SlideShare a Scribd company logo
1 of 18
Download to read offline
On Human Information Processing in Information Retrieval
Alexandre Pereda-Baños (Eurecat), Ioannis Arapakis (Yahoo Labs), Miguel Barreda-Ángeles (Eurecat)
Human Information Processing (HIP)
§  We are not consciously aware of the
mental processes determining our
behaviour
§  Such unconscious influences reach
from basic or low-level mental
processes to high-level psychological
processes like motivations,
preferences, or complex behaviours
Human Information Processing (HIP)
§  The search for information is often led by a human brain
§  HIP is the field of study of experimental psychology and cognitive
neuroscience
Psychological Variables
§  The most interesting psychological variables and processes for
the study of IR are those related to attentional and emotional
phenomena
Selective attention
Cognitive
effort / arousal
Emotional reactions
Psychophysiological Measures of HIP
§  Standardised questionnaires for measuring
perceptual aspects, perceived usability, cognitive
working load, or affective
§  Online measures of user behavior and cognitive
states that are often unavailable for conscious
reports:
§  Behavioral
§  psychophysiological
Characteristics of Psychological Methods
§  Helpful in unveiling attentional and emotional reactions not
consciously available to us
§  Offer high temporal and spatial resolution
§  Robust against cognitive biases (e.g., social desirability bias*)
§  Always provide “honest” responses
§  No direct question to the subject, no direct answer
§  The information on the research questions has to be inferred
from the variations on the physiological signals and the way they
are related to psychological constructs
* The tendency of survey respondents to answer questions in a manner that will be viewed favorably by others.
Electrodermal Activity (EDA)
§  Changes in conductivity of the skin due to
activation of sweat glands by activation of the
autonomous nervous system (sympathetic
division)
§  Reflects general activation both for attentional
and emotional measures (in fact, it is calibrated
by having participants perform complex math
calculations)
§  It’s the basis of the “truth machine”, though not
as effective as fiction has led us to believe…
Electrodermal Activity (EDA)
§  Unconscious Physiological Effects of Search
Latency on Users and Their Click Behaviour
(SIGIR 2015)
•  Although the latency effects did not produce
changes on the self-reported data, their
impact on users’ physiological responses is
evident
•  Even when short latency increases of under
500ms are not consciously perceived, they
have sizeable physiological effects that can
contribute to the overall user experience
-0.4
-0.2
0.0
0.2
0.4
0.6
0.8
1.0
1.2
1.4
1 2 3 4 5 6 7 8 9 10
µS
Time after query onset (in seconds)
0ms
500ms
750ms
1000ms
15.0
15.2
15.4
15.6
15.8
16.0
16.2
16.4
16.6
16.8
17.0
0 1 2 3 4 5 6 7 8 9 10 11 12
µS
Time after stimulus onset (in seconds)
Electrodermal Activity (EDA)
§  A large-scale query log analysis ascertained the effect on the
clicking behaviour of users and revealed a significant decrease
in users’ engagement with the search result page, even at
small increases in latency
0
0.05
0.10
0.15
0.20
0 500 750 1000
0
0.5
1.0
1.5
2.0
Fractionofquerypairs
Click-more-on-fast/Click-more-on-slow
Latency difference (in milliseconds)
Click-more-on-fast
Click-more-on-slow
Ratio
0
0.05
0.10
0.15
0.20
0 500 750 1000
0
0,5
1.0
1.5
2.0
Fractionofquerypairs
Click-on-fast/Click-on-slow
Latency difference (in milliseconds)
Click-on-fast
Click-on-slow
Ratio
HIP Dynamics
§  Human information processing is both serial and parallel
§  Cognitive science has provided large amounts of evidence that
conscious information processing is mainly serial
§  When processing information in situations that require to shift the
focus of attention between different tasks and/or stimuli, this
results in an increase in the effort required to process that
information
§  Simon effect
HIP Dynamics (Serial Processing)
HIP Dynamics (Serial Processing)
§  Switching tasks
§  Try to read the word in odd trials
and name the color on even
trials!
Green
Red
Blue
Red
Green
Yellow
HIP Dynamics (Parallel Processing)
§  Simon effect: Hit the left key if there is an A on screen and the
right if there is a B
HIP Dynamics (Parallel Processing)
§  The effect is still there with crossed hands!
Multimodal Behaviour Analysis
§  Behaviour measurements in ecological conditions
§  Behaviour understanding through cameras and microphones
§  Aggregating various online measures gives an accurate picture
of the user’s experience
§  Robust real-time behavior analyses, information that can then be
used for the purpose of research on human behavior and user
experience
§  The opportunity is ripe to move beyond experimental laboratory
settings, in which response has been traditionally measures, into
real large-scale controlled studies
Conclusions
§  The use of neuro-physiological methods in IR research is
essential in order to obtain a complete picture of the mental
processes underlying user search behaviour
§  The collaboration between psychological and IR research can go
far beyond the application of sophisticated measuring
methodologies
§  Introduce actual knowledge on the dynamics of human
information processing into a real-world testing ground
§  The use of multimodal signals holds the promise of allowing
large-scale, controlled studies that will undoubtedly foster the
progress of both research fields
Thank you for your attention!
iarapakis
http://www.slideshare.net/iarapakis/sigir15-NeuroIR

More Related Content

Similar to SIGIR15-NeuroIR

Validation of i_motions¹_emotion_evaluation_system_embedded in_attention_tool...
Validation of i_motions¹_emotion_evaluation_system_embedded in_attention_tool...Validation of i_motions¹_emotion_evaluation_system_embedded in_attention_tool...
Validation of i_motions¹_emotion_evaluation_system_embedded in_attention_tool...Acuity ETS Limited
 
Emotion Detection Using Noninvasive Low-cost Sensors
Emotion Detection Using Noninvasive Low-cost SensorsEmotion Detection Using Noninvasive Low-cost Sensors
Emotion Detection Using Noninvasive Low-cost SensorsNicole Novielli
 
Georgetown Innovation Center for Biomedical Informatics Symposium Precision ...
 Georgetown Innovation Center for Biomedical Informatics Symposium Precision ... Georgetown Innovation Center for Biomedical Informatics Symposium Precision ...
Georgetown Innovation Center for Biomedical Informatics Symposium Precision ...Warren Kibbe
 
Data Analytics Project proposal: Smart home based ambient assisted living - D...
Data Analytics Project proposal: Smart home based ambient assisted living - D...Data Analytics Project proposal: Smart home based ambient assisted living - D...
Data Analytics Project proposal: Smart home based ambient assisted living - D...Tarun Swarup
 
Immersive Environments, Machine Learning, Neuroimaging, & Wearable Sensing Te...
Immersive Environments, Machine Learning, Neuroimaging, & Wearable Sensing Te...Immersive Environments, Machine Learning, Neuroimaging, & Wearable Sensing Te...
Immersive Environments, Machine Learning, Neuroimaging, & Wearable Sensing Te...Stanford University
 
Beyond Eye Tracking: Using User Temperature, Rating Dials, and Facial Analysi...
Beyond Eye Tracking: Using User Temperature, Rating Dials, and Facial Analysi...Beyond Eye Tracking: Using User Temperature, Rating Dials, and Facial Analysi...
Beyond Eye Tracking: Using User Temperature, Rating Dials, and Facial Analysi...Jennifer Romano Bergstrom
 
Human Activity Recognition using Smartphone's sensor
Human Activity Recognition using Smartphone's sensor Human Activity Recognition using Smartphone's sensor
Human Activity Recognition using Smartphone's sensor Pankaj Mishra
 
BackHome: Assisting and Telemonitoring People with Disabilities
BackHome: Assisting and Telemonitoring People with DisabilitiesBackHome: Assisting and Telemonitoring People with Disabilities
BackHome: Assisting and Telemonitoring People with DisabilitiesEloisa Vargiu
 
Cognitive Psychology, Learning and Memory for IGNOU students
Cognitive Psychology, Learning and Memory for IGNOU studentsCognitive Psychology, Learning and Memory for IGNOU students
Cognitive Psychology, Learning and Memory for IGNOU studentsPsychoTech Services
 
BayCHI April 2015 - Towards Smart Emotional Neuro Search Engines: An Extensio...
BayCHI April 2015 - Towards Smart Emotional Neuro Search Engines: An Extensio...BayCHI April 2015 - Towards Smart Emotional Neuro Search Engines: An Extensio...
BayCHI April 2015 - Towards Smart Emotional Neuro Search Engines: An Extensio...Nilo Sarraf
 
Programming Cognitive Technologies in Processing Language
Programming Cognitive Technologies in Processing LanguageProgramming Cognitive Technologies in Processing Language
Programming Cognitive Technologies in Processing LanguageArtur Gunia
 
Keynote@QUATIC - Recognizing Developer's Emotions: Advances and Open Challenges
Keynote@QUATIC - Recognizing Developer's Emotions: Advances and Open ChallengesKeynote@QUATIC - Recognizing Developer's Emotions: Advances and Open Challenges
Keynote@QUATIC - Recognizing Developer's Emotions: Advances and Open ChallengesNicole Novielli
 
NeuroscienceLaboratory__03_2016C
NeuroscienceLaboratory__03_2016CNeuroscienceLaboratory__03_2016C
NeuroscienceLaboratory__03_2016CValeria Trezzi
 
How can Big Data help upgrade brain care?
How can Big Data help upgrade brain care?How can Big Data help upgrade brain care?
How can Big Data help upgrade brain care?SharpBrains
 
201103 emotional impacts on digital media
201103 emotional impacts on digital media201103 emotional impacts on digital media
201103 emotional impacts on digital mediaJavier Gonzalez-Sanchez
 
NYAI #23: Using Cognitive Neuroscience to Create AI (w/ Dr. Peter Olausson)
NYAI #23: Using Cognitive Neuroscience to Create AI (w/ Dr. Peter Olausson)NYAI #23: Using Cognitive Neuroscience to Create AI (w/ Dr. Peter Olausson)
NYAI #23: Using Cognitive Neuroscience to Create AI (w/ Dr. Peter Olausson)Maryam Farooq
 
Brain–computer Interface
Brain–computer InterfaceBrain–computer Interface
Brain–computer InterfaceStudent
 

Similar to SIGIR15-NeuroIR (20)

Validation of i_motions¹_emotion_evaluation_system_embedded in_attention_tool...
Validation of i_motions¹_emotion_evaluation_system_embedded in_attention_tool...Validation of i_motions¹_emotion_evaluation_system_embedded in_attention_tool...
Validation of i_motions¹_emotion_evaluation_system_embedded in_attention_tool...
 
Emotion Detection Using Noninvasive Low-cost Sensors
Emotion Detection Using Noninvasive Low-cost SensorsEmotion Detection Using Noninvasive Low-cost Sensors
Emotion Detection Using Noninvasive Low-cost Sensors
 
Georgetown Innovation Center for Biomedical Informatics Symposium Precision ...
 Georgetown Innovation Center for Biomedical Informatics Symposium Precision ... Georgetown Innovation Center for Biomedical Informatics Symposium Precision ...
Georgetown Innovation Center for Biomedical Informatics Symposium Precision ...
 
Data Analytics Project proposal: Smart home based ambient assisted living - D...
Data Analytics Project proposal: Smart home based ambient assisted living - D...Data Analytics Project proposal: Smart home based ambient assisted living - D...
Data Analytics Project proposal: Smart home based ambient assisted living - D...
 
Immersive Environments, Machine Learning, Neuroimaging, & Wearable Sensing Te...
Immersive Environments, Machine Learning, Neuroimaging, & Wearable Sensing Te...Immersive Environments, Machine Learning, Neuroimaging, & Wearable Sensing Te...
Immersive Environments, Machine Learning, Neuroimaging, & Wearable Sensing Te...
 
Beyond Eye Tracking: Using User Temperature, Rating Dials, and Facial Analysi...
Beyond Eye Tracking: Using User Temperature, Rating Dials, and Facial Analysi...Beyond Eye Tracking: Using User Temperature, Rating Dials, and Facial Analysi...
Beyond Eye Tracking: Using User Temperature, Rating Dials, and Facial Analysi...
 
Human Activity Recognition using Smartphone's sensor
Human Activity Recognition using Smartphone's sensor Human Activity Recognition using Smartphone's sensor
Human Activity Recognition using Smartphone's sensor
 
Sigir15
Sigir15Sigir15
Sigir15
 
BackHome: Assisting and Telemonitoring People with Disabilities
BackHome: Assisting and Telemonitoring People with DisabilitiesBackHome: Assisting and Telemonitoring People with Disabilities
BackHome: Assisting and Telemonitoring People with Disabilities
 
Cognitive Psychology, Learning and Memory for IGNOU students
Cognitive Psychology, Learning and Memory for IGNOU studentsCognitive Psychology, Learning and Memory for IGNOU students
Cognitive Psychology, Learning and Memory for IGNOU students
 
Blue eyes
Blue eyesBlue eyes
Blue eyes
 
BayCHI April 2015 - Towards Smart Emotional Neuro Search Engines: An Extensio...
BayCHI April 2015 - Towards Smart Emotional Neuro Search Engines: An Extensio...BayCHI April 2015 - Towards Smart Emotional Neuro Search Engines: An Extensio...
BayCHI April 2015 - Towards Smart Emotional Neuro Search Engines: An Extensio...
 
Programming Cognitive Technologies in Processing Language
Programming Cognitive Technologies in Processing LanguageProgramming Cognitive Technologies in Processing Language
Programming Cognitive Technologies in Processing Language
 
Keynote@QUATIC - Recognizing Developer's Emotions: Advances and Open Challenges
Keynote@QUATIC - Recognizing Developer's Emotions: Advances and Open ChallengesKeynote@QUATIC - Recognizing Developer's Emotions: Advances and Open Challenges
Keynote@QUATIC - Recognizing Developer's Emotions: Advances and Open Challenges
 
NeuroscienceLaboratory__03_2016C
NeuroscienceLaboratory__03_2016CNeuroscienceLaboratory__03_2016C
NeuroscienceLaboratory__03_2016C
 
How can Big Data help upgrade brain care?
How can Big Data help upgrade brain care?How can Big Data help upgrade brain care?
How can Big Data help upgrade brain care?
 
201103 emotional impacts on digital media
201103 emotional impacts on digital media201103 emotional impacts on digital media
201103 emotional impacts on digital media
 
NYAI #23: Using Cognitive Neuroscience to Create AI (w/ Dr. Peter Olausson)
NYAI #23: Using Cognitive Neuroscience to Create AI (w/ Dr. Peter Olausson)NYAI #23: Using Cognitive Neuroscience to Create AI (w/ Dr. Peter Olausson)
NYAI #23: Using Cognitive Neuroscience to Create AI (w/ Dr. Peter Olausson)
 
Brain–computer Interface
Brain–computer InterfaceBrain–computer Interface
Brain–computer Interface
 
201500 Cognitive Informatics
201500 Cognitive Informatics201500 Cognitive Informatics
201500 Cognitive Informatics
 

More from Telefonica Research

A Price-Per-Attention Auction Scheme Using Mouse Cursor Information
A Price-Per-Attention Auction Scheme Using Mouse Cursor InformationA Price-Per-Attention Auction Scheme Using Mouse Cursor Information
A Price-Per-Attention Auction Scheme Using Mouse Cursor InformationTelefonica Research
 
Learning Efficient Representations of Mouse Movements to Predict User Attention
Learning Efficient Representations of Mouse Movements to Predict User AttentionLearning Efficient Representations of Mouse Movements to Predict User Attention
Learning Efficient Representations of Mouse Movements to Predict User AttentionTelefonica Research
 
User Behaviour Modelling - Online and Offline Methods, Metrics, and Challenges
User Behaviour Modelling - Online and Offline Methods, Metrics, and ChallengesUser Behaviour Modelling - Online and Offline Methods, Metrics, and Challenges
User Behaviour Modelling - Online and Offline Methods, Metrics, and ChallengesTelefonica Research
 
System and User Aspects of Web Search Latency
System and User Aspects of Web Search LatencySystem and User Aspects of Web Search Latency
System and User Aspects of Web Search LatencyTelefonica Research
 
SocInfo14 - On the Feasibility of Predicting News Popularity at Cold Start
SocInfo14 - On the Feasibility of Predicting News Popularity at Cold StartSocInfo14 - On the Feasibility of Predicting News Popularity at Cold Start
SocInfo14 - On the Feasibility of Predicting News Popularity at Cold StartTelefonica Research
 
CIKM 2014 - Understanding Within-Content Engagement through Pattern Analysis ...
CIKM 2014 - Understanding Within-Content Engagement through Pattern Analysis ...CIKM 2014 - Understanding Within-Content Engagement through Pattern Analysis ...
CIKM 2014 - Understanding Within-Content Engagement through Pattern Analysis ...Telefonica Research
 
SIGIR2014 - Impact of Response Latency on User Behavior in Web Search
SIGIR2014 - Impact of Response Latency on User Behavior in Web SearchSIGIR2014 - Impact of Response Latency on User Behavior in Web Search
SIGIR2014 - Impact of Response Latency on User Behavior in Web SearchTelefonica Research
 

More from Telefonica Research (7)

A Price-Per-Attention Auction Scheme Using Mouse Cursor Information
A Price-Per-Attention Auction Scheme Using Mouse Cursor InformationA Price-Per-Attention Auction Scheme Using Mouse Cursor Information
A Price-Per-Attention Auction Scheme Using Mouse Cursor Information
 
Learning Efficient Representations of Mouse Movements to Predict User Attention
Learning Efficient Representations of Mouse Movements to Predict User AttentionLearning Efficient Representations of Mouse Movements to Predict User Attention
Learning Efficient Representations of Mouse Movements to Predict User Attention
 
User Behaviour Modelling - Online and Offline Methods, Metrics, and Challenges
User Behaviour Modelling - Online and Offline Methods, Metrics, and ChallengesUser Behaviour Modelling - Online and Offline Methods, Metrics, and Challenges
User Behaviour Modelling - Online and Offline Methods, Metrics, and Challenges
 
System and User Aspects of Web Search Latency
System and User Aspects of Web Search LatencySystem and User Aspects of Web Search Latency
System and User Aspects of Web Search Latency
 
SocInfo14 - On the Feasibility of Predicting News Popularity at Cold Start
SocInfo14 - On the Feasibility of Predicting News Popularity at Cold StartSocInfo14 - On the Feasibility of Predicting News Popularity at Cold Start
SocInfo14 - On the Feasibility of Predicting News Popularity at Cold Start
 
CIKM 2014 - Understanding Within-Content Engagement through Pattern Analysis ...
CIKM 2014 - Understanding Within-Content Engagement through Pattern Analysis ...CIKM 2014 - Understanding Within-Content Engagement through Pattern Analysis ...
CIKM 2014 - Understanding Within-Content Engagement through Pattern Analysis ...
 
SIGIR2014 - Impact of Response Latency on User Behavior in Web Search
SIGIR2014 - Impact of Response Latency on User Behavior in Web SearchSIGIR2014 - Impact of Response Latency on User Behavior in Web Search
SIGIR2014 - Impact of Response Latency on User Behavior in Web Search
 

Recently uploaded

Artificial Intelligence In Microbiology by Dr. Prince C P
Artificial Intelligence In Microbiology by Dr. Prince C PArtificial Intelligence In Microbiology by Dr. Prince C P
Artificial Intelligence In Microbiology by Dr. Prince C PPRINCE C P
 
Call Us ≽ 9953322196 ≼ Call Girls In Mukherjee Nagar(Delhi) |
Call Us ≽ 9953322196 ≼ Call Girls In Mukherjee Nagar(Delhi) |Call Us ≽ 9953322196 ≼ Call Girls In Mukherjee Nagar(Delhi) |
Call Us ≽ 9953322196 ≼ Call Girls In Mukherjee Nagar(Delhi) |aasikanpl
 
Hubble Asteroid Hunter III. Physical properties of newly found asteroids
Hubble Asteroid Hunter III. Physical properties of newly found asteroidsHubble Asteroid Hunter III. Physical properties of newly found asteroids
Hubble Asteroid Hunter III. Physical properties of newly found asteroidsSérgio Sacani
 
Recombinant DNA technology (Immunological screening)
Recombinant DNA technology (Immunological screening)Recombinant DNA technology (Immunological screening)
Recombinant DNA technology (Immunological screening)PraveenaKalaiselvan1
 
Disentangling the origin of chemical differences using GHOST
Disentangling the origin of chemical differences using GHOSTDisentangling the origin of chemical differences using GHOST
Disentangling the origin of chemical differences using GHOSTSérgio Sacani
 
Botany 4th semester series (krishna).pdf
Botany 4th semester series (krishna).pdfBotany 4th semester series (krishna).pdf
Botany 4th semester series (krishna).pdfSumit Kumar yadav
 
A relative description on Sonoporation.pdf
A relative description on Sonoporation.pdfA relative description on Sonoporation.pdf
A relative description on Sonoporation.pdfnehabiju2046
 
Recombination DNA Technology (Nucleic Acid Hybridization )
Recombination DNA Technology (Nucleic Acid Hybridization )Recombination DNA Technology (Nucleic Acid Hybridization )
Recombination DNA Technology (Nucleic Acid Hybridization )aarthirajkumar25
 
Chemistry 4th semester series (krishna).pdf
Chemistry 4th semester series (krishna).pdfChemistry 4th semester series (krishna).pdf
Chemistry 4th semester series (krishna).pdfSumit Kumar yadav
 
GFP in rDNA Technology (Biotechnology).pptx
GFP in rDNA Technology (Biotechnology).pptxGFP in rDNA Technology (Biotechnology).pptx
GFP in rDNA Technology (Biotechnology).pptxAleenaTreesaSaji
 
Boyles law module in the grade 10 science
Boyles law module in the grade 10 scienceBoyles law module in the grade 10 science
Boyles law module in the grade 10 sciencefloriejanemacaya1
 
CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service 🪡
CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service  🪡CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service  🪡
CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service 🪡anilsa9823
 
G9 Science Q4- Week 1-2 Projectile Motion.ppt
G9 Science Q4- Week 1-2 Projectile Motion.pptG9 Science Q4- Week 1-2 Projectile Motion.ppt
G9 Science Q4- Week 1-2 Projectile Motion.pptMAESTRELLAMesa2
 
All-domain Anomaly Resolution Office U.S. Department of Defense (U) Case: “Eg...
All-domain Anomaly Resolution Office U.S. Department of Defense (U) Case: “Eg...All-domain Anomaly Resolution Office U.S. Department of Defense (U) Case: “Eg...
All-domain Anomaly Resolution Office U.S. Department of Defense (U) Case: “Eg...Sérgio Sacani
 
Grafana in space: Monitoring Japan's SLIM moon lander in real time
Grafana in space: Monitoring Japan's SLIM moon lander  in real timeGrafana in space: Monitoring Japan's SLIM moon lander  in real time
Grafana in space: Monitoring Japan's SLIM moon lander in real timeSatoshi NAKAHIRA
 
Labelling Requirements and Label Claims for Dietary Supplements and Recommend...
Labelling Requirements and Label Claims for Dietary Supplements and Recommend...Labelling Requirements and Label Claims for Dietary Supplements and Recommend...
Labelling Requirements and Label Claims for Dietary Supplements and Recommend...Lokesh Kothari
 
Green chemistry and Sustainable development.pptx
Green chemistry  and Sustainable development.pptxGreen chemistry  and Sustainable development.pptx
Green chemistry and Sustainable development.pptxRajatChauhan518211
 
STERILITY TESTING OF PHARMACEUTICALS ppt by DR.C.P.PRINCE
STERILITY TESTING OF PHARMACEUTICALS ppt by DR.C.P.PRINCESTERILITY TESTING OF PHARMACEUTICALS ppt by DR.C.P.PRINCE
STERILITY TESTING OF PHARMACEUTICALS ppt by DR.C.P.PRINCEPRINCE C P
 
Cultivation of KODO MILLET . made by Ghanshyam pptx
Cultivation of KODO MILLET . made by Ghanshyam pptxCultivation of KODO MILLET . made by Ghanshyam pptx
Cultivation of KODO MILLET . made by Ghanshyam pptxpradhanghanshyam7136
 

Recently uploaded (20)

Artificial Intelligence In Microbiology by Dr. Prince C P
Artificial Intelligence In Microbiology by Dr. Prince C PArtificial Intelligence In Microbiology by Dr. Prince C P
Artificial Intelligence In Microbiology by Dr. Prince C P
 
Call Us ≽ 9953322196 ≼ Call Girls In Mukherjee Nagar(Delhi) |
Call Us ≽ 9953322196 ≼ Call Girls In Mukherjee Nagar(Delhi) |Call Us ≽ 9953322196 ≼ Call Girls In Mukherjee Nagar(Delhi) |
Call Us ≽ 9953322196 ≼ Call Girls In Mukherjee Nagar(Delhi) |
 
Hubble Asteroid Hunter III. Physical properties of newly found asteroids
Hubble Asteroid Hunter III. Physical properties of newly found asteroidsHubble Asteroid Hunter III. Physical properties of newly found asteroids
Hubble Asteroid Hunter III. Physical properties of newly found asteroids
 
Recombinant DNA technology (Immunological screening)
Recombinant DNA technology (Immunological screening)Recombinant DNA technology (Immunological screening)
Recombinant DNA technology (Immunological screening)
 
Disentangling the origin of chemical differences using GHOST
Disentangling the origin of chemical differences using GHOSTDisentangling the origin of chemical differences using GHOST
Disentangling the origin of chemical differences using GHOST
 
Botany 4th semester series (krishna).pdf
Botany 4th semester series (krishna).pdfBotany 4th semester series (krishna).pdf
Botany 4th semester series (krishna).pdf
 
A relative description on Sonoporation.pdf
A relative description on Sonoporation.pdfA relative description on Sonoporation.pdf
A relative description on Sonoporation.pdf
 
Recombination DNA Technology (Nucleic Acid Hybridization )
Recombination DNA Technology (Nucleic Acid Hybridization )Recombination DNA Technology (Nucleic Acid Hybridization )
Recombination DNA Technology (Nucleic Acid Hybridization )
 
Chemistry 4th semester series (krishna).pdf
Chemistry 4th semester series (krishna).pdfChemistry 4th semester series (krishna).pdf
Chemistry 4th semester series (krishna).pdf
 
GFP in rDNA Technology (Biotechnology).pptx
GFP in rDNA Technology (Biotechnology).pptxGFP in rDNA Technology (Biotechnology).pptx
GFP in rDNA Technology (Biotechnology).pptx
 
Boyles law module in the grade 10 science
Boyles law module in the grade 10 scienceBoyles law module in the grade 10 science
Boyles law module in the grade 10 science
 
CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service 🪡
CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service  🪡CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service  🪡
CALL ON ➥8923113531 🔝Call Girls Kesar Bagh Lucknow best Night Fun service 🪡
 
G9 Science Q4- Week 1-2 Projectile Motion.ppt
G9 Science Q4- Week 1-2 Projectile Motion.pptG9 Science Q4- Week 1-2 Projectile Motion.ppt
G9 Science Q4- Week 1-2 Projectile Motion.ppt
 
All-domain Anomaly Resolution Office U.S. Department of Defense (U) Case: “Eg...
All-domain Anomaly Resolution Office U.S. Department of Defense (U) Case: “Eg...All-domain Anomaly Resolution Office U.S. Department of Defense (U) Case: “Eg...
All-domain Anomaly Resolution Office U.S. Department of Defense (U) Case: “Eg...
 
Grafana in space: Monitoring Japan's SLIM moon lander in real time
Grafana in space: Monitoring Japan's SLIM moon lander  in real timeGrafana in space: Monitoring Japan's SLIM moon lander  in real time
Grafana in space: Monitoring Japan's SLIM moon lander in real time
 
The Philosophy of Science
The Philosophy of ScienceThe Philosophy of Science
The Philosophy of Science
 
Labelling Requirements and Label Claims for Dietary Supplements and Recommend...
Labelling Requirements and Label Claims for Dietary Supplements and Recommend...Labelling Requirements and Label Claims for Dietary Supplements and Recommend...
Labelling Requirements and Label Claims for Dietary Supplements and Recommend...
 
Green chemistry and Sustainable development.pptx
Green chemistry  and Sustainable development.pptxGreen chemistry  and Sustainable development.pptx
Green chemistry and Sustainable development.pptx
 
STERILITY TESTING OF PHARMACEUTICALS ppt by DR.C.P.PRINCE
STERILITY TESTING OF PHARMACEUTICALS ppt by DR.C.P.PRINCESTERILITY TESTING OF PHARMACEUTICALS ppt by DR.C.P.PRINCE
STERILITY TESTING OF PHARMACEUTICALS ppt by DR.C.P.PRINCE
 
Cultivation of KODO MILLET . made by Ghanshyam pptx
Cultivation of KODO MILLET . made by Ghanshyam pptxCultivation of KODO MILLET . made by Ghanshyam pptx
Cultivation of KODO MILLET . made by Ghanshyam pptx
 

SIGIR15-NeuroIR

  • 1. On Human Information Processing in Information Retrieval Alexandre Pereda-Baños (Eurecat), Ioannis Arapakis (Yahoo Labs), Miguel Barreda-Ángeles (Eurecat)
  • 2. Human Information Processing (HIP) §  We are not consciously aware of the mental processes determining our behaviour §  Such unconscious influences reach from basic or low-level mental processes to high-level psychological processes like motivations, preferences, or complex behaviours
  • 3. Human Information Processing (HIP) §  The search for information is often led by a human brain §  HIP is the field of study of experimental psychology and cognitive neuroscience
  • 4. Psychological Variables §  The most interesting psychological variables and processes for the study of IR are those related to attentional and emotional phenomena Selective attention Cognitive effort / arousal Emotional reactions
  • 5. Psychophysiological Measures of HIP §  Standardised questionnaires for measuring perceptual aspects, perceived usability, cognitive working load, or affective §  Online measures of user behavior and cognitive states that are often unavailable for conscious reports: §  Behavioral §  psychophysiological
  • 6. Characteristics of Psychological Methods §  Helpful in unveiling attentional and emotional reactions not consciously available to us §  Offer high temporal and spatial resolution §  Robust against cognitive biases (e.g., social desirability bias*) §  Always provide “honest” responses §  No direct question to the subject, no direct answer §  The information on the research questions has to be inferred from the variations on the physiological signals and the way they are related to psychological constructs * The tendency of survey respondents to answer questions in a manner that will be viewed favorably by others.
  • 7. Electrodermal Activity (EDA) §  Changes in conductivity of the skin due to activation of sweat glands by activation of the autonomous nervous system (sympathetic division) §  Reflects general activation both for attentional and emotional measures (in fact, it is calibrated by having participants perform complex math calculations) §  It’s the basis of the “truth machine”, though not as effective as fiction has led us to believe…
  • 8.
  • 9. Electrodermal Activity (EDA) §  Unconscious Physiological Effects of Search Latency on Users and Their Click Behaviour (SIGIR 2015) •  Although the latency effects did not produce changes on the self-reported data, their impact on users’ physiological responses is evident •  Even when short latency increases of under 500ms are not consciously perceived, they have sizeable physiological effects that can contribute to the overall user experience -0.4 -0.2 0.0 0.2 0.4 0.6 0.8 1.0 1.2 1.4 1 2 3 4 5 6 7 8 9 10 µS Time after query onset (in seconds) 0ms 500ms 750ms 1000ms 15.0 15.2 15.4 15.6 15.8 16.0 16.2 16.4 16.6 16.8 17.0 0 1 2 3 4 5 6 7 8 9 10 11 12 µS Time after stimulus onset (in seconds)
  • 10. Electrodermal Activity (EDA) §  A large-scale query log analysis ascertained the effect on the clicking behaviour of users and revealed a significant decrease in users’ engagement with the search result page, even at small increases in latency 0 0.05 0.10 0.15 0.20 0 500 750 1000 0 0.5 1.0 1.5 2.0 Fractionofquerypairs Click-more-on-fast/Click-more-on-slow Latency difference (in milliseconds) Click-more-on-fast Click-more-on-slow Ratio 0 0.05 0.10 0.15 0.20 0 500 750 1000 0 0,5 1.0 1.5 2.0 Fractionofquerypairs Click-on-fast/Click-on-slow Latency difference (in milliseconds) Click-on-fast Click-on-slow Ratio
  • 11. HIP Dynamics §  Human information processing is both serial and parallel §  Cognitive science has provided large amounts of evidence that conscious information processing is mainly serial §  When processing information in situations that require to shift the focus of attention between different tasks and/or stimuli, this results in an increase in the effort required to process that information §  Simon effect
  • 12. HIP Dynamics (Serial Processing)
  • 13. HIP Dynamics (Serial Processing) §  Switching tasks §  Try to read the word in odd trials and name the color on even trials! Green Red Blue Red Green Yellow
  • 14. HIP Dynamics (Parallel Processing) §  Simon effect: Hit the left key if there is an A on screen and the right if there is a B
  • 15. HIP Dynamics (Parallel Processing) §  The effect is still there with crossed hands!
  • 16. Multimodal Behaviour Analysis §  Behaviour measurements in ecological conditions §  Behaviour understanding through cameras and microphones §  Aggregating various online measures gives an accurate picture of the user’s experience §  Robust real-time behavior analyses, information that can then be used for the purpose of research on human behavior and user experience §  The opportunity is ripe to move beyond experimental laboratory settings, in which response has been traditionally measures, into real large-scale controlled studies
  • 17. Conclusions §  The use of neuro-physiological methods in IR research is essential in order to obtain a complete picture of the mental processes underlying user search behaviour §  The collaboration between psychological and IR research can go far beyond the application of sophisticated measuring methodologies §  Introduce actual knowledge on the dynamics of human information processing into a real-world testing ground §  The use of multimodal signals holds the promise of allowing large-scale, controlled studies that will undoubtedly foster the progress of both research fields
  • 18. Thank you for your attention! iarapakis http://www.slideshare.net/iarapakis/sigir15-NeuroIR