Mobile Analytics: The Ongoing Revolution in Consumer Sense ......Mobile Analytics: The Ongoing...

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ARCHAN MISRA SINGAPORE MANAGEMENT UNIVERSITY Mobile Analytics: The Ongoing Revolution in Consumer Sense-making

Transcript of Mobile Analytics: The Ongoing Revolution in Consumer Sense ......Mobile Analytics: The Ongoing...

Page 1: Mobile Analytics: The Ongoing Revolution in Consumer Sense ......Mobile Analytics: The Ongoing Revolution in Consumer Sense-making . THE BIG PICTURE Unique Insights into Human Behavior

ARCHAN MISRA SINGAPORE MANAGEMENT UNIVERSITY

Mobile Analytics: The Ongoing

Revolution in Consumer Sense-making

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THE BIG PICTURE

Unique Insights into Human

Behavior in Urban Settings

=

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UNDERSTANDING CONSUMERS

Offline

•Scanner Data

•Consumer Panel Data

Online

•Clickstream Analysis

•Online Search Data

In-Store

•Movement & Navigation

•Activity Patterns & Insights

Long Term Purchase

Behavior

Medium-term Browsing

and Search Behavior

Real-time Adaptation

and Intervention

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CONSUMERS & SOCIAL INTERACTION

ONLINE BROWSING &

PURCHASE

PHYSICAL WORLD IN-

MALL/STORE BEHAVIOR

Collaborative

Filtering

Influence

Networks and

Propagation

Opinion &

Sentiment

Mining

Who are you

with?

What are you

doing together?

What parts of your

in-store browsing

are similar?

What are you (not)

interested in?

The Analogue?

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MOBILE: JUST A BETTER SHOPPING TOOL?

•Only user-initiated

actions & preferences

•No system-inferred

adaptation to implicitly

infer consumer

activities/preferences.

What’s Missing?

Reproduced from: M. Sneathen, MobileU 2013 Summit, Heartland Mobile Council

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Mobile Analytics & LiveLabs

Real-time Mobile

Sensing (Activity, Indoor location,

Browsing, SMS ...)

Real-time Individual and

Server Group Analytics (Dynamic Group Detection, Queuing,

Preferences)

Context-Driven

Intentions (Incentives, Promotions,

Recommendations ...)

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AN EXAMPLE OF LIVELABS’ CAPABILITIES

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LiveLabs Cloud Service

5 minutes later

Lifestyle

Company

If a group of 4 or more people exit

from Café after sitting down for 10

minutes, send SMS with a “Movie

Discount”

10 minutes later

4 in a group

sitting down at

a Café

4 in a group left

after 10 mins

LiveLabs software

continuously monitors

(location, activity, …)

Show this

notification and get

20% on all Movies

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RESEARCH THREADS

• Analytics: Queuing Detection

• Analytics: Group Detection

• In-Store Shopper Classification

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QUEUING 101

Japan

• Americans spend 4 years of their lives queuing.

• Average wait time at lunch in Singapore ~= 10+

mins

Western: Nothing is certain in life but death and taxes

Asian: Nothing is certain in life but death and QUEUING

Singapore

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QUEUING: 3-TIER DETECTION ARCHITECTURE

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QUEUING: CHALLENGES & SOLUTIONS

Variability in

Service Times

Concurrent HA

Detection

Start & End of Queue

Detection

Queue class Service Time (seconds)

Min. Ave. Max. Stdev.

Airport check-in (*1) 10.7 102.1 421.7 136.9

Airport boarding 4.3 7.3 10.9 1.7

Café and food court 10.3 32.9 77.0 17.9

Movie ticketing (*1) 5.0 7.9 11.5 2.3

*0: Numbers were based on serving (“dequeue”) intervals at the head of the queue.

*1: Multiple serving counters serving for one queue.

Queue detected at any profile

Location info.-based trigger

Leave detected

Queue

detection

Leave

detection

Disabled

“Food court” FrameLen=48sec

“Air. Checkin” FrameLen=120sec

“Air Boarding” FrameLen=10sec

Detection of signature activity of “Queue Leaving” e.g., “5 sec. continuous walking”

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RESEARCH THREADS

• Analytics: Queuing Detection

• Analytics: Group Detection

• In-Store Shopper Classification

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• Use spatiotemporal analytics to

identify individual vs. group

relationships among visitors. recommendations

• Identify group-based social

relationships.

• Predict future

locations/activities likely to be

visited/performed by

individual/group.

GROUP DETECTION ON INDOOR

MOVEMENT DATA

•Indoor Location Data

• With +-4/5 meter accuracy

•Dense, Indoor Urban Spaces

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Unified Metric Learning Framework

● Combines spatial coordinates, semantic location labels and activity profiles

Visualization of group and individual movement patterns

● Test on LiveLabs testbeds (SMU, Malls)

● Combine with observations of social media data

Real-time measurement of

● User indoor location

● User context (e.g., sitting, walking)

ALGORITHM & RESULT

Outperforms individual trajectory or

social media based group detection

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RESEARCH THREADS

• Analytics: Queuing Detection

• Analytics: Group Detection

• In-Store Shopper Classification

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THE PROBLEM: CLASSIFYING IN-STORE

SHOPPER BEHAVIOR

Using Mobile Sensing to

Infer

Consumer Preferences,

Interests, Behavior

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OVERALL CLASSIFICATION APPROACH

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THINGS NOT OBVIOUS

What are the MA labels?

(Different for different

stores?)

What are the HA

classifiers?

How many classifiers?

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AN INITIAL CONTROLLED STUDY

16 “shoppers” in a shopping mall in Singapore.

Provided with smartphone to collect sensor data.

Shadowed by observer for “ground truth”.

Given specific tasks corresponding to the HA labels.

A mix of male and female shoppers with varying physical

characteristics.

Pre and Post surveys to verify their shopping behavior profile.

2 Types of Stores: Clothing and Shoe/Accessories

Shopping episodes lasting 3 -10 mins.

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RESULTS ON HA CLASSIFICATION..INITIAL

Classifying Focused versus Confused customers:

Classification run on (i) Entire data set (ii) gender-specific data

0.00%

20.00%

40.00%

60.00%

80.00%

100.00%

Accu

racy

Grouping the dataset

Locomotive + Trajectory 71.43% 50% 100%

Only Locomotive 50% 66.67% 75%

M+F M F

Gender matters: It seems

that “focused” female

shoppers have a very

different characteristic

than “confused” female

shoppers.

Need a way to discover

and account for such

“attributes that matter”

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OPEN CHALLENGES

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Energy Overheads of

Continuous Sensing

Power Consumption

Observed on a Test

Samsung Galaxy S3

Improve Classification

Accuracy

Boxplot of Service

Time Estimates

(Queuing at F&B)

Privacy for Data

Need Anonymization and

Provenance Solutions!

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ACKNOWLEDGMENTS

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• LiveLabs Research Center: performed jointly with Assoc. Professor Rajesh BALAN (SMU)

• Queuing Research: Tadashi OKOSHI, Rahul MAJETHIA and Rajesh BALAN

• Group Detection Research: Siyuan Liu (CMU), Kasthuri Jeyarajah and Ramayya KRISHNAN (CMU),

• In-Store Shopping Research (jointly with IBM Research): Sougata SEN, Vigneshwaran SUBBARAJU, Dipanjan CHAKRABORY (IBM Research), Nilanjan Banerjee (IBM Research)