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chapter 15
task models
What is Task Analysis?
Methods to analyse people's jobs:
– what people do
– what things they work with
– what they must know
An Example
• in order to clean the house
• get the vacuum cleaner out
• fix the appropriate attachments
• clean the rooms
• when the dust bag gets full, empty it
• put the vacuum cleaner and tools away
• must know about:
• vacuum cleaners, their attachments, dust bags,
cupboards, rooms etc.
Approaches to task analysis
• Task decomposition
– splitting task into (ordered) subtasks
• Knowledge based techniques
– what the user knows about the task
and how it is organised
• Entity/object based analysis
– relationships between objects, actions and the people
who perform them
• lots of different notations/techniques
general method
• observe
• collect unstructured lists of words and actions
• organize using notation or diagrams
Differences from other
techniques
Systems analysis vs. Task analysis
system design - focus - the user
Cognitive models vs. Task analysis
internal mental state - focus - external actions
practiced `unit' task - focus - whole job
Task Decomposition
Aims:
describe the actions people do
structure them within task subtask hierarchy
describe order of subtasks
Variants:
Hierarchical Task Analysis (HTA)
most common
CTT (CNUCE, Pisa)
uses LOTOS temporal operators
Textual HTA description
Hierarchy description ...
0. in order to clean the house
1. get the vacuum cleaner out
2. get the appropriate attachment
3. clean the rooms
3.1. clean the hall
3.2. clean the living rooms
3.3. clean the bedrooms
4. empty the dust bag
5. put vacuum cleaner and attachments away
... and plans
Plan 0: do 1 - 2 - 3 - 5 in that order. when the dust bag gets full do 4
Plan 3: do any of 3.1, 3.2 or 3.3 in any order depending
on which rooms need cleaning
N.B. only the plans denote order
Generating the hierarchy
1 get list of tasks
2 group tasks into higher level tasks
3 decompose lowest level tasks further
Stopping rules
How do we know when to stop?
Is “empty the dust bag” simple enough?
Purpose: expand only relevant tasks
Motor actions: lowest sensible level
Tasks as explanation
• imagine asking the user the question:
what are you doing now?
• for the same action the answer may be:
typing ctrl-B
making a word bold
emphasising a word
editing a document
writing a letter
preparing a legal case
HTA as grammar
• can parse sentence into letters, nouns, noun
phrase, etc.
The cat sat on the mat.
letter
noun
det
noun phrase
. . . . . . . . .
. . . lexical
syntax
parse scenario using HTA
0. in order to clean the house
1. get the vacuum cleaner out
2. get the appropriate attachment
3. clean the rooms
3.1. clean the hall
3.2. clean the living rooms
3.3. clean the bedrooms
4. empty the dust bag
5. put vacuum cleaner and attachments away
get out cleaner
fix carpet head
clean dinning room
clean main bedroom
empty dustbag
clean sitting room
put cleaner away
1.
2.
3.2.
3.3.
3.2.
3.
4.
5.
0.
Diagrammatic HTA
Refining the description
Given initial HTA (textual or diagram)
How to check / improve it?
Some heuristics:
paired actions e.g., where is `turn on gas'
restructure e.g., generate task `make pot'
balance e.g., is `pour tea' simpler than making pot?
generalise e.g., make one cup ….. or more
Refined HTA for making tea
Types of plan
fixed sequence - 1.1 then 1.2 then 1.3
optional tasks - if the pot is full 2
wait for events - when kettle boils 1.4
cycles - do 5.1 5.2 while there are still empty cups
time-sharing - do 1; at the same time ...
discretionary - do any of 3.1, 3.2 or 3.3 in any order
mixtures - most plans involve several of the above
waiting …
• is waiting part of a plan?
… or a task?
• generally
– task – if ‘busy’ wait
• you are actively waiting
– plan – if end of delay is the event
• e.g. “when alarm rings”, “when reply arrives”
• in this example …
– perhaps a little redundant …
– TA not an exact science
see chapter 19 for more on delays!
Knowledge Based Analyses
Focus on:
Objects – used in task
Actions – performed
+ Taxonomies –
represent levels of abstraction
Knowledge–Based Example …
motor controls
steering steering wheel, indicators
engine/speed
direct ignition, accelerator, foot brake
gearing clutch, gear stick
lights
external headlights, hazard lights
internal courtesy light
wash/wipe
wipers front wipers, rear wipers
washers front washers, rear washers
heating temperature control, air direction,
fan, rear screen heater
parking hand brake, door lock
radio numerous!
Task Description Hierarchy
Three types of branch point in taxonomy:
XOR – normal taxonomy
object in one and only one branch
AND – object must be in both
multiple classifications
OR – weakest case
can be in one, many or none
wash/wipe AND
function XOR
wipe front wipers, rear wipers
wash front washers, rear washers
position XOR
front front wipers, front washers
rear rear wipers, rear washers
Larger TDH example
kitchen item AND
/____shape XOR
/ |____dished mixing bowl, casserole, saucepan,
/ | soup bowl, glass
/ |____flat plate, chopping board, frying pan
/____function OR
{____preparation mixing bowl, plate, chopping board
{____cooking frying pan, casserole, saucepan
{____dining XOR
|____for food plate, soup bowl, casserole
|____for drink glass
N.B. ‘/|{’ used for branch types.
More on TDH
Uniqueness rule:
– can the diagram distinguish all objects?
e.g., plate is:
kitchen item/shape(flat)/function{preparation,dining(for food)}/
nothing else fits this description
Actions have taxonomy too:
kitchen job OR
|____ preparation beating, mixing
|____ cooking frying, boiling, baking
|____ dining pouring, eating, drinking
Abstraction and cuts
After producing detailed taxonomy
‘cut’ to yield abstract view
That is, ignore lower level nodes
e.g. cutting above shape and below dining, plate becomes:
kitchen item/function{preparation,dining}/
This is a term in Knowledge Representation Grammar (KRG)
These can be more complex:
e.g. ‘beating in a mixing bowl’ becomes:
kitchen job(preparation) using a
kitchen item/function{preparation}/
Entity-Relationship Techniques
Focus on objects, actions and their relationships
Similar to OO analysis, but …
– includes non-computer entities
– emphasises domain understanding not implementation
Running example
‘Vera's Veggies’ – a market gardening firm
owner/manager: Vera Bradshaw
employees: Sam Gummage and Tony Peagreen
various tools including a tractor `Fergie‘
two fields and a glasshouse
new computer controlled irrigation system
Objects
Start with list of objects and classify them:
Concrete objects:
simple things: spade, plough, glasshouse
Actors:
human actors: Vera, Sam, Tony, the customers
what about the irrigation controller?
Composite objects:
sets: the team = Vera, Sam, Tony
tuples: tractor may be < Fergie, plough >
Attributes
To the objects add attributes:
Object Pump3 simple – irrigation pump
Attributes:
status: on/off/faulty
capacity: 100 litres/minute
N.B. need not be computationally complete
Actions
List actions and associate with each:
agent – who performs the actions
patient – which is changed by the action
instrument – used to perform action
examples:
Sam (agent) planted (action) the leeks (patient)
Tony dug the field with the spade (instrument)
Actions (ctd)
implicit agents – read behind the words
`the field was ploughed' – by whom?
indirect agency – the real agent?
`Vera programmed the controller to irrigate the field'
messages – a special sort of action
`Vera told Sam to ... '
rôles – an agent acts in several rôles
Vera as worker or as manager
example – objects and actions
Object Sam human actor
Actions:
S1: drive tractor
S2: dig the carrots
Object Vera human actor
– the proprietor
Actions: as worker
V1: plant marrow seed
V2: program irrigation controller
Actions: as manager
V3: tell Sam to dig the carrots
Object the men composite
Comprises: Sam, Tony
Object glasshouse simple
Attribute:
humidity: 0-100%
Object Irrigation Controller
non-human actor
Actions:
IC1: turn on Pump1
IC2: turn on Pump2
IC3: turn on Pump3
Object Marrow simple
Actions:
M1: germinate
M2: grow
Events
… when something happens
• performance of action
‘Sam dug the carrots’
• spontaneous events
‘the marrow seed germinated’
‘the humidity drops below 25%’
• timed events
‘at midnight the controller turns on’
Relationships
• object-object
social - Sam is subordinate to Vera
spatial - pump 3 is in the glasshouse
• action-object
agent (listed with object)
patient and instrument
• actions and events
temporal and causal
‘Sam digs the carrots because Vera told him’
• temporal relations
use HTA or dialogue notations.
show task sequence (normal HTA)
show object lifecycle
example – events and relations
Events:
Ev1: humidity drops below 25%
Ev2: midnight
Relations: object-object
location ( Pump3, glasshouse )
location ( Pump1, Parker’s Patch )
Relations: action-object
patient ( V3, Sam )
– Vera tells Sam to dig
patient ( S2, the carrots )
– Sam digs the carrots ...
instrument ( S2, spade )
– ... with the spade
Relations: action-event
before ( V1, M1)
– the marrow must be sown
before it can germinate
triggers ( Ev1, IC3 )
– when humidity drops
below 25%, the controller
turns on pump 3
causes ( V2, IC1 )
– the controller turns on the
pump because Vera
programmed it
Sources of Information
Documentation
– N.B. manuals say what is supposed to happen
but, good for key words and prompting interviews
Observation
– formal/informal, laboratory/field (see Chapter 9)
Interviews
– the expert: manager or worker? (ask both!)
Early analysis
Extraction from transcripts
– list nouns (objects) and verbs (actions)
– beware technical language and context:
`the rain poured’ vs. `I poured the tea’
Sorting and classifying
– grouping or arranging words on cards
– ranking objects/actions for task relevance (see ch. 9)
– use commercial outliner
Iterative process:
data sources  analysis
… but costly, so use cheap sources where available
Uses – manuals & documentation
Conceptual Manual
– from knowledge or entity–relations based analysis
– good for open ended tasks
Procedural ‘How to do it’ Manual
– from HTA description
– good for novices
– assumes all tasks known To make cups of tea
boil water –– see page 2
empty pot
make pot –– see page 3
wait 4 or 5 minutes
pour tea –– see page 4
–– page 1 ––
Make pot of tea
warm pot
put tea leaves in pot
pour in boiling water
–– page 3 ––
once water has boiled
Uses – requirements & design
Requirements capture and systems design
– lifts focus from system to use
– suggests candidates for automation
– uncovers user's conceptual model
Detailed interface design
– taxonomies suggest menu layout
– object/action lists suggest interface objects
– task frequency guides default choices
– existing task sequences guide dialogue design
NOTE. task analysis is never complete
– rigid task based design  inflexible system

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e3-chap-15.ppt

  • 2. What is Task Analysis? Methods to analyse people's jobs: – what people do – what things they work with – what they must know
  • 3. An Example • in order to clean the house • get the vacuum cleaner out • fix the appropriate attachments • clean the rooms • when the dust bag gets full, empty it • put the vacuum cleaner and tools away • must know about: • vacuum cleaners, their attachments, dust bags, cupboards, rooms etc.
  • 4. Approaches to task analysis • Task decomposition – splitting task into (ordered) subtasks • Knowledge based techniques – what the user knows about the task and how it is organised • Entity/object based analysis – relationships between objects, actions and the people who perform them • lots of different notations/techniques
  • 5. general method • observe • collect unstructured lists of words and actions • organize using notation or diagrams
  • 6. Differences from other techniques Systems analysis vs. Task analysis system design - focus - the user Cognitive models vs. Task analysis internal mental state - focus - external actions practiced `unit' task - focus - whole job
  • 7. Task Decomposition Aims: describe the actions people do structure them within task subtask hierarchy describe order of subtasks Variants: Hierarchical Task Analysis (HTA) most common CTT (CNUCE, Pisa) uses LOTOS temporal operators
  • 8. Textual HTA description Hierarchy description ... 0. in order to clean the house 1. get the vacuum cleaner out 2. get the appropriate attachment 3. clean the rooms 3.1. clean the hall 3.2. clean the living rooms 3.3. clean the bedrooms 4. empty the dust bag 5. put vacuum cleaner and attachments away ... and plans Plan 0: do 1 - 2 - 3 - 5 in that order. when the dust bag gets full do 4 Plan 3: do any of 3.1, 3.2 or 3.3 in any order depending on which rooms need cleaning N.B. only the plans denote order
  • 9. Generating the hierarchy 1 get list of tasks 2 group tasks into higher level tasks 3 decompose lowest level tasks further Stopping rules How do we know when to stop? Is “empty the dust bag” simple enough? Purpose: expand only relevant tasks Motor actions: lowest sensible level
  • 10. Tasks as explanation • imagine asking the user the question: what are you doing now? • for the same action the answer may be: typing ctrl-B making a word bold emphasising a word editing a document writing a letter preparing a legal case
  • 11. HTA as grammar • can parse sentence into letters, nouns, noun phrase, etc. The cat sat on the mat. letter noun det noun phrase . . . . . . . . . . . . lexical syntax
  • 12. parse scenario using HTA 0. in order to clean the house 1. get the vacuum cleaner out 2. get the appropriate attachment 3. clean the rooms 3.1. clean the hall 3.2. clean the living rooms 3.3. clean the bedrooms 4. empty the dust bag 5. put vacuum cleaner and attachments away get out cleaner fix carpet head clean dinning room clean main bedroom empty dustbag clean sitting room put cleaner away 1. 2. 3.2. 3.3. 3.2. 3. 4. 5. 0.
  • 14. Refining the description Given initial HTA (textual or diagram) How to check / improve it? Some heuristics: paired actions e.g., where is `turn on gas' restructure e.g., generate task `make pot' balance e.g., is `pour tea' simpler than making pot? generalise e.g., make one cup ….. or more
  • 15. Refined HTA for making tea
  • 16. Types of plan fixed sequence - 1.1 then 1.2 then 1.3 optional tasks - if the pot is full 2 wait for events - when kettle boils 1.4 cycles - do 5.1 5.2 while there are still empty cups time-sharing - do 1; at the same time ... discretionary - do any of 3.1, 3.2 or 3.3 in any order mixtures - most plans involve several of the above
  • 17. waiting … • is waiting part of a plan? … or a task? • generally – task – if ‘busy’ wait • you are actively waiting – plan – if end of delay is the event • e.g. “when alarm rings”, “when reply arrives” • in this example … – perhaps a little redundant … – TA not an exact science see chapter 19 for more on delays!
  • 18. Knowledge Based Analyses Focus on: Objects – used in task Actions – performed + Taxonomies – represent levels of abstraction
  • 19. Knowledge–Based Example … motor controls steering steering wheel, indicators engine/speed direct ignition, accelerator, foot brake gearing clutch, gear stick lights external headlights, hazard lights internal courtesy light wash/wipe wipers front wipers, rear wipers washers front washers, rear washers heating temperature control, air direction, fan, rear screen heater parking hand brake, door lock radio numerous!
  • 20. Task Description Hierarchy Three types of branch point in taxonomy: XOR – normal taxonomy object in one and only one branch AND – object must be in both multiple classifications OR – weakest case can be in one, many or none wash/wipe AND function XOR wipe front wipers, rear wipers wash front washers, rear washers position XOR front front wipers, front washers rear rear wipers, rear washers
  • 21. Larger TDH example kitchen item AND /____shape XOR / |____dished mixing bowl, casserole, saucepan, / | soup bowl, glass / |____flat plate, chopping board, frying pan /____function OR {____preparation mixing bowl, plate, chopping board {____cooking frying pan, casserole, saucepan {____dining XOR |____for food plate, soup bowl, casserole |____for drink glass N.B. ‘/|{’ used for branch types.
  • 22. More on TDH Uniqueness rule: – can the diagram distinguish all objects? e.g., plate is: kitchen item/shape(flat)/function{preparation,dining(for food)}/ nothing else fits this description Actions have taxonomy too: kitchen job OR |____ preparation beating, mixing |____ cooking frying, boiling, baking |____ dining pouring, eating, drinking
  • 23. Abstraction and cuts After producing detailed taxonomy ‘cut’ to yield abstract view That is, ignore lower level nodes e.g. cutting above shape and below dining, plate becomes: kitchen item/function{preparation,dining}/ This is a term in Knowledge Representation Grammar (KRG) These can be more complex: e.g. ‘beating in a mixing bowl’ becomes: kitchen job(preparation) using a kitchen item/function{preparation}/
  • 24. Entity-Relationship Techniques Focus on objects, actions and their relationships Similar to OO analysis, but … – includes non-computer entities – emphasises domain understanding not implementation Running example ‘Vera's Veggies’ – a market gardening firm owner/manager: Vera Bradshaw employees: Sam Gummage and Tony Peagreen various tools including a tractor `Fergie‘ two fields and a glasshouse new computer controlled irrigation system
  • 25. Objects Start with list of objects and classify them: Concrete objects: simple things: spade, plough, glasshouse Actors: human actors: Vera, Sam, Tony, the customers what about the irrigation controller? Composite objects: sets: the team = Vera, Sam, Tony tuples: tractor may be < Fergie, plough >
  • 26. Attributes To the objects add attributes: Object Pump3 simple – irrigation pump Attributes: status: on/off/faulty capacity: 100 litres/minute N.B. need not be computationally complete
  • 27. Actions List actions and associate with each: agent – who performs the actions patient – which is changed by the action instrument – used to perform action examples: Sam (agent) planted (action) the leeks (patient) Tony dug the field with the spade (instrument)
  • 28. Actions (ctd) implicit agents – read behind the words `the field was ploughed' – by whom? indirect agency – the real agent? `Vera programmed the controller to irrigate the field' messages – a special sort of action `Vera told Sam to ... ' rôles – an agent acts in several rôles Vera as worker or as manager
  • 29. example – objects and actions Object Sam human actor Actions: S1: drive tractor S2: dig the carrots Object Vera human actor – the proprietor Actions: as worker V1: plant marrow seed V2: program irrigation controller Actions: as manager V3: tell Sam to dig the carrots Object the men composite Comprises: Sam, Tony Object glasshouse simple Attribute: humidity: 0-100% Object Irrigation Controller non-human actor Actions: IC1: turn on Pump1 IC2: turn on Pump2 IC3: turn on Pump3 Object Marrow simple Actions: M1: germinate M2: grow
  • 30. Events … when something happens • performance of action ‘Sam dug the carrots’ • spontaneous events ‘the marrow seed germinated’ ‘the humidity drops below 25%’ • timed events ‘at midnight the controller turns on’
  • 31. Relationships • object-object social - Sam is subordinate to Vera spatial - pump 3 is in the glasshouse • action-object agent (listed with object) patient and instrument • actions and events temporal and causal ‘Sam digs the carrots because Vera told him’ • temporal relations use HTA or dialogue notations. show task sequence (normal HTA) show object lifecycle
  • 32. example – events and relations Events: Ev1: humidity drops below 25% Ev2: midnight Relations: object-object location ( Pump3, glasshouse ) location ( Pump1, Parker’s Patch ) Relations: action-object patient ( V3, Sam ) – Vera tells Sam to dig patient ( S2, the carrots ) – Sam digs the carrots ... instrument ( S2, spade ) – ... with the spade Relations: action-event before ( V1, M1) – the marrow must be sown before it can germinate triggers ( Ev1, IC3 ) – when humidity drops below 25%, the controller turns on pump 3 causes ( V2, IC1 ) – the controller turns on the pump because Vera programmed it
  • 33. Sources of Information Documentation – N.B. manuals say what is supposed to happen but, good for key words and prompting interviews Observation – formal/informal, laboratory/field (see Chapter 9) Interviews – the expert: manager or worker? (ask both!)
  • 34. Early analysis Extraction from transcripts – list nouns (objects) and verbs (actions) – beware technical language and context: `the rain poured’ vs. `I poured the tea’ Sorting and classifying – grouping or arranging words on cards – ranking objects/actions for task relevance (see ch. 9) – use commercial outliner Iterative process: data sources  analysis … but costly, so use cheap sources where available
  • 35. Uses – manuals & documentation Conceptual Manual – from knowledge or entity–relations based analysis – good for open ended tasks Procedural ‘How to do it’ Manual – from HTA description – good for novices – assumes all tasks known To make cups of tea boil water –– see page 2 empty pot make pot –– see page 3 wait 4 or 5 minutes pour tea –– see page 4 –– page 1 –– Make pot of tea warm pot put tea leaves in pot pour in boiling water –– page 3 –– once water has boiled
  • 36. Uses – requirements & design Requirements capture and systems design – lifts focus from system to use – suggests candidates for automation – uncovers user's conceptual model Detailed interface design – taxonomies suggest menu layout – object/action lists suggest interface objects – task frequency guides default choices – existing task sequences guide dialogue design NOTE. task analysis is never complete – rigid task based design  inflexible system