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Streaming Predictions of User Behavior in Real- Time Ethan DereszynskiEthan Dereszynski (Webtrends) Eric ButlerEric Butler (Cedexis) OSCON 2014.

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Presentation on theme: "Streaming Predictions of User Behavior in Real- Time Ethan DereszynskiEthan Dereszynski (Webtrends) Eric ButlerEric Butler (Cedexis) OSCON 2014."— Presentation transcript:

1 Streaming Predictions of User Behavior in Real- Time Ethan DereszynskiEthan Dereszynski (Webtrends) Eric ButlerEric Butler (Cedexis) OSCON 2014

2 How come you never see a headline like "Psychic Wins Lottery"? Jay Leno

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6 Enabling Interesting Predictions: Leverage Streaming Data

7 Streams Data websockets

8 Streams Data websockets 1 second

9 Streams

10 The best way to predict the future is to invent it. Alan Kay

11 Session Data  Each user “click” triggers a event  Event information captured by embedded tag

12 Session Data  A session is a string of events that all correspond to a single “visit” to a web site. Event 1Event 2

13 Session Data  A session end when a visitor leaves the site, closes the browser, or goes idle for 30 minutes Event 1Event 2Event 3

14 Learning from Streaming Data  Sessions provide examples of visit behavior  Not all sessions are equally likely -Many paths are rarely, if ever, taken -Frequent paths suggest common ways visitors behave on a given site  Learning Models of Visitor Behavior -Predict future actions -Provides a rich, new feature to identify/segment users -Identify users who have a common trajectory, or subtrajectory, through the web site -More than just a label -Behavior tells us something about how users achieve a goal on a web site

15 Event Data  JSON containing parameter/value pairs  Describes content of page (triggered by event)  Contains geo, device, referrer, etc.  50-100 parameters per page (event)

16 Challenges of Real Data  How do we describe each event? -Number of parameters per event can be large -Space of possible “events” is massive  Not all parameters are relevant to the user’s actions Client 1 Client 2 Number of events

17 About Topics Models  Each topic is a distribution over all words in the dictionary  Each document is generated by a mixture of topics D. Blei. Probabilistic topic models. Communications of the ACM, 55(4):77–84, 2012.

18 Abstraction Layer: Global/Local Topic – Latent Dirichlet Allocation (GLT-LDA)  Topic modeling technique for document clustering -Documents assigned to a single topic (instead of a mixture) -Global “Noise” topic explains redundant parameters  Clusters parameters into topics Distribution over parameter for topic k Distribution over noise parameters j th parameter in event i Noise-indicator for j th parameter in event i Topic distribution Noise rate for document i Topic label for document i

19 The Dataset  Collection of visitor traces, varying length … Event 1Event 2 Event t Visitor 1 Visitor 2 … Visitor n

20 Representing Behavior: Two Approaches  Enumerate the space of all possible paths and count -This is would require a very big table. -Most of the entries would be 0. -Not clear how to handle variable length visits  Hidden Markov Model (HMM) -Encodes visitor behavior in a probabilistic model -Calculates likelihood (or probability) of specific trajectories -Enables prediction of future actions a visitor may take on the site

21 The Hidden Markov Model  Site visit (emission) probabilities:  Stochastic state transitions: … ObservedHidden

22 The Hidden Markov Model Viewing Products Product Comparison Make Purchase.6.4  Visitors arrive at a site with an intention -The current intention specifies the probability they will take some action (trigger an event) -After the page is selected, the intention transitions to a new value (could be the same as the previous intention).7.3

23 The Hidden Markov Model Viewing Products.7.3.7.3 Product Comparison  Visitors arrive at a site with an intention -The current intention specifies the probability they will take some action (trigger an event) -After the page is selected, the intention transitions to a new value (could be the same as the previous intention).15.85 Make Purchase

24 Predictive Model: Learning and Runtime  Offline: -Session data is recorded into batch file for training -Trained with expectation maximization (EM) algorithm  Online : -The model used to predict specific visitor actions -CartAdd (add an item to the shopping cart) -Purchase (complete the purchase funnel) -Conditions predictions on observed actions the visitor has taken so far -Update predictions each time a new action is taken by the visitor. -Can be generalized to other predictive queries

25 Online Inference  Goal: Compute the probability that actions t+1 to t+5 contain at least a single purchase / cartAdd. t t+1t+2t+3t+4t+5 act. state

26 Online Inference  Goal: Compute the probability that actions t+1 to t+5 contain at least a single purchase / cartAdd. t t+1t+2t+3t+4t+5 act. state Prediction window

27 SequenceTimeAction t = 0 ? t = 1 ? t = 2 ? t = 3 ? t = 4 ?

28 SequenceTimeAction t = 019:38:47.182Z Landing: Clicked Ad t = 119:38:52.571Z ListView t = 219:39:01.941Z ProductView t = 3 ? t = 4 ? t = 5 ? t = 6 ? t = 7 ?

29 SequenceTimeAction t = 019:38:47.182Z Landing: Clicked Ad t = 119:38:52.571Z ListView t = 219:39:01.941Z ProductView t = 319:39:15.467Z Link t = 419:43:08.296Z Link t = 519:50:23.952Z ProductView t = 6 ? t = 7 ? t = 8 ? t = 9 ? t = 10 ?

30 SequenceTimeAction t = 019:38:47.182Z Landing: Clicked Ad t = 119:38:52.571Z ListView t = 219:39:01.941Z ProductView t = 319:39:15.467Z Link t = 419:43:08.296Z Link t = 519:50:23.952Z ProductView t = 619:50:47.646Z AddedToCart t = 7 ? t = 8 ? t = 9 ? t = 10 ? t = 11 ?

31 SequenceTimeAction t = 019:38:47.182Z Landing: Clicked Ad t = 119:38:52.571Z ListView t = 219:39:01.941Z ProductView t = 319:39:15.467Z Link t = 419:43:08.296Z Link t = 519:50:23.952Z ProductView t = 619:50:47.646Z AddedToCart t = 719:51:01.273Z ProductView t = 819:51:11.691Z Link t = 919:51:20.499Z Link t = 10 ? t = 11 ? t = 12 ? t = 13 ? t = 14 ?

32 SequenceTimeAction t = 019:38:47.182Z Landing: Clicked Ad t = 119:38:52.571Z ListView t = 219:39:01.941Z ProductView t = 319:39:15.467Z Link t = 419:43:08.296Z Link t = 519:50:23.952Z ProductView t = 619:50:47.646Z AddedToCart t = 719:51:01.273Z ProductView t = 819:51:11.691Z Link t = 919:51:20.499Z Link t = 1019:51:27.320Z ListView t = 1119:51:47.992Z ProductView t = 1219:52:04.216Z ListView t = 1319:52:11.398Z ProductView t = 1419:52:20.873Z Link t = 15 ? t = 16 ? t = 17 ? t = 18 ? t = 19 ?

33 SequenceTimeAction t = 019:38:47.182Z Landing: Clicked Ad t = 119:38:52.571Z ListView t = 219:39:01.941Z ProductView t = 319:39:15.467Z Link t = 419:43:08.296Z Link t = 519:50:23.952Z ProductView t = 619:50:47.646Z AddedToCart t = 719:51:01.273Z ProductView t = 819:51:11.691Z Link t = 919:51:20.499Z Link t = 1019:51:27.320Z ListView t = 1119:51:47.992Z ProductView t = 1219:52:04.216Z ListView t = 1319:52:11.398Z ProductView t = 1419:52:20.873Z Link t = 1519:54:18.080Z ViewedCart t = 1619:55:32.557Z StartCheckout t = 1719:57:13.246Z CompletedPurchase t = 1819:57:39.698Z ConfirmCheckout t = 19-24?

34 Streams Data websockets

35 Prediction Bolt Prediction Architecture: Validation Bolt Validates raw events from Kafka Augments events with prediction values and confidence labels

36 Prediction Bolt Event Stream Bolt Session Stream Bolt Prediction Architecture: Validation Bolt Validates raw events from Kafka Augments events with prediction values and confidence labels Dispatches individual events to Streams Dispatches full sessions to Streams websockets

37 Prediction BoltROC Bolt Event Stream Bolt Session Stream Bolt Prediction Architecture: Validation Bolt Validates raw events from Kafka Augments events with prediction values and confidence labels Dispatches individual events to Streams Dispatches full sessions to Streams Completed sessions are used to scored predictive model’s accuracy Model receives new thresholds for confidence labels websockets

38 Streams Demo

39 Results

40 Next Steps  Integrating visitor information across multiple visits  Automated re-training of predictive model -Adjust to seasonal and trend effects  Generative models for Anomaly Detection -What does a Likely/Unlikely session look like?  Richer models of visitor behavior -Hierarchical models for behavior

41 Questions? Thank you! Ethan.Dereszynski@webtrends.com elbpdx@gmail.com


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