to amass those charges legitimately, as stated in the complaint filed with the FCC.  But the charges weren’t a mistake. Malcontents had hacked into the phone system of the company, and routed the calls to premium-rate numbers in Somalia, the Maldives, and Gambia.

The Fraud
The firm, based in Norcross, Georgia, is one of the latest victims of an old fraud that’s found a new life, now that most corporate phone lines are IP-based.  This swindle is easier to pull off on the web and infinitely more profitable. The targets are largely SMBs, and cost global victims $4.73 billion last year. That’s up almost $1 billion from 2011, states the Communications Fraud Control Association.

Tier 1 carriers have anti-fraud systems meant to catch hackers before they mount false six-figure charges.  They can also afford to credit their customers for millions of dollars in fraudulent charges every year. SMBs, though, often use local carriers, that lack these sophisticated systems.  And worse yet, some of these carriers are leaving their customers to pay for the calls they didn’t make.

The Law
There are no laws that assist in this area, as there are no regulations that require carriers to reimburse defrauded customers the way credit card companies have to.  Lawmakers have occasionally taken up the torch, yet little progress has been made.

How It Works
Hackers lease premium-rate phone lines, typically used for psychic or sexual-chat lines, from one of many web-based services that charge callers over a dollar a minute, then give the lessee a cut.  In the US, these numbers can be easily identified by their 1-900 prefixes; furthermore, callers are told they will incur a higher rate. Elsewhere, though, such as in Estonia and Latvia, these numbers can be more difficult to spot.  The profit for the lessees might be as high as 24 cents for every minute a caller spends on the phone.

The black hats then crack a SMB’s phone system in order to make calls through it to their premium number.  This is typically done on a weekend, when nobody will notice. Using high-speed computers, hundreds of calls can be made simultaneously, thereby forwarding up to 220 minutes’ worth of calls a minute to the pay line.  Ultimately, the hackers get their cut, usually delivered through MoneyGram, wire transfer or Western Union.

This plan can be quite profitable, when executed well.  This is why premium rate resellers are on the rise. In 2009 there were 17; in 2013 there were 85, says Britain’s Yates Fraud Consulting.

What’s Being Done
The problem is moving fast, say many industry groups, yet they are still trying to tackle it.  One slow solution is to routinely input known fake “hot numbers” into a fraud management system, then sharing that with carriers so they can be blocked.

Catching the elusive hackers is hard, if only because the crime can cross up to three jurisdictions.  In 2011, the FBI worked with police in the Philippines to arrest four men who used the ploy to collect $2 million in fraudulent charges.  This money was funneled to a militant Saudi Arabian group that US officials believe underwrote the 2008 Mumbai terrorist bombings.

Bob Foreman’s firm has turned to the FCC, the FBI, and several other agencies for assistance, yet they are still on the hook for their $166,000 phone bill with their local carrier, TW Telecom.  It now includes $17,000 in termination fees and late charges. The telecom’s VP for corporate communications said that Foreman’s firm ought to have taken measures to ensure the security of its equipment.

Mr. Foreman responded that his firm didn’t even understand that this was a possible risk.

To avoid this happening to you, be sure to turn off call forwarding, and ensure there are strong passwords for international dialing systems as well as voicemail.  Treat your phones as Internet-connected machines, because that’s what they are. Hackers are already doing that. When you put a computer or an IP phone system on the Internet, it immediately gets probed for a weak point.

published link:
IP Phones can be Six-Figure Liabilities Just Waiting to Happen

Posted by John Onorato in Portfolio, Technology, 0 comments