Showing posts with label this. Show all posts
Showing posts with label this. Show all posts

Computer respond to this email



Machine Intelligence for You

What I love about working at Google is the opportunity to harness cutting-edge machine intelligence for users’ benefit. Two recent Research Blog posts talked about how we’ve used machine learning in the form of deep neural networks to improve voice search and YouTube thumbnails. Today we can share something even wilder -- Smart Reply, a deep neural network that writes email.

I get a lot of email, and I often peek at it on the go with my phone. But replying to email on mobile is a real pain, even for short replies. What if there were a system that could automatically determine if an email was answerable with a short reply, and compose a few suitable responses that I could edit or send with just a tap?
Some months ago, Bálint Miklós from the Gmail team asked me if such a thing might be possible. I said it sounded too much like passing the Turing Test to get our hopes up... but having collaborated before on machine learning improvements to spam detection and email categorization, we thought we’d give it a try.

There’s a long history of research on both understanding and generating natural language for applications like machine translation. Last year, Google researchers Oriol Vinyals, Ilya Sutskever, and Quoc Le proposed fusing these two tasks in what they called sequence-to-sequence learning. This end-to-end approach has many possible applications, but one of the most unexpected that we’ve experimented with is conversational synthesis. Early results showed that we could use sequence-to-sequence learning to power a chatbot that was remarkably fun to play with, despite having included no explicit knowledge of language in the program.

Obviously, there’s a huge gap between a cute research chatbot and a system that I want helping me draft email. It was still an open question if we could build something that was actually useful to our users. But one engineer on our team, Anjuli Kannan, was willing to take on the challenge. Working closely with both Machine Intelligence researchers and Gmail engineers, she elaborated and experimented with the sequence-to-sequence research ideas. The result is the industrial strength neural network that runs at the core of the Smart Reply feature we’re launching this week.

How it works

A naive attempt to build a response generation system might depend on hand-crafted rules for common reply scenarios. But in practice, any engineer’s ability to invent “rules” would be quickly outstripped by the tremendous diversity with which real people communicate. A machine-learned system, by contrast, implicitly captures diverse situations, writing styles, and tones. These systems generalize better, and handle completely new inputs more gracefully than brittle, rule-based systems ever could.
Diagram by Chris Olah
Like other sequence-to-sequence models, the Smart Reply System is built on a pair of recurrent neural networks, one used to encode the incoming email and one to predict possible responses. The encoding network consumes the words of the incoming email one at a time, and produces a vector (a list of numbers). This vector, which Geoff Hinton calls a “thought vector,” captures the gist of what is being said without getting hung up on diction -- for example, the vector for "Are you free tomorrow?" should be similar to the vector for "Does tomorrow work for you?" The second network starts from this thought vector and synthesizes a grammatically correct reply one word at a time, like it’s typing it out. Amazingly, the detailed operation of each network is entirely learned, just by training the model to predict likely responses.

One challenge of working with emails is that the inputs and outputs of the model can be hundreds of words long. This is where the particular choice of recurrent neural network type really matters. We used a variant of a "long short-term-memory" network (or LSTM for short), which is particularly good at preserving long-term dependencies, and can home in on the part of the incoming email that is most useful in predicting a response, without being distracted by less relevant sentences before and after.

Of course, theres another very important factor in working with email, which is privacy. In developing Smart Reply we adhered to the same rigorous user privacy standards we’ve always held -- in other words, no humans reading your email. This means researchers have to get machine learning to work on a data set that they themselves cannot read, which is a little like trying to solve a puzzle while blindfolded -- but a challenge makes it more interesting!

Getting it right

Our first prototype of the system had a few unexpected quirks. We wanted to generate a few candidate replies, but when we asked our neural network for the three most likely responses, it’d cough up triplets like “How about tomorrow?” “Wanna get together tomorrow?” “I suggest we meet tomorrow.” That’s not really much of a choice for users. The solution was provided by Sujith Ravi, whose team developed a great machine learning system for mapping natural language responses to semantic intents. This was instrumental in several phases of the project, and was critical to solving the "response diversity problem": by knowing how semantically similar two responses are, we can suggest responses that are different not only in wording, but in their underlying meaning.

Another bizarre feature of our early prototype was its propensity to respond with “I love you” to seemingly anything. As adorable as this sounds, it wasn’t really what we were hoping for. Some analysis revealed that the system was doing exactly what we’d trained it to do, generate likely responses -- and it turns out that responses like “Thanks", "Sounds good", and “I love you” are super common -- so the system would lean on them as a safe bet if it was unsure. Normalizing the likelihood of a candidate reply by some measure of that responses prior probability forced the model to predict responses that were not just highly likely, but also had high affinity to the original message. This made for a less lovey, but far more useful, email assistant.

Give it a try

We’re actually pretty amazed at how well this works. We’ll be rolling this feature out on Inbox for Android and iOS later this week, and we hope you’ll try it for yourself! Tap on a Smart Reply suggestion to start editing it. If it’s perfect as is, just tap send. Two-tap email on the go -- just like Bálint envisioned.



* This blog post may or may not have actually been written by a neural network.?
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This day in history the first tweet

On March 21 2006 Jack Dorsey sent the very first tweet. Like many tweets not especially informative and presumable Jack didnt have many, if any, followers. Twitter was opened to the public that July and had its first major success at the South by Southwest (SXSW) conference in 2007, shortly after it had been made into a company. And the rest< as they say, is history. You can follow me and this blog @driwatson

from The Universal Machine http://universal-machine.blogspot.com/

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This is how Game of Thrones will end

This is an "off topic" post, but like many Ive become addicted to Game of Thrones and have spent some time trying to figure out how it may end and I think Ive cracked it. Im going to share my theory with you. Although it seems that Daenerys Targaryen wants to claim the 7 Kingdoms for herself she has shown that every time she comes across slaves she frees them and she abhors suffering and oppression. Her growing army fights for her as free men because they want to, not because they are her subjects. In the North the Wildlings are free, they bend the knee to no Lord. So Heres what I think will happen (note: I cant be precise on the detail but Im sure of the general theme). The surviving Starks, led by Bran, with magical Warg powers, will defeat the White Walkers. But to do this theyll need to team up with the Wildlings. I suspect Jon Snow will be instrumental in forming that allegiance. Meanwhile Daenerys and her army will attack the south. Eventually a combination of the two "free" armies will defeat the Lanister, Tyrel, Frey, Baratheon, et al Lords. The point you need to understand here is that this is a revolution. Free people are overturning the corrupt, decadent, self-serving, self-appointed nobility. Instrumental in this will be various characters of common birth who have no allegiance to a Lord, or who have come to believe their Lords are corrupt: Davos the Onion Knight (a smuggler made good), The Hound (Sandor Clegane), Gendry (the bastard of Robert Baratheon). I also think that Tyrion Lanister and Arya Stark have shown commitment to the oppressed. I dont know if any of these characters will survive but they will all fight for the revolution. The final ending will be at the Iron Throne, just as we think Daenerys Targaryen is about to claim the thrown of the 7 kingdoms she will command that one of her dragons (maybe all three if they still survive) melt it down with dragonfire. Shell then give an uplifting speech on how now all people are free. The End. The Game of Thrones will end with no throne. In support of my theory is the fact that the author George R.R. Martin was a conscientious-objector during the Vietnam War. He doesnt believe people should be forced to fight wars for the rich and powerful.

from The Universal Machine http://universal-machine.blogspot.com/
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