2 stories matched Security and Female and (31-45 or 46-60 or Over 60) and teacher and village
Your search did not match enough stories to do a complete analysis. Only basic information is showing.
How good is this collection? (55/100) When making inferences, it is important to have many perspectives. Running
our story quality test will measure this using the diversity of story collectors, named organizations,
locations, and the balance in story point of view and tone to estimate the collection's suitability for meta-analysis.
Each component of the score is between 0 and 100, with 100 being the best and 0 being the worst.
Diverse sources: 2/100 (highest when collection contains hundreds of stories with miniminal overlap among the storytellers, named organizations, and locations)
Completeness: 94/100 (100% when every storytellers answer every question)
Diverse points of view: 70/100 (100% when there is a good balance of points of view. Personal experiences carry more weight over organization perspectrives.
Balance in story tone: 53/100 (100% if collection has a balance of positive and negative perspectives)
Your collection has a negative tone.
There is not enough diversity to do cluster analysis for this collection.
One of these is the same (or missing) from the group:
Organization name
City
Neighborhood
Storyteller id: name or phone number
Scribe/story collector id: name or phone number
q2:Mwangi was a retired school teacher and was ambitious to start a business. He had done enough feasibiltiy studies on various businesses and decided that a polythene bag shop is what he would start since his area muranga lacked this. He knew the best place to find a good purchase was Nairobi. To assist him to find the best deals was his best friend Kigo who has a business there.
So when Kigo came to the village one weekend Mwangi sought his counsel, Kigo revealed to him that he owns a polythene wholesale shop on kirinyaga road in Nairobi. He wanted to stock goods worthKshs. 100,000/= but kigo dissuaded him from purchasing them in bulk and advised that he increases his stocks gradually depending on the performance of his business. After the deal was closed now came the purchase day.
He went with mwangi to show him the shop, the main section where orders were made and cash paid was separated from the main store., there was also a corridor for goods waiting to be transported. to confuse mwangi, kigo asked him to pay the money at the corridor because he did not want other clients to note the lower price he was offering him, and told him once he had paid and given a receipt, he would go with a handcart to ferry the luggage. So mwangi gave kshs.50,000 to mwangi and was issued a receipt. mwangi excused himself that he was going to meet another client within the city.
when he went (mwangi) to the shop to pick the commodities, is when he realised he had been conned by a longtime friend because the attendant told him that kigo didn,t own anything there but was just a loader at Nyamakima . Furthermore the receipt he was issued differed with the name of the shop. mwangi returned to murang'a a dejected man. Q3:FRIEND'S BETRAYAL IN THE CITY Q4:INDIVIDUAL Q6:KENYA Q7:Murang'a Q8:Murang'a Town Q9:2-6 months ago Q10:Female Q12:Was affected by what happened Q13:The wrong people Q15:Yes Q17:
<<22-01-2012-SOWETO-S#043-P#01>>_ Q18:Disappointed Q19:Food and shelter,Security,Freedom Q23:64 Q37:Good idea that should have worked but did not Q38:Specific solution Q39:Mixed Q40:It requires a continuous effort Q122:31-45 Q132:-0.71890000000000 Q133:37.14958000000000 Q134:Individual
q2: In my lukongo village when you attained the age of 16yrs you were ready for marriage.Old men would be seen discouraging what they had seen and who they wanted to marry as there sixth wife.
One day my father told me that i should not go to school but i was to escort him on a journey,immediately i knew that he wanted me to go and get married.so that night i ran away to REEP camps near our home and reported the matter.my father was warned and now am a teacher in a secondary school near our home. Q3:EARLY MARRIAGE Q4:INDIVIDUAL Q6:KENYA Q7:BUTULA Q8:LUKONGO Q9:More than 2 years ago Q10:Female Q12:Saw it happen Q13:The right people Q15:No Q17:<<23-12-11-BUSIA-S#408-P#01>>_ Q18:Hopeful Q19:Security,Self-esteem,Freedom Q23:29 Q37:Good idea that succeeded Q38:Specific solution Q39:Social relations Q40:Lasting change Q122:31-45 Q132:-3.88333000000000 Q133:39.50000000000000 Q134:Individual
 
Found 2 records. mysql icon_filters: group_id between 0 and 5000 and q10 = 'Female' and q19 like '%Security%' and q122 in ('31-45','46-60','Over 60') and (( q2 like '%teacher%' and q2 like '%village%' ) or ( q3 like '%teacher%' and q3 like '%village%' ) or ( q4 like '%teacher%' and q4 like '%village%' ) or ( q5 like '%teacher%' and q5 like '%village%' ) or ( q6 like '%teacher%' and q6 like '%village%' ) or ( q7 like '%teacher%' and q7 like '%village%' ) or ( q8 like '%teacher%' and q8 like '%village%' ) or ( q11 like '%teacher%' and q11 like '%village%' ) or ( q17 like '%teacher%' and q17 like '%village%' ) or ( q26 like '%teacher%' and q26 like '%village%' ) or ( q27 like '%teacher%' and q27 like '%village%' ) or ( q28 like '%teacher%' and q28 like '%village%' ) or ( q29 like '%teacher%' and q29 like '%village%' ) or ( q35 like '%teacher%' and q35 like '%village%' ) or ( q41 like '%teacher%' and q41 like '%village%' ) or ( q42 like '%teacher%' and q42 like '%village%' ) or ( q43 like '%teacher%' and q43 like '%village%' ) or ( q46 like '%teacher%' and q46 like '%village%' ) or ( q47 like '%teacher%' and q47 like '%village%' ) or ( q60 like '%teacher%' and q60 like '%village%' ) or ( q65 like '%teacher%' and q65 like '%village%' ) or ( q70 like '%teacher%' and q70 like '%village%' ) or ( q71 like '%teacher%' and q71 like '%village%' ) or ( q72 like '%teacher%' and q72 like '%village%' ) or ( q73 like '%teacher%' and q73 like '%village%' ) or ( q74 like '%teacher%' and q74 like '%village%' ) or ( q75 like '%teacher%' and q75 like '%village%' ) or ( q76 like '%teacher%' and q76 like '%village%' ) or ( q77 like '%teacher%' and q77 like '%village%' ) or ( q80 like '%teacher%' and q80 like '%village%' ) or ( q81 like '%teacher%' and q81 like '%village%' ) or ( q86 like '%teacher%' and q86 like '%village%' ) or ( q87 like '%teacher%' and q87 like '%village%' ) or ( q88 like '%teacher%' and q88 like '%village%' ) or ( q89 like '%teacher%' and q89 like '%village%' ) or ( q98 like '%teacher%' and q98 like '%village%' ) or ( q99 like '%teacher%' and q99 like '%village%' ) or ( q110 like '%teacher%' and q110 like '%village%' ) or ( q111 like '%teacher%' and q111 like '%village%' ) or ( q116 like '%teacher%' and q116 like '%village%' ) or ( q117 like '%teacher%' and q117 like '%village%' ) or ( q123 like '%teacher%' and q123 like '%village%' ) or ( q125 like '%teacher%' and q125 like '%village%' ) or ( q132 like '%teacher%' and q132 like '%village%' ) or ( q133 like '%teacher%' and q133 like '%village%' ) or ( q134 like '%teacher%' and q134 like '%village%' ) or ( q135 like '%teacher%' and q135 like '%village%' ) or ( q136 like '%teacher%' and q136 like '%village%' ) or ( q138 like '%teacher%' and q138 like '%village%' ) or ( q141 like '%teacher%' and q141 like '%village%' ) or ( q142 like '%teacher%' and q142 like '%village%' ) or ( q151 like '%teacher%' and q151 like '%village%' )) LIMIT 4000; filter_questions ['q10', 'q19', 'q122'] merge:ignore A[8VrA32thuyVk]:SUCCESS: 1 rows inserted. not enough values to unpack (expected 3, got 2)